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Wikipedia

Data mining

Data mining is the process of extracting and discovering patterns in large data sets involving methods at the intersection of machine learning, statistics, and database systems.[1] Data mining is an interdisciplinary subfield of computer science and statistics with an overall goal of extracting information (with intelligent methods) from a data set and transforming the information into a comprehensible structure for further use.[1][2][3][4] Data mining is the analysis step of the "knowledge discovery in databases" process, or KDD.[5] Aside from the raw analysis step, it also involves database and data management aspects, data pre-processing, model and inference considerations, interestingness metrics, complexity considerations, post-processing of discovered structures, visualization, and online updating.[1]

The term "data mining" is a misnomer because the goal is the extraction of patterns and knowledge from large amounts of data, not the extraction (mining) of data itself.[6] It also is a buzzword[7] and is frequently applied to any form of large-scale data or information processing (collection, extraction, warehousing, analysis, and statistics) as well as any application of computer decision support system, including artificial intelligence (e.g., machine learning) and business intelligence. The book Data mining: Practical machine learning tools and techniques with Java[8] (which covers mostly machine learning material) was originally to be named Practical machine learning, and the term data mining was only added for marketing reasons.[9] Often the more general terms (large scale) data analysis and analytics—or, when referring to actual methods, artificial intelligence and machine learning—are more appropriate.

The actual data mining task is the semi-automatic or automatic analysis of large quantities of data to extract previously unknown, interesting patterns such as groups of data records (cluster analysis), unusual records (anomaly detection), and dependencies (association rule mining, sequential pattern mining). This usually involves using database techniques such as spatial indices. These patterns can then be seen as a kind of summary of the input data, and may be used in further analysis or, for example, in machine learning and predictive analytics. For example, the data mining step might identify multiple groups in the data, which can then be used to obtain more accurate prediction results by a decision support system. Neither the data collection, data preparation, nor result interpretation and reporting is part of the data mining step, although they do belong to the overall KDD process as additional steps.

The difference between data analysis and data mining is that data analysis is used to test models and hypotheses on the dataset, e.g., analyzing the effectiveness of a marketing campaign, regardless of the amount of data. In contrast, data mining uses machine learning and statistical models to uncover clandestine or hidden patterns in a large volume of data.[10]

The related terms data dredging, data fishing, and data snooping refer to the use of data mining methods to sample parts of a larger population data set that are (or may be) too small for reliable statistical inferences to be made about the validity of any patterns discovered. These methods can, however, be used in creating new hypotheses to test against the larger data populations.

Etymology

In the 1960s, statisticians and economists used terms like data fishing or data dredging to refer to what they considered the bad practice of analyzing data without an a-priori hypothesis. The term "data mining" was used in a similarly critical way by economist Michael Lovell in an article published in the Review of Economic Studies in 1983.[11][12] Lovell indicates that the practice "masquerades under a variety of aliases, ranging from "experimentation" (positive) to "fishing" or "snooping" (negative).

The term data mining appeared around 1990 in the database community, with generally positive connotations. For a short time in 1980s, a phrase "database mining"™, was used, but since it was trademarked by HNC, a San Diego-based company, to pitch their Database Mining Workstation;[13] researchers consequently turned to data mining. Other terms used include data archaeology, information harvesting, information discovery, knowledge extraction, etc. Gregory Piatetsky-Shapiro coined the term "knowledge discovery in databases" for the first workshop on the same topic (KDD-1989) and this term became more popular in AI and machine learning community. However, the term data mining became more popular in the business and press communities.[14] Currently, the terms data mining and knowledge discovery are used interchangeably.

Background

The manual extraction of patterns from data has occurred for centuries. Early methods of identifying patterns in data include Bayes' theorem (1700s) and regression analysis (1800s).[15] The proliferation, ubiquity and increasing power of computer technology have dramatically increased data collection, storage, and manipulation ability. As data sets have grown in size and complexity, direct "hands-on" data analysis has increasingly been augmented with indirect, automated data processing, aided by other discoveries in computer science, specially in the field of machine learning, such as neural networks, cluster analysis, genetic algorithms (1950s), decision trees and decision rules (1960s), and support vector machines (1990s). Data mining is the process of applying these methods with the intention of uncovering hidden patterns.[16] in large data sets. It bridges the gap from applied statistics and artificial intelligence (which usually provide the mathematical background) to database management by exploiting the way data is stored and indexed in databases to execute the actual learning and discovery algorithms more efficiently, allowing such methods to be applied to ever-larger data sets.

Process

The knowledge discovery in databases (KDD) process is commonly defined with the stages:

  1. Selection
  2. Pre-processing
  3. Transformation
  4. Data mining
  5. Interpretation/evaluation.[5]

It exists, however, in many variations on this theme, such as the Cross-industry standard process for data mining (CRISP-DM) which defines six phases:

  1. Business understanding
  2. Data understanding
  3. Data preparation
  4. Modeling
  5. Evaluation
  6. Deployment

or a simplified process such as (1) Pre-processing, (2) Data Mining, and (3) Results Validation.

Polls conducted in 2002, 2004, 2007 and 2014 show that the CRISP-DM methodology is the leading methodology used by data miners.[17] The only other data mining standard named in these polls was SEMMA. However, 3–4 times as many people reported using CRISP-DM. Several teams of researchers have published reviews of data mining process models,[18] and Azevedo and Santos conducted a comparison of CRISP-DM and SEMMA in 2008.[19]

Pre-processing

Before data mining algorithms can be used, a target data set must be assembled. As data mining can only uncover patterns actually present in the data, the target data set must be large enough to contain these patterns while remaining concise enough to be mined within an acceptable time limit. A common source for data is a data mart or data warehouse. Pre-processing is essential to analyze the multivariate data sets before data mining. The target set is then cleaned. Data cleaning removes the observations containing noise and those with missing data.

Data mining

Data mining involves six common classes of tasks:[5]

  • Anomaly detection (outlier/change/deviation detection) – The identification of unusual data records, that might be interesting or data errors that require further investigation.
  • Association rule learning (dependency modeling) – Searches for relationships between variables. For example, a supermarket might gather data on customer purchasing habits. Using association rule learning, the supermarket can determine which products are frequently bought together and use this information for marketing purposes. This is sometimes referred to as market basket analysis.
  • Clustering – is the task of discovering groups and structures in the data that are in some way or another "similar", without using known structures in the data.
  • Classification – is the task of generalizing known structure to apply to new data. For example, an e-mail program might attempt to classify an e-mail as "legitimate" or as "spam".
  • Regression – attempts to find a function that models the data with the least error that is, for estimating the relationships among data or datasets.
  • Summarization – providing a more compact representation of the data set, including visualization and report generation.

Results validation

 
An example of data produced by data dredging through a bot operated by statistician Tyler Vigen, apparently showing a close link between the best word winning a spelling bee competition and the number of people in the United States killed by venomous spiders.

Data mining can unintentionally be misused, producing results that appear to be significant but which do not actually predict future behavior and cannot be reproduced on a new sample of data, therefore bearing little use. This is sometimes caused by investigating too many hypotheses and not performing proper statistical hypothesis testing. A simple version of this problem in machine learning is known as overfitting, but the same problem can arise at different phases of the process and thus a train/test split—when applicable at all—may not be sufficient to prevent this from happening.[20]

The final step of knowledge discovery from data is to verify that the patterns produced by the data mining algorithms occur in the wider data set. Not all patterns found by the algorithms are necessarily valid. It is common for data mining algorithms to find patterns in the training set which are not present in the general data set. This is called overfitting. To overcome this, the evaluation uses a test set of data on which the data mining algorithm was not trained. The learned patterns are applied to this test set, and the resulting output is compared to the desired output. For example, a data mining algorithm trying to distinguish "spam" from "legitimate" e-mails would be trained on a training set of sample e-mails. Once trained, the learned patterns would be applied to the test set of e-mails on which it had not been trained. The accuracy of the patterns can then be measured from how many e-mails they correctly classify. Several statistical methods may be used to evaluate the algorithm, such as ROC curves.

If the learned patterns do not meet the desired standards, it is necessary to re-evaluate and change the pre-processing and data mining steps. If the learned patterns do meet the desired standards, then the final step is to interpret the learned patterns and turn them into knowledge.

Research

The premier professional body in the field is the Association for Computing Machinery's (ACM) Special Interest Group (SIG) on Knowledge Discovery and Data Mining (SIGKDD).[21][22] Since 1989, this ACM SIG has hosted an annual international conference and published its proceedings,[23] and since 1999 it has published a biannual academic journal titled "SIGKDD Explorations".[24]

Computer science conferences on data mining include:

Data mining topics are also present in many data management/database conferences such as the ICDE Conference, SIGMOD Conference and International Conference on Very Large Data Bases.

Standards

There have been some efforts to define standards for the data mining process, for example, the 1999 European Cross Industry Standard Process for Data Mining (CRISP-DM 1.0) and the 2004 Java Data Mining standard (JDM 1.0). Development on successors to these processes (CRISP-DM 2.0 and JDM 2.0) was active in 2006 but has stalled since. JDM 2.0 was withdrawn without reaching a final draft.

For exchanging the extracted models—in particular for use in predictive analytics—the key standard is the Predictive Model Markup Language (PMML), which is an XML-based language developed by the Data Mining Group (DMG) and supported as exchange format by many data mining applications. As the name suggests, it only covers prediction models, a particular data mining task of high importance to business applications. However, extensions to cover (for example) subspace clustering have been proposed independently of the DMG.[25]

Notable uses

Data mining is used wherever there is digital data available today. Notable examples of data mining can be found throughout business, medicine, science, and surveillance.

Privacy concerns and ethics

While the term "data mining" itself may have no ethical implications, it is often associated with the mining of information in relation to user behavior (ethical and otherwise).[26]

The ways in which data mining can be used can in some cases and contexts raise questions regarding privacy, legality, and ethics.[27] In particular, data mining government or commercial data sets for national security or law enforcement purposes, such as in the Total Information Awareness Program or in ADVISE, has raised privacy concerns.[28][29]

Data mining requires data preparation which uncovers information or patterns which compromise confidentiality and privacy obligations. A common way for this to occur is through data aggregation. Data aggregation involves combining data together (possibly from various sources) in a way that facilitates analysis (but that also might make identification of private, individual-level data deducible or otherwise apparent).[30] This is not data mining per se, but a result of the preparation of data before—and for the purposes of—the analysis. The threat to an individual's privacy comes into play when the data, once compiled, cause the data miner, or anyone who has access to the newly compiled data set, to be able to identify specific individuals, especially when the data were originally anonymous.[31]

It is recommended[according to whom?] to be aware of the following before data are collected:[30]

  • The purpose of the data collection and any (known) data mining projects.
  • How the data will be used.
  • Who will be able to mine the data and use the data and their derivatives.
  • The status of security surrounding access to the data.
  • How collected data can be updated.

Data may also be modified so as to become anonymous, so that individuals may not readily be identified.[30] However, even "anonymized" data sets can potentially contain enough information to allow identification of individuals, as occurred when journalists were able to find several individuals based on a set of search histories that were inadvertently released by AOL.[32]

The inadvertent revelation of personally identifiable information leading to the provider violates Fair Information Practices. This indiscretion can cause financial, emotional, or bodily harm to the indicated individual. In one instance of privacy violation, the patrons of Walgreens filed a lawsuit against the company in 2011 for selling prescription information to data mining companies who in turn provided the data to pharmaceutical companies.[33]

Situation in Europe

Europe has rather strong privacy laws, and efforts are underway to further strengthen the rights of the consumers. However, the U.S.–E.U. Safe Harbor Principles, developed between 1998 and 2000, currently effectively expose European users to privacy exploitation by U.S. companies. As a consequence of Edward Snowden's global surveillance disclosure, there has been increased discussion to revoke this agreement, as in particular the data will be fully exposed to the National Security Agency, and attempts to reach an agreement with the United States have failed.[34]

In the United Kingdom in particular there have been cases of corporations using data mining as a way to target certain groups of customers forcing them to pay unfairly high prices. These groups tend to be people of lower socio-economic status who are not savvy to the ways they can be exploited in digital market places.[35]

Situation in the United States

In the United States, privacy concerns have been addressed by the US Congress via the passage of regulatory controls such as the Health Insurance Portability and Accountability Act (HIPAA). The HIPAA requires individuals to give their "informed consent" regarding information they provide and its intended present and future uses. According to an article in Biotech Business Week, "'[i]n practice, HIPAA may not offer any greater protection than the longstanding regulations in the research arena,' says the AAHC. More importantly, the rule's goal of protection through informed consent is approach a level of incomprehensibility to average individuals."[36] This underscores the necessity for data anonymity in data aggregation and mining practices.

U.S. information privacy legislation such as HIPAA and the Family Educational Rights and Privacy Act (FERPA) applies only to the specific areas that each such law addresses. The use of data mining by the majority of businesses in the U.S. is not controlled by any legislation.

Copyright law

Situation in Europe

Under European copyright and database laws, the mining of in-copyright works (such as by web mining) without the permission of the copyright owner is not legal. Where a database is pure data in Europe, it may be that there is no copyright—but database rights may exist, so data mining becomes subject to intellectual property owners' rights that are protected by the Database Directive. On the recommendation of the Hargreaves review, this led to the UK government to amend its copyright law in 2014 to allow content mining as a limitation and exception.[37] The UK was the second country in the world to do so after Japan, which introduced an exception in 2009 for data mining. However, due to the restriction of the Information Society Directive (2001), the UK exception only allows content mining for non-commercial purposes. UK copyright law also does not allow this provision to be overridden by contractual terms and conditions. Since 2020 also Switzerland has been regulating data mining by allowing it in the research field under certain conditions laid down by art. 24d of the Swiss Copyright Act. This new article entered into force on 1 April 2020.[38]

The European Commission facilitated stakeholder discussion on text and data mining in 2013, under the title of Licences for Europe.[39] The focus on the solution to this legal issue, such as licensing rather than limitations and exceptions, led to representatives of universities, researchers, libraries, civil society groups and open access publishers to leave the stakeholder dialogue in May 2013.[40]

Situation in the United States

US copyright law, and in particular its provision for fair use, upholds the legality of content mining in America, and other fair use countries such as Israel, Taiwan and South Korea. As content mining is transformative, that is it does not supplant the original work, it is viewed as being lawful under fair use. For example, as part of the Google Book settlement the presiding judge on the case ruled that Google's digitization project of in-copyright books was lawful, in part because of the transformative uses that the digitization project displayed—one being text and data mining.[41]

Software

Free open-source data mining software and applications

The following applications are available under free/open-source licenses. Public access to application source code is also available.

Proprietary data-mining software and applications

The following applications are available under proprietary licenses.

See also

Methods
Application domains
Application examples
Related topics

For more information about extracting information out of data (as opposed to analyzing data), see:

Other resources

References

  1. ^ a b c "Data Mining Curriculum". ACM SIGKDD. 2006-04-30. Retrieved 2014-01-27.
  2. ^ Clifton, Christopher (2010). "Encyclopædia Britannica: Definition of Data Mining". Retrieved 2010-12-09.
  3. ^ Hastie, Trevor; Tibshirani, Robert; Friedman, Jerome (2009). . Archived from the original on 2009-11-10. Retrieved 2012-08-07.
  4. ^ Han, Jaiwei; Kamber, Micheline; Pei, Jian (2011). Data Mining: Concepts and Techniques (3rd ed.). Morgan Kaufmann. ISBN 978-0-12-381479-1.
  5. ^ a b c Fayyad, Usama; Piatetsky-Shapiro, Gregory; Smyth, Padhraic (1996). "From Data Mining to Knowledge Discovery in Databases" (PDF). Archived (PDF) from the original on 2022-10-09. Retrieved 17 December 2008.
  6. ^ Han, Jiawei; Kamber, Micheline (2001). Data mining: concepts and techniques. Morgan Kaufmann. p. 5. ISBN 978-1-55860-489-6. Thus, data mining should have been more appropriately named "knowledge mining from data," which is unfortunately somewhat long
  7. ^ OKAIRP 2005 Fall Conference, Arizona State University 2014-02-01 at the Wayback Machine
  8. ^ Witten, Ian H.; Frank, Eibe; Hall, Mark A. (2011). Data Mining: Practical Machine Learning Tools and Techniques (3 ed.). Elsevier. ISBN 978-0-12-374856-0.
  9. ^ Bouckaert, Remco R.; Frank, Eibe; Hall, Mark A.; Holmes, Geoffrey; Pfahringer, Bernhard; Reutemann, Peter; Witten, Ian H. (2010). "WEKA Experiences with a Java open-source project". Journal of Machine Learning Research. 11: 2533–2541. the original title, "Practical machine learning", was changed ... The term "data mining" was [added] primarily for marketing reasons.
  10. ^ Olson, D. L. (2007). Data mining in business services. Service Business, 1(3), 181–193. doi:10.1007/s11628-006-0014-7
  11. ^ Lovell, Michael C. (1983). "Data Mining". The Review of Economics and Statistics. 65 (1): 1–12. doi:10.2307/1924403. JSTOR 1924403.
  12. ^ Charemza, Wojciech W.; Deadman, Derek F. (1992). "Data Mining". New Directions in Econometric Practice. Aldershot: Edward Elgar. pp. 14–31. ISBN 1-85278-461-X.
  13. ^ Mena, Jesús (2011). Machine Learning Forensics for Law Enforcement, Security, and Intelligence. Boca Raton, FL: CRC Press (Taylor & Francis Group). ISBN 978-1-4398-6069-4.
  14. ^ Piatetsky-Shapiro, Gregory; Parker, Gary (2011). "Lesson: Data Mining, and Knowledge Discovery: An Introduction". Introduction to Data Mining. KD Nuggets. Retrieved 30 August 2012.
  15. ^ Coenen, Frans (2011-02-07). "Data mining: past, present and future". The Knowledge Engineering Review. 26 (1): 25–29. doi:10.1017/S0269888910000378. ISSN 0269-8889. S2CID 6487637.
  16. ^ Kantardzic, Mehmed (2003). Data Mining: Concepts, Models, Methods, and Algorithms. John Wiley & Sons. ISBN 978-0-471-22852-3. OCLC 50055336.
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  19. ^ Azevedo, A. and Santos, M. F. KDD, SEMMA and CRISP-DM: a parallel overview 2013-01-09 at the Wayback Machine. In Proceedings of the IADIS European Conference on Data Mining 2008, pp 182–185.
  20. ^ Hawkins, Douglas M (2004). "The problem of overfitting". Journal of Chemical Information and Computer Sciences. 44 (1): 1–12. doi:10.1021/ci0342472. PMID 14741005.
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  23. ^ Proceedings 2010-04-30 at the Wayback Machine, International Conferences on Knowledge Discovery and Data Mining, ACM, New York.
  24. ^ SIGKDD Explorations, ACM, New York.
  25. ^ Günnemann, Stephan; Kremer, Hardy; Seidl, Thomas (2011). "An extension of the PMML standard to subspace clustering models". Proceedings of the 2011 workshop on Predictive markup language modeling. p. 48. doi:10.1145/2023598.2023605. ISBN 978-1-4503-0837-3. S2CID 14967969.
  26. ^ Seltzer, William (2005). "The Promise and Pitfalls of Data Mining: Ethical Issues" (PDF). ASA Section on Government Statistics. American Statistical Association. Archived (PDF) from the original on 2022-10-09.
  27. ^ Pitts, Chip (15 March 2007). . Washington Spectator. Archived from the original on 2007-11-28.
  28. ^ Taipale, Kim A. (15 December 2003). . Columbia Science and Technology Law Review. 5 (2). OCLC 45263753. SSRN 546782. Archived from the original on 5 November 2014. Retrieved 21 April 2004.
  29. ^ Resig, John. "A Framework for Mining Instant Messaging Services" (PDF). Archived (PDF) from the original on 2022-10-09. Retrieved 16 March 2018.
  30. ^ a b c Think Before You Dig: Privacy Implications of Data Mining & Aggregation 2008-12-17 at the Wayback Machine, NASCIO Research Brief, September 2004
  31. ^ Ohm, Paul. "Don't Build a Database of Ruin". Harvard Business Review.
  32. ^ AOL search data identified individuals, SecurityFocus, August 2006
  33. ^ Kshetri, Nir (2014). "Big data's impact on privacy, security and consumer welfare" (PDF). Telecommunications Policy. 38 (11): 1134–1145. doi:10.1016/j.telpol.2014.10.002.
  34. ^ Weiss, Martin A.; Archick, Kristin (19 May 2016). . Washington, D.C. Congressional Research Service. p. 6. R44257. Archived from the original (PDF) on 9 April 2020. Retrieved 9 April 2020. On October 6, 2015, the CJEU ... issued a decision that invalidated Safe Harbor (effective immediately), as currently implemented.
  35. ^ Parker, George (2018-09-30). "UK companies targeted for using big data to exploit customers". Financial Times. Archived from the original on 2022-12-10. Retrieved 2022-12-04.
  36. ^ Biotech Business Week Editors (June 30, 2008); BIOMEDICINE; HIPAA Privacy Rule Impedes Biomedical Research, Biotech Business Week, retrieved 17 November 2009 from LexisNexis Academic
  37. ^ UK Researchers Given Data Mining Right Under New UK Copyright Laws. June 9, 2014, at the Wayback Machine Out-Law.com. Retrieved 14 November 2014
  38. ^ "Fedlex".
  39. ^ "Licences for Europe – Structured Stakeholder Dialogue 2013". European Commission. Retrieved 14 November 2014.
  40. ^ . Association of European Research Libraries. Archived from the original on 29 November 2014. Retrieved 14 November 2014.
  41. ^ "Judge grants summary judgment in favor of Google Books – a fair use victory". Lexology.com. Antonelli Law Ltd. 19 November 2013. Retrieved 14 November 2014.

Further reading

  • Cabena, Peter; Hadjnian, Pablo; Stadler, Rolf; Verhees, Jaap; Zanasi, Alessandro (1997); Discovering Data Mining: From Concept to Implementation, Prentice Hall, ISBN 0-13-743980-6
  • M.S. Chen, J. Han, P.S. Yu (1996) "Data mining: an overview from a database perspective". Knowledge and data Engineering, IEEE Transactions on 8 (6), 866–883
  • Feldman, Ronen; Sanger, James (2007); The Text Mining Handbook, Cambridge University Press, ISBN 978-0-521-83657-9
  • Guo, Yike; and Grossman, Robert (editors) (1999); High Performance Data Mining: Scaling Algorithms, Applications and Systems, Kluwer Academic Publishers
  • Han, Jiawei, Micheline Kamber, and Jian Pei. Data mining: concepts and techniques. Morgan kaufmann, 2006.
  • Hastie, Trevor, Tibshirani, Robert and Friedman, Jerome (2001); The Elements of Statistical Learning: Data Mining, Inference, and Prediction, Springer, ISBN 0-387-95284-5
  • Liu, Bing (2007, 2011); Web Data Mining: Exploring Hyperlinks, Contents and Usage Data, Springer, ISBN 3-540-37881-2
  • Murphy, Chris (16 May 2011). "Is Data Mining Free Speech?". InformationWeek: 12.
  • Nisbet, Robert; Elder, John; Miner, Gary (2009); Handbook of Statistical Analysis & Data Mining Applications, Academic Press/Elsevier, ISBN 978-0-12-374765-5
  • Poncelet, Pascal; Masseglia, Florent; and Teisseire, Maguelonne (editors) (October 2007); "Data Mining Patterns: New Methods and Applications", Information Science Reference, ISBN 978-1-59904-162-9
  • Tan, Pang-Ning; Steinbach, Michael; and Kumar, Vipin (2005); Introduction to Data Mining, ISBN 0-321-32136-7
  • Theodoridis, Sergios; and Koutroumbas, Konstantinos (2009); Pattern Recognition, 4th Edition, Academic Press, ISBN 978-1-59749-272-0
  • Weiss, Sholom M.; and Indurkhya, Nitin (1998); Predictive Data Mining, Morgan Kaufmann
  • Witten, Ian H.; Frank, Eibe; Hall, Mark A. (30 January 2011). Data Mining: Practical Machine Learning Tools and Techniques (3 ed.). Elsevier. ISBN 978-0-12-374856-0. (See also Free Weka software)
  • Ye, Nong (2003); The Handbook of Data Mining, Mahwah, NJ: Lawrence Erlbaum

External links

  • Knowledge Discovery Software at Curlie
  • Data Mining Tool Vendors at Curlie

data, mining, mining, redirects, here, browser, based, cryptocurrency, mining, cryptocurrency, process, extracting, discovering, patterns, large, data, sets, involving, methods, intersection, machine, learning, statistics, database, systems, interdisciplinary,. Web mining redirects here For web browser based cryptocurrency mining see cryptocurrency Data mining is the process of extracting and discovering patterns in large data sets involving methods at the intersection of machine learning statistics and database systems 1 Data mining is an interdisciplinary subfield of computer science and statistics with an overall goal of extracting information with intelligent methods from a data set and transforming the information into a comprehensible structure for further use 1 2 3 4 Data mining is the analysis step of the knowledge discovery in databases process or KDD 5 Aside from the raw analysis step it also involves database and data management aspects data pre processing model and inference considerations interestingness metrics complexity considerations post processing of discovered structures visualization and online updating 1 The term data mining is a misnomer because the goal is the extraction of patterns and knowledge from large amounts of data not the extraction mining of data itself 6 It also is a buzzword 7 and is frequently applied to any form of large scale data or information processing collection extraction warehousing analysis and statistics as well as any application of computer decision support system including artificial intelligence e g machine learning and business intelligence The book Data mining Practical machine learning tools and techniques with Java 8 which covers mostly machine learning material was originally to be named Practical machine learning and the term data mining was only added for marketing reasons 9 Often the more general terms large scale data analysis and analytics or when referring to actual methods artificial intelligence and machine learning are more appropriate The actual data mining task is the semi automatic or automatic analysis of large quantities of data to extract previously unknown interesting patterns such as groups of data records cluster analysis unusual records anomaly detection and dependencies association rule mining sequential pattern mining This usually involves using database techniques such as spatial indices These patterns can then be seen as a kind of summary of the input data and may be used in further analysis or for example in machine learning and predictive analytics For example the data mining step might identify multiple groups in the data which can then be used to obtain more accurate prediction results by a decision support system Neither the data collection data preparation nor result interpretation and reporting is part of the data mining step although they do belong to the overall KDD process as additional steps The difference between data analysis and data mining is that data analysis is used to test models and hypotheses on the dataset e g analyzing the effectiveness of a marketing campaign regardless of the amount of data In contrast data mining uses machine learning and statistical models to uncover clandestine or hidden patterns in a large volume of data 10 The related terms data dredging data fishing and data snooping refer to the use of data mining methods to sample parts of a larger population data set that are or may be too small for reliable statistical inferences to be made about the validity of any patterns discovered These methods can however be used in creating new hypotheses to test against the larger data populations Contents 1 Etymology 2 Background 3 Process 3 1 Pre processing 3 2 Data mining 3 3 Results validation 4 Research 5 Standards 6 Notable uses 7 Privacy concerns and ethics 7 1 Situation in Europe 7 2 Situation in the United States 8 Copyright law 8 1 Situation in Europe 8 2 Situation in the United States 9 Software 9 1 Free open source data mining software and applications 9 2 Proprietary data mining software and applications 10 See also 11 References 12 Further reading 13 External linksEtymology EditIn the 1960s statisticians and economists used terms like data fishing or data dredging to refer to what they considered the bad practice of analyzing data without an a priori hypothesis The term data mining was used in a similarly critical way by economist Michael Lovell in an article published in the Review of Economic Studies in 1983 11 12 Lovell indicates that the practice masquerades under a variety of aliases ranging from experimentation positive to fishing or snooping negative The term data mining appeared around 1990 in the database community with generally positive connotations For a short time in 1980s a phrase database mining was used but since it was trademarked by HNC a San Diego based company to pitch their Database Mining Workstation 13 researchers consequently turned to data mining Other terms used include data archaeology information harvesting information discovery knowledge extraction etc Gregory Piatetsky Shapiro coined the term knowledge discovery in databases for the first workshop on the same topic KDD 1989 and this term became more popular in AI and machine learning community However the term data mining became more popular in the business and press communities 14 Currently the terms data mining and knowledge discovery are used interchangeably Background EditThe manual extraction of patterns from data has occurred for centuries Early methods of identifying patterns in data include Bayes theorem 1700s and regression analysis 1800s 15 The proliferation ubiquity and increasing power of computer technology have dramatically increased data collection storage and manipulation ability As data sets have grown in size and complexity direct hands on data analysis has increasingly been augmented with indirect automated data processing aided by other discoveries in computer science specially in the field of machine learning such as neural networks cluster analysis genetic algorithms 1950s decision trees and decision rules 1960s and support vector machines 1990s Data mining is the process of applying these methods with the intention of uncovering hidden patterns 16 in large data sets It bridges the gap from applied statistics and artificial intelligence which usually provide the mathematical background to database management by exploiting the way data is stored and indexed in databases to execute the actual learning and discovery algorithms more efficiently allowing such methods to be applied to ever larger data sets Process EditThe knowledge discovery in databases KDD process is commonly defined with the stages Selection Pre processing Transformation Data mining Interpretation evaluation 5 It exists however in many variations on this theme such as the Cross industry standard process for data mining CRISP DM which defines six phases Business understanding Data understanding Data preparation Modeling Evaluation Deploymentor a simplified process such as 1 Pre processing 2 Data Mining and 3 Results Validation Polls conducted in 2002 2004 2007 and 2014 show that the CRISP DM methodology is the leading methodology used by data miners 17 The only other data mining standard named in these polls was SEMMA However 3 4 times as many people reported using CRISP DM Several teams of researchers have published reviews of data mining process models 18 and Azevedo and Santos conducted a comparison of CRISP DM and SEMMA in 2008 19 Pre processing Edit Before data mining algorithms can be used a target data set must be assembled As data mining can only uncover patterns actually present in the data the target data set must be large enough to contain these patterns while remaining concise enough to be mined within an acceptable time limit A common source for data is a data mart or data warehouse Pre processing is essential to analyze the multivariate data sets before data mining The target set is then cleaned Data cleaning removes the observations containing noise and those with missing data Data mining Edit Data mining involves six common classes of tasks 5 Anomaly detection outlier change deviation detection The identification of unusual data records that might be interesting or data errors that require further investigation Association rule learning dependency modeling Searches for relationships between variables For example a supermarket might gather data on customer purchasing habits Using association rule learning the supermarket can determine which products are frequently bought together and use this information for marketing purposes This is sometimes referred to as market basket analysis Clustering is the task of discovering groups and structures in the data that are in some way or another similar without using known structures in the data Classification is the task of generalizing known structure to apply to new data For example an e mail program might attempt to classify an e mail as legitimate or as spam Regression attempts to find a function that models the data with the least error that is for estimating the relationships among data or datasets Summarization providing a more compact representation of the data set including visualization and report generation Results validation Edit An example of data produced by data dredging through a bot operated by statistician Tyler Vigen apparently showing a close link between the best word winning a spelling bee competition and the number of people in the United States killed by venomous spiders Data mining can unintentionally be misused producing results that appear to be significant but which do not actually predict future behavior and cannot be reproduced on a new sample of data therefore bearing little use This is sometimes caused by investigating too many hypotheses and not performing proper statistical hypothesis testing A simple version of this problem in machine learning is known as overfitting but the same problem can arise at different phases of the process and thus a train test split when applicable at all may not be sufficient to prevent this from happening 20 The final step of knowledge discovery from data is to verify that the patterns produced by the data mining algorithms occur in the wider data set Not all patterns found by the algorithms are necessarily valid It is common for data mining algorithms to find patterns in the training set which are not present in the general data set This is called overfitting To overcome this the evaluation uses a test set of data on which the data mining algorithm was not trained The learned patterns are applied to this test set and the resulting output is compared to the desired output For example a data mining algorithm trying to distinguish spam from legitimate e mails would be trained on a training set of sample e mails Once trained the learned patterns would be applied to the test set of e mails on which it had not been trained The accuracy of the patterns can then be measured from how many e mails they correctly classify Several statistical methods may be used to evaluate the algorithm such as ROC curves If the learned patterns do not meet the desired standards it is necessary to re evaluate and change the pre processing and data mining steps If the learned patterns do meet the desired standards then the final step is to interpret the learned patterns and turn them into knowledge Research EditThe premier professional body in the field is the Association for Computing Machinery s ACM Special Interest Group SIG on Knowledge Discovery and Data Mining SIGKDD 21 22 Since 1989 this ACM SIG has hosted an annual international conference and published its proceedings 23 and since 1999 it has published a biannual academic journal titled SIGKDD Explorations 24 Computer science conferences on data mining include CIKM Conference ACM Conference on Information and Knowledge Management European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases KDD Conference ACM SIGKDD Conference on Knowledge Discovery and Data MiningData mining topics are also present in many data management database conferences such as the ICDE Conference SIGMOD Conference and International Conference on Very Large Data Bases Standards EditThere have been some efforts to define standards for the data mining process for example the 1999 European Cross Industry Standard Process for Data Mining CRISP DM 1 0 and the 2004 Java Data Mining standard JDM 1 0 Development on successors to these processes CRISP DM 2 0 and JDM 2 0 was active in 2006 but has stalled since JDM 2 0 was withdrawn without reaching a final draft For exchanging the extracted models in particular for use in predictive analytics the key standard is the Predictive Model Markup Language PMML which is an XML based language developed by the Data Mining Group DMG and supported as exchange format by many data mining applications As the name suggests it only covers prediction models a particular data mining task of high importance to business applications However extensions to cover for example subspace clustering have been proposed independently of the DMG 25 Notable uses EditMain article Examples of data mining See also Category Applied data mining Data mining is used wherever there is digital data available today Notable examples of data mining can be found throughout business medicine science and surveillance Privacy concerns and ethics EditWhile the term data mining itself may have no ethical implications it is often associated with the mining of information in relation to user behavior ethical and otherwise 26 The ways in which data mining can be used can in some cases and contexts raise questions regarding privacy legality and ethics 27 In particular data mining government or commercial data sets for national security or law enforcement purposes such as in the Total Information Awareness Program or in ADVISE has raised privacy concerns 28 29 Data mining requires data preparation which uncovers information or patterns which compromise confidentiality and privacy obligations A common way for this to occur is through data aggregation Data aggregation involves combining data together possibly from various sources in a way that facilitates analysis but that also might make identification of private individual level data deducible or otherwise apparent 30 This is not data mining per se but a result of the preparation of data before and for the purposes of the analysis The threat to an individual s privacy comes into play when the data once compiled cause the data miner or anyone who has access to the newly compiled data set to be able to identify specific individuals especially when the data were originally anonymous 31 It is recommended according to whom to be aware of the following before data are collected 30 The purpose of the data collection and any known data mining projects How the data will be used Who will be able to mine the data and use the data and their derivatives The status of security surrounding access to the data How collected data can be updated Data may also be modified so as to become anonymous so that individuals may not readily be identified 30 However even anonymized data sets can potentially contain enough information to allow identification of individuals as occurred when journalists were able to find several individuals based on a set of search histories that were inadvertently released by AOL 32 The inadvertent revelation of personally identifiable information leading to the provider violates Fair Information Practices This indiscretion can cause financial emotional or bodily harm to the indicated individual In one instance of privacy violation the patrons of Walgreens filed a lawsuit against the company in 2011 for selling prescription information to data mining companies who in turn provided the data to pharmaceutical companies 33 Situation in Europe Edit Europe has rather strong privacy laws and efforts are underway to further strengthen the rights of the consumers However the U S E U Safe Harbor Principles developed between 1998 and 2000 currently effectively expose European users to privacy exploitation by U S companies As a consequence of Edward Snowden s global surveillance disclosure there has been increased discussion to revoke this agreement as in particular the data will be fully exposed to the National Security Agency and attempts to reach an agreement with the United States have failed 34 In the United Kingdom in particular there have been cases of corporations using data mining as a way to target certain groups of customers forcing them to pay unfairly high prices These groups tend to be people of lower socio economic status who are not savvy to the ways they can be exploited in digital market places 35 Situation in the United States Edit In the United States privacy concerns have been addressed by the US Congress via the passage of regulatory controls such as the Health Insurance Portability and Accountability Act HIPAA The HIPAA requires individuals to give their informed consent regarding information they provide and its intended present and future uses According to an article in Biotech Business Week i n practice HIPAA may not offer any greater protection than the longstanding regulations in the research arena says the AAHC More importantly the rule s goal of protection through informed consent is approach a level of incomprehensibility to average individuals 36 This underscores the necessity for data anonymity in data aggregation and mining practices U S information privacy legislation such as HIPAA and the Family Educational Rights and Privacy Act FERPA applies only to the specific areas that each such law addresses The use of data mining by the majority of businesses in the U S is not controlled by any legislation Copyright law EditSituation in Europe Edit Under European copyright and database laws the mining of in copyright works such as by web mining without the permission of the copyright owner is not legal Where a database is pure data in Europe it may be that there is no copyright but database rights may exist so data mining becomes subject to intellectual property owners rights that are protected by the Database Directive On the recommendation of the Hargreaves review this led to the UK government to amend its copyright law in 2014 to allow content mining as a limitation and exception 37 The UK was the second country in the world to do so after Japan which introduced an exception in 2009 for data mining However due to the restriction of the Information Society Directive 2001 the UK exception only allows content mining for non commercial purposes UK copyright law also does not allow this provision to be overridden by contractual terms and conditions Since 2020 also Switzerland has been regulating data mining by allowing it in the research field under certain conditions laid down by art 24d of the Swiss Copyright Act This new article entered into force on 1 April 2020 38 The European Commission facilitated stakeholder discussion on text and data mining in 2013 under the title of Licences for Europe 39 The focus on the solution to this legal issue such as licensing rather than limitations and exceptions led to representatives of universities researchers libraries civil society groups and open access publishers to leave the stakeholder dialogue in May 2013 40 Situation in the United States Edit US copyright law and in particular its provision for fair use upholds the legality of content mining in America and other fair use countries such as Israel Taiwan and South Korea As content mining is transformative that is it does not supplant the original work it is viewed as being lawful under fair use For example as part of the Google Book settlement the presiding judge on the case ruled that Google s digitization project of in copyright books was lawful in part because of the transformative uses that the digitization project displayed one being text and data mining 41 Software EditSee also Category Data mining and machine learning software Free open source data mining software and applications Edit The following applications are available under free open source licenses Public access to application source code is also available Carrot2 Text and search results clustering framework Chemicalize org A chemical structure miner and web search engine ELKI A university research project with advanced cluster analysis and outlier detection methods written in the Java language GATE a natural language processing and language engineering tool KNIME The Konstanz Information Miner a user friendly and comprehensive data analytics framework Massive Online Analysis MOA a real time big data stream mining with concept drift tool in the Java programming language MEPX cross platform tool for regression and classification problems based on a Genetic Programming variant mlpack a collection of ready to use machine learning algorithms written in the C language NLTK Natural Language Toolkit A suite of libraries and programs for symbolic and statistical natural language processing NLP for the Python language OpenNN Open neural networks library Orange A component based data mining and machine learning software suite written in the Python language PSPP Data mining and statistics software under the GNU Project similar to SPSS R A programming language and software environment for statistical computing data mining and graphics It is part of the GNU Project scikit learn An open source machine learning library for the Python programming language Torch An open source deep learning library for the Lua programming language and scientific computing framework with wide support for machine learning algorithms UIMA The UIMA Unstructured Information Management Architecture is a component framework for analyzing unstructured content such as text audio and video originally developed by IBM Weka A suite of machine learning software applications written in the Java programming language Proprietary data mining software and applications Edit The following applications are available under proprietary licenses Angoss KnowledgeSTUDIO data mining tool LIONsolver an integrated software application for data mining business intelligence and modeling that implements the Learning and Intelligent OptimizatioN LION approach PolyAnalyst data and text mining software by Megaputer Intelligence Microsoft Analysis Services data mining software provided by Microsoft NetOwl suite of multilingual text and entity analytics products that enable data mining Oracle Data Mining data mining software by Oracle Corporation PSeven platform for automation of engineering simulation and analysis multidisciplinary optimization and data mining provided by DATADVANCE Qlucore Omics Explorer data mining software RapidMiner An environment for machine learning and data mining experiments SAS Enterprise Miner data mining software provided by the SAS Institute SPSS Modeler data mining software provided by IBM STATISTICA Data Miner data mining software provided by StatSoft Tanagra Visualisation oriented data mining software also for teaching Vertica data mining software provided by Hewlett Packard Google Cloud Platform automated custom ML models managed by Google Amazon SageMaker managed service provided by Amazon for creating amp productionising custom ML models See also EditMethodsAgent mining Anomaly outlier change detection Association rule learning Bayesian networks Classification Cluster analysis Decision trees Ensemble learning Factor analysis Genetic algorithms Intention mining Learning classifier system Multilinear subspace learning Neural networks Regression analysis Sequence mining Structured data analysis Support vector machines Text mining Time series analysis Application domainsAnalytics Behavior informatics Big data Bioinformatics Business intelligence Data analysis Data warehouse Decision support system Domain driven data mining Drug discovery Exploratory data analysis Predictive analytics Web mining Application examplesMain article Examples of data mining See also Category Applied data mining Automatic number plate recognition in the United Kingdom Customer analytics Educational data mining National Security Agency Quantitative structure activity relationship Surveillance Mass surveillance e g Stellar Wind Related topicsFor more information about extracting information out of data as opposed to analyzing data see Data integration Data transformation Electronic discovery Information extraction Information integration Named entity recognition Profiling information science Psychometrics Social media mining Surveillance capitalism Web scraping Other resourcesInternational Journal of Data Warehousing and MiningReferences Edit a b c Data Mining Curriculum ACM SIGKDD 2006 04 30 Retrieved 2014 01 27 Clifton Christopher 2010 Encyclopaedia Britannica Definition of Data Mining Retrieved 2010 12 09 Hastie Trevor Tibshirani Robert Friedman Jerome 2009 The Elements of Statistical Learning Data Mining Inference and Prediction Archived from the original on 2009 11 10 Retrieved 2012 08 07 Han Jaiwei Kamber Micheline Pei Jian 2011 Data Mining Concepts and Techniques 3rd ed Morgan Kaufmann ISBN 978 0 12 381479 1 a b c Fayyad Usama Piatetsky Shapiro Gregory Smyth Padhraic 1996 From Data Mining to Knowledge Discovery in Databases PDF Archived PDF from the original on 2022 10 09 Retrieved 17 December 2008 Han Jiawei Kamber Micheline 2001 Data mining concepts and techniques Morgan Kaufmann p 5 ISBN 978 1 55860 489 6 Thus data mining should have been more appropriately named knowledge mining from data which is unfortunately somewhat long OKAIRP 2005 Fall Conference Arizona State University Archived 2014 02 01 at the Wayback Machine Witten Ian H Frank Eibe Hall Mark A 2011 Data Mining Practical Machine Learning Tools and Techniques 3 ed Elsevier ISBN 978 0 12 374856 0 Bouckaert Remco R Frank Eibe Hall Mark A Holmes Geoffrey Pfahringer Bernhard Reutemann Peter Witten Ian H 2010 WEKA Experiences with a Java open source project Journal of Machine Learning Research 11 2533 2541 the original title Practical machine learning was changed The term data mining was added primarily for marketing reasons Olson D L 2007 Data mining in business services Service Business 1 3 181 193 doi 10 1007 s11628 006 0014 7 Lovell Michael C 1983 Data Mining The Review of Economics and Statistics 65 1 1 12 doi 10 2307 1924403 JSTOR 1924403 Charemza Wojciech W Deadman Derek F 1992 Data Mining New Directions in Econometric Practice Aldershot Edward Elgar pp 14 31 ISBN 1 85278 461 X Mena Jesus 2011 Machine Learning Forensics for Law Enforcement Security and Intelligence Boca Raton FL CRC Press Taylor amp Francis Group ISBN 978 1 4398 6069 4 Piatetsky Shapiro Gregory Parker Gary 2011 Lesson Data Mining and Knowledge Discovery An Introduction Introduction to Data Mining KD Nuggets Retrieved 30 August 2012 Coenen Frans 2011 02 07 Data mining past present and future The Knowledge Engineering Review 26 1 25 29 doi 10 1017 S0269888910000378 ISSN 0269 8889 S2CID 6487637 Kantardzic Mehmed 2003 Data Mining Concepts Models Methods and Algorithms John Wiley amp Sons ISBN 978 0 471 22852 3 OCLC 50055336 Gregory Piatetsky Shapiro 2002 KDnuggets Methodology Poll Gregory Piatetsky Shapiro 2004 KDnuggets Methodology Poll Gregory Piatetsky Shapiro 2007 KDnuggets Methodology Poll Gregory Piatetsky Shapiro 2014 KDnuggets Methodology Poll Lukasz Kurgan and Petr Musilek A survey of Knowledge Discovery and Data Mining process models The Knowledge Engineering Review Volume 21 Issue 1 March 2006 pp 1 24 Cambridge University Press New York doi 10 1017 S0269888906000737 Azevedo A and Santos M F KDD SEMMA and CRISP DM a parallel overview Archived 2013 01 09 at the Wayback Machine In Proceedings of the IADIS European Conference on Data Mining 2008 pp 182 185 Hawkins Douglas M 2004 The problem of overfitting Journal of Chemical Information and Computer Sciences 44 1 1 12 doi 10 1021 ci0342472 PMID 14741005 Microsoft Academic Search Top conferences in data mining Microsoft Academic Search Google Scholar Top publications Data Mining amp Analysis Google Scholar Proceedings Archived 2010 04 30 at the Wayback Machine International Conferences on Knowledge Discovery and Data Mining ACM New York SIGKDD Explorations ACM New York Gunnemann Stephan Kremer Hardy Seidl Thomas 2011 An extension of the PMML standard to subspace clustering models Proceedings of the 2011 workshop on Predictive markup language modeling p 48 doi 10 1145 2023598 2023605 ISBN 978 1 4503 0837 3 S2CID 14967969 Seltzer William 2005 The Promise and Pitfalls of Data Mining Ethical Issues PDF ASA Section on Government Statistics American Statistical Association Archived PDF from the original on 2022 10 09 Pitts Chip 15 March 2007 The End of Illegal Domestic Spying Don t Count on It Washington Spectator Archived from the original on 2007 11 28 Taipale Kim A 15 December 2003 Data Mining and Domestic Security Connecting the Dots to Make Sense of Data Columbia Science and Technology Law Review 5 2 OCLC 45263753 SSRN 546782 Archived from the original on 5 November 2014 Retrieved 21 April 2004 Resig John A Framework for Mining Instant Messaging Services PDF Archived PDF from the original on 2022 10 09 Retrieved 16 March 2018 a b c Think Before You Dig Privacy Implications of Data Mining amp Aggregation Archived 2008 12 17 at the Wayback Machine NASCIO Research Brief September 2004 Ohm Paul Don t Build a Database of Ruin Harvard Business Review AOL search data identified individuals SecurityFocus August 2006 Kshetri Nir 2014 Big data s impact on privacy security and consumer welfare PDF Telecommunications Policy 38 11 1134 1145 doi 10 1016 j telpol 2014 10 002 Weiss Martin A Archick Kristin 19 May 2016 U S E U Data Privacy From Safe Harbor to Privacy Shield Washington D C Congressional Research Service p 6 R44257 Archived from the original PDF on 9 April 2020 Retrieved 9 April 2020 On October 6 2015 the CJEU issued a decision that invalidated Safe Harbor effective immediately as currently implemented Parker George 2018 09 30 UK companies targeted for using big data to exploit customers Financial Times Archived from the original on 2022 12 10 Retrieved 2022 12 04 Biotech Business Week Editors June 30 2008 BIOMEDICINE HIPAA Privacy Rule Impedes Biomedical Research Biotech Business Week retrieved 17 November 2009 from LexisNexis Academic UK Researchers Given Data Mining Right Under New UK Copyright Laws Archived June 9 2014 at the Wayback Machine Out Law com Retrieved 14 November 2014 Fedlex Licences for Europe Structured Stakeholder Dialogue 2013 European Commission Retrieved 14 November 2014 Text and Data Mining Its importance and the need for change in Europe Association of European Research Libraries Archived from the original on 29 November 2014 Retrieved 14 November 2014 Judge grants summary judgment in favor of Google Books a fair use victory Lexology com Antonelli Law Ltd 19 November 2013 Retrieved 14 November 2014 Further reading EditCabena Peter Hadjnian Pablo Stadler Rolf Verhees Jaap Zanasi Alessandro 1997 Discovering Data Mining From Concept to Implementation Prentice Hall ISBN 0 13 743980 6 M S Chen J Han P S Yu 1996 Data mining an overview from a database perspective Knowledge and data Engineering IEEE Transactions on 8 6 866 883 Feldman Ronen Sanger James 2007 The Text Mining Handbook Cambridge University Press ISBN 978 0 521 83657 9 Guo Yike and Grossman Robert editors 1999 High Performance Data Mining Scaling Algorithms Applications and Systems Kluwer Academic Publishers Han Jiawei Micheline Kamber and Jian Pei Data mining concepts and techniques Morgan kaufmann 2006 Hastie Trevor Tibshirani Robert and Friedman Jerome 2001 The Elements of Statistical Learning Data Mining Inference and Prediction Springer ISBN 0 387 95284 5 Liu Bing 2007 2011 Web Data Mining Exploring Hyperlinks Contents and Usage Data Springer ISBN 3 540 37881 2 Murphy Chris 16 May 2011 Is Data Mining Free Speech InformationWeek 12 Nisbet Robert Elder John Miner Gary 2009 Handbook of Statistical Analysis amp Data Mining Applications Academic Press Elsevier ISBN 978 0 12 374765 5 Poncelet Pascal Masseglia Florent and Teisseire Maguelonne editors October 2007 Data Mining Patterns New Methods and Applications Information Science Reference ISBN 978 1 59904 162 9 Tan Pang Ning Steinbach Michael and Kumar Vipin 2005 Introduction to Data Mining ISBN 0 321 32136 7 Theodoridis Sergios and Koutroumbas Konstantinos 2009 Pattern Recognition 4th Edition Academic Press ISBN 978 1 59749 272 0 Weiss Sholom M and Indurkhya Nitin 1998 Predictive Data Mining Morgan Kaufmann Witten Ian H Frank Eibe Hall Mark A 30 January 2011 Data Mining Practical Machine Learning Tools and Techniques 3 ed Elsevier ISBN 978 0 12 374856 0 See also Free Weka software Ye Nong 2003 The Handbook of Data Mining Mahwah NJ Lawrence ErlbaumExternal links Edit Wikimedia Commons has media related to Data mining Knowledge Discovery Software at Curlie Data Mining Tool Vendors at Curlie Retrieved from https en wikipedia org w index php title Data mining amp oldid 1150314347, wikipedia, wiki, book, books, library,

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