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Wikipedia

Analytics

Analytics is the systematic computational analysis of data or statistics.[1] It is used for the discovery, interpretation, and communication of meaningful patterns in data. It also entails applying data patterns toward effective decision-making. It can be valuable in areas rich with recorded information; analytics relies on the simultaneous application of statistics, computer programming, and operations research to quantify performance.

Organizations may apply analytics to business data to describe, predict, and improve business performance. Specifically, areas within analytics include descriptive analytics, diagnostic analytics, predictive analytics, prescriptive analytics, and cognitive analytics.[2] Analytics may apply to a variety of fields such as marketing, management, finance, online systems, information security, and software services. Since analytics can require extensive computation (see big data), the algorithms and software used for analytics harness the most current methods in computer science, statistics, and mathematics.[3] According to International Data Corporation, global spending on big data and business analytics (BDA) solutions is estimated to reach $215.7 billion in 2021.[4][5] As per Gartner, the overall analytic platforms software market grew by $25.5 billion in 2020.[6]

Analytics vs analysis edit

Data analysis focuses on the process of examining past data through business understanding, data understanding, data preparation, modeling and evaluation, and deployment.[7] It is a subset of data analytics, which takes multiple data analysis processes to focus on why an event happened and what may happen in the future based on the previous data.[8][unreliable source?] Data analytics is used to formulate larger organizational decisions.[citation needed]

Data analytics is a multidisciplinary field. There is extensive use of computer skills, mathematics, statistics, the use of descriptive techniques and predictive models to gain valuable knowledge from data through analytics.[citation needed] There is increasing use of the term advanced analytics, typically used to describe the technical aspects of analytics, especially in the emerging fields such as the use of machine learning techniques like neural networks, decision trees, logistic regression, linear to multiple regression analysis, and classification to do predictive modeling.[9][7] It also includes unsupervised machine learning techniques like cluster analysis, Principal Component Analysis, segmentation profile analysis and association analysis.[citation needed]

Applications edit

Marketing optimization edit

Marketing organizations use analytics to determine the outcomes of campaigns or efforts, and to guide decisions for investment and consumer targeting. Demographic studies, customer segmentation, conjoint analysis and other techniques allow marketers to use large amounts of consumer purchase, survey and panel data to understand and communicate marketing strategy.[10]

Marketing analytics consists of both qualitative and quantitative, structured and unstructured data used to drive strategic decisions about brand and revenue outcomes. The process involves predictive modelling, marketing experimentation, automation and real-time sales communications. The data enables companies to make predictions and alter strategic execution to maximize performance results.[10]

Web analytics allows marketers to collect session-level information about interactions on a website using an operation called sessionization. Google Analytics is an example of a popular free analytics tool that marketers use for this purpose.[11] Those interactions provide web analytics information systems with the information necessary to track the referrer, search keywords, identify the IP address,[12] and track the activities of the visitor. With this information, a marketer can improve marketing campaigns, website creative content, and information architecture.[13]

Analysis techniques frequently used in marketing include marketing mix modeling, pricing and promotion analyses, sales force optimization and customer analytics e.g.: segmentation. Web analytics and optimization of websites and online campaigns now frequently work hand in hand with the more traditional marketing analysis techniques. A focus on digital media has slightly changed the vocabulary so that marketing mix modeling is commonly referred to as attribution modeling in the digital or marketing mix modeling context.[citation needed]

These tools and techniques support both strategic marketing decisions (such as how much overall to spend on marketing, how to allocate budgets across a portfolio of brands and the marketing mix) and more tactical campaign support, in terms of targeting the best potential customer with the optimal message in the most cost-effective medium at the ideal time.

People analytics edit

People analytics uses behavioral data to understand how people work and change how companies are managed.[14]

People analytics is also known as workforce analytics, HR analytics, talent analytics, people insights, talent insights, colleague insights, human capital analytics, and HRIS analytics. HR analytics is the application of analytics to help companies manage human resources.[15] Additionally, HR analytics has become a strategic tool in analyzing and forecasting Human related trends in the changing labor markets, using Career Analytics tools.[16] The aim is to discern which employees to hire, which to reward or promote, what responsibilities to assign, and similar human resource problems.[17] For example, inspection of the strategic phenomenon of employee turnover utilizing People Analytics Tools may serve as an important analysis at times of disruption. [18] It has been suggested that People Analytics is a separate discipline to HR analytics, representing a greater focus on business issues rather than administrative processes,[19] and that People Analytics may not really belong within Human Resources in organizations.[20] However, experts disagree on this, with many arguing that Human Resources will need to develop People Analytics as a key part of a more capable and strategic business function in the changing world of work brought on by automation.[21] Instead of moving People Analytics outside HR, some experts argue that it belongs in HR, albeit enabled by a new breed of HR professional who is more data-driven and business savvy.[22]

Portfolio analytics edit

A common application of business analytics is portfolio analysis. In this, a bank or lending agency has a collection of accounts of varying value and risk. The accounts may differ by the social status (wealthy, middle-class, poor, etc.) of the holder, the geographical location, its net value, and many other factors. The lender must balance the return on the loan with the risk of default for each loan. The question is then how to evaluate the portfolio as a whole.[23]

The least risk loan may be to the very wealthy, but there are a very limited number of wealthy people. On the other hand, there are many poor that can be lent to, but at greater risk. Some balance must be struck that maximizes return and minimizes risk. The analytics solution may combine time series analysis with many other issues in order to make decisions on when to lend money to these different borrower segments, or decisions on the interest rate charged to members of a portfolio segment to cover any losses among members in that segment.[citation needed]

Risk analytics edit

Predictive models in the banking industry are developed to bring certainty across the risk scores for individual customers. Credit scores are built to predict an individual's delinquency behavior and are widely used to evaluate the credit worthiness of each applicant.[24] Furthermore, risk analyses are carried out in the scientific world[25] and the insurance industry.[26] It is also extensively used in financial institutions like online payment gateway companies to analyse if a transaction was genuine or fraud.[27] For this purpose, they use the transaction history of the customer. This is more commonly used in Credit Card purchases, when there is a sudden spike in the customer transaction volume the customer gets a call of confirmation if the transaction was initiated by him/her. This helps in reducing loss due to such circumstances.[28]

Digital analytics edit

Digital analytics is a set of business and technical activities that define, create, collect, verify or transform digital data into reporting, research, analyses, recommendations, optimizations, predictions, and automation.[29] This also includes the SEO (search engine optimization) where the keyword search is tracked and that data is used for marketing purposes.[30] Even banner ads and clicks come under digital analytics.[31] A growing number of brands and marketing firms rely on digital analytics for their digital marketing assignments, where MROI (Marketing Return on Investment) is an important key performance indicator (KPI).[citation needed]

Security analytics edit

Security analytics refers to information technology (IT) to gather security events to understand and analyze events that pose the greatest risk.[32][33] Products in this area include security information and event management and user behavior analytics.

Software analytics edit

Software analytics is the process of collecting information about the way a piece of software is used and produced.[34]

Challenges edit

In the industry of commercial analytics software, an emphasis has emerged on solving the challenges of analyzing massive, complex data sets, often when such data is in a constant state of change. Such data sets are commonly referred to as big data.[35] Whereas once the problems posed by big data were only found in the scientific community, today big data is a problem for many businesses that operate transactional systems online and, as a result, amass large volumes of data quickly.[36][35]

The analysis of unstructured data types is another challenge getting attention in the industry. Unstructured data differs from structured data in that its format varies widely and cannot be stored in traditional relational databases without significant effort at data transformation.[37] Sources of unstructured data, such as email, the contents of word processor documents, PDFs, geospatial data, etc., are rapidly becoming a relevant source of business intelligence for businesses, governments and universities.[38][39] For example, in Britain the discovery that one company was illegally selling fraudulent doctor's notes in order to assist people in defrauding employers and insurance companies[40] is an opportunity for insurance firms to increase the vigilance of their unstructured data analysis.[41][original research?]

These challenges are the current inspiration for much of the innovation in modern analytics information systems, giving birth to relatively new machine analysis concepts such as complex event processing,[42] full text search and analysis, and even new ideas in presentation. One such innovation is the introduction of grid-like architecture in machine analysis, allowing increases in the speed of massively parallel processing by distributing the workload to many computers all with equal access to the complete data set.[43]

Analytics is increasingly used in education, particularly at the district and government office levels. However, the complexity of student performance measures presents challenges when educators try to understand and use analytics to discern patterns in student performance, predict graduation likelihood, improve chances of student success, etc.[44] For example, in a study involving districts known for strong data use, 48% of teachers had difficulty posing questions prompted by data, 36% did not comprehend given data, and 52% incorrectly interpreted data.[45] To combat this, some analytics tools for educators adhere to an over-the-counter data format (embedding labels, supplemental documentation, and a help system, and making key package/display and content decisions) to improve educators' understanding and use of the analytics being displayed.[46]

Risks edit

Risks for the general population include discrimination on the basis of characteristics such as gender, skin colour, ethnic origin or political opinions, through mechanisms such as price discrimination or statistical discrimination.[47]

See also edit

References edit

  1. ^ . Archived from the original on August 10, 2020.
  2. ^ "Cognitive Analytics - combining Artificial Intelligence (AI) and Data Analytics". www.ulster.ac.uk. March 8, 2017. from the original on January 10, 2022. Retrieved January 7, 2022.
  3. ^ Kohavi, Rothleder and Simoudis (2002). "Emerging Trends in Business Analytics". Communications of the ACM. 45 (8): 45–48. CiteSeerX 10.1.1.13.3005. doi:10.1145/545151.545177. S2CID 15938729.
  4. ^ "Global Spending on Big Data and Analytics Solutions Will Reach $215.7 Billion in 2021, According to a New IDC Spending Guide". from the original on July 23, 2022. Retrieved July 24, 2022.
  5. ^ "Big data and business analytics revenue 2022". from the original on July 20, 2022. Retrieved July 24, 2022.
  6. ^ "Market Share: Data and Analytics Software, Worldwide, 2020". from the original on October 3, 2022. Retrieved July 24, 2022.
  7. ^ a b Kelleher, John D. (2020). Fundamentals of machine learning for predictive data analytics : algorithms, worked examples, and case studies. Brian Mac Namee, Aoife D'Arcy (2 ed.). Cambridge, Massachusetts. p. 16. ISBN 978-0-262-36110-1. OCLC 1162184998.{{cite book}}: CS1 maint: location missing publisher (link)
  8. ^ Park, David. "Analysis vs. Analytics: Past vs. Future". EE Times. from the original on January 29, 2021. Retrieved January 20, 2021.
  9. ^ "AI, Big Data & Advanced Analytics In The Supply Chain". Forbes.com. from the original on June 23, 2022. Retrieved April 16, 2020.
  10. ^ a b Wedel, Michel; Kannan, P.K. (November 1, 2016). "Marketing Analytics for Data-Rich Environments". Journal of Marketing. 80 (6): 97–121. doi:10.1509/jm.15.0413. ISSN 0022-2429. S2CID 168410284. from the original on March 31, 2022. Retrieved January 10, 2022.
  11. ^ "Session - Analytics Help". support.google.com. from the original on January 10, 2022. Retrieved January 9, 2022.
  12. ^ "IP address - Analytics Help". support.google.com. from the original on January 10, 2022. Retrieved January 9, 2022.
  13. ^ "Analytics Tools & Solutions for Your Business - Google Analytics". Google Marketing Platform. from the original on October 2, 2022. Retrieved January 9, 2022.
  14. ^ lukem (November 4, 2016). "People Analytics: Transforming Management with Behavioral Data". Programs for Professionals | MIT Professional Education. from the original on September 8, 2018. Retrieved April 3, 2018.
  15. ^ Chalutz Ben-Gal, Hila (2019). (PDF). Personnel Review, Vol. 48 No. 6, pp. 1429-1448. Archived from the original (PDF) on October 30, 2021. Retrieved February 9, 2020.
  16. ^ Sela, A., Chalutz Ben-Gal, Hila (2018). (PDF). In 2018 IEEE International Conference on the Science of Electrical Engineering in Israel (ICSEE). IEEE. Archived from the original (PDF) on March 31, 2022. Retrieved February 9, 2020.{{cite web}}: CS1 maint: multiple names: authors list (link)
  17. ^ "People analytics - University of Pennsylvania". Coursera. from the original on April 19, 2019. Retrieved May 3, 2017.
  18. ^ Avrahami, D.; Pessach, D.; Singer, G.; Chalutz Ben-Gal, Hila (2022). (PDF). International Journal of Manpower, Vol. ahead-of-print No. ahead-of-print. Archived from the original (PDF) on April 2, 2022. Retrieved July 27, 2022.
  19. ^ "People Analytics: MIT July 24, 2017". HR Examiner. August 2, 2017. from the original on April 28, 2019. Retrieved April 3, 2018.
  20. ^ Bersin, Josh. "The Geeks Arrive In HR: People Analytics Is Here". Forbes. from the original on September 20, 2019. Retrieved April 3, 2018.
  21. ^ "The CEO's guide to competing through HR". from the original on July 24, 2020. Retrieved July 24, 2020.
  22. ^ McNulty, Keith. "It's Time for HR 3.0". Talent Economy. from the original on July 3, 2020. Retrieved July 24, 2020.
  23. ^ Pilbeam, Keith (2005), Pilbeam, Keith (ed.), "Portfolio Analysis: Risk and Return in Financial Markets", Finance and Financial Markets, London: Macmillan Education UK, pp. 156–187, doi:10.1007/978-1-349-26273-1_7, ISBN 978-1-349-26273-1, retrieved January 9, 2022
  24. ^ "Credit Reports and Scores | USAGov". www.usa.gov. from the original on January 8, 2022. Retrieved January 9, 2022.
  25. ^ Mayernik, Matthew S.; Breseman, Kelsey; Downs, Robert R.; Duerr, Ruth; Garretson, Alexis; Hou, Chung-Yi (Sophie); Committee, Environmental Data Governance Initiative (EDGI) and Earth Science Information Partners (ESIP) Data Stewardship (March 12, 2020). "Risk Assessment for Scientific Data". Data Science Journal. 19 (1): 10. doi:10.5334/dsj-2020-010. ISSN 1683-1470. S2CID 215873228.
  26. ^ "Predictive Analytics in Insurance: Types, Tools, and the Future". Maryville Online. October 28, 2020. from the original on January 10, 2022. Retrieved January 9, 2022.
  27. ^ Liébana-Cabanillas, Francisco; Singh, Nidhi; Kalinic, Zoran; Carvajal-Trujillo, Elena (June 1, 2021). "Examining the determinants of continuance intention to use and the moderating effect of the gender and age of users of NFC mobile payments: a multi-analytical approach". Information Technology and Management. 22 (2): 133–161. doi:10.1007/s10799-021-00328-6. ISSN 1573-7667. S2CID 234834347.
  28. ^ Crail, Chauncey (March 9, 2021). "How to Enable Mobile Credit Card Alerts for Purchases and Fraud". Forbes Advisor. from the original on January 10, 2022. Retrieved January 9, 2022.
  29. ^ Phillips, Judah "Building a Digital Analytics Organization" Financial Times Press, 2013, pp 7–8.
  30. ^ "SEO Starter Guide: The Basics | Google Search Central". Google Developers. from the original on January 12, 2022. Retrieved January 9, 2022.
  31. ^ "Clickthrough rate (CTR): Definition - Google Ads Help". support.google.com. from the original on January 10, 2022. Retrieved January 9, 2022.
  32. ^ . Enterprise Innovation. Archived from the original on February 12, 2019. Retrieved April 27, 2015.
  33. ^ Talabis, Mark Ryan M. (2015). Information security analytics : finding security insights, patterns, and anomalies in big data. Robert McPherson, I Miyamoto, Jason L. Martin. Waltham, MA. p. 1. ISBN 978-0-12-800506-4. OCLC 910911974.{{cite book}}: CS1 maint: location missing publisher (link)
  34. ^ "Software Analytics - an overview | ScienceDirect Topics". www.sciencedirect.com. from the original on January 11, 2022. Retrieved January 9, 2022.
  35. ^ a b "2.3 Ten common characteristics of big data". www.bitbybitbook.com. from the original on March 31, 2022. Retrieved January 10, 2022.
  36. ^ Naone, Erica. "The New Big Data". Technology Review, MIT. from the original on May 20, 2022. Retrieved August 22, 2011.
  37. ^ Inmon, Bill; Nesavich, Anthony (2007). Tapping Into Unstructured Data. Prentice-Hall. ISBN 978-0-13-236029-6.
  38. ^ Wise, Lyndsay. . Dashboard Insight. Archived from the original on January 5, 2014. Retrieved February 14, 2011.
  39. ^ "Tapping the power of unstructured data". MIT Sloan. from the original on January 10, 2022. Retrieved January 10, 2022.
  40. ^ "Fake doctors' sick notes for Sale for £25, NHS fraud squad warns". The Telegraph. London. August 26, 2008. Archived from the original on January 12, 2022. Retrieved September 16, 2011.
  41. ^ "Big Data: The next frontier for innovation, competition and productivity as reported in Building with Big Data". The Economist. May 26, 2011. from the original on June 3, 2011.
  42. ^ Flouris, Ioannis; Giatrakos, Nikos; Deligiannakis, Antonios; Garofalakis, Minos; Kamp, Michael; Mock, Michael (May 1, 2017). "Issues in complex event processing: Status and prospects in the Big Data era". Journal of Systems and Software. 127: 217–236. doi:10.1016/j.jss.2016.06.011. ISSN 0164-1212. from the original on April 14, 2019. Retrieved January 10, 2022.
  43. ^ Yang, Ning; Liu, Diyou; Feng, Quanlong; Xiong, Quan; Zhang, Lin; Ren, Tianwei; Zhao, Yuanyuan; Zhu, Dehai; Huang, Jianxi (June 25, 2019). "Large-Scale Crop Mapping Based on Machine Learning and Parallel Computation with Grids". Remote Sensing. 11 (12): 1500. Bibcode:2019RemS...11.1500Y. doi:10.3390/rs11121500. ISSN 2072-4292.
  44. ^ Prinsloo, Paul; Slade, Sharon (March 13, 2017). "An elephant in the learning analytics room". Proceedings of the Seventh International Learning Analytics & Knowledge Conference (PDF). LAK '17. New York, NY, USA: Association for Computing Machinery. pp. 46–55. doi:10.1145/3027385.3027406. ISBN 978-1-4503-4870-6. S2CID 9490514.
  45. ^ U.S. Department of Education Office of Planning, Evaluation and Policy Development (2009). Implementing data-informed decision making in schools: Teacher access, supports and use. United States Department of Education (ERIC Document Reproduction Service No. ED504191)
  46. ^ Rankin, J. (March 28, 2013). How data Systems & reports can either fight or propagate the data analysis error epidemic, and how educator leaders can help. March 26, 2019, at the Wayback Machine Presentation conducted from Technology Information Center for Administrative Leadership (TICAL) School Leadership Summit.
  47. ^ Favaretto, Maddalena; De Clercq, Eva; Elger, Bernice Simone (February 5, 2019). "Big Data and discrimination: perils, promises and solutions. A systematic review". Journal of Big Data. 6 (1): 12. doi:10.1186/s40537-019-0177-4. ISSN 2196-1115. S2CID 59603476.


External links edit

  •   The dictionary definition of analytics at Wiktionary

analytics, other, uses, disambiguation, this, article, multiple, issues, please, help, improve, discuss, these, issues, talk, page, learn, when, remove, these, template, messages, this, article, includes, list, general, references, lacks, sufficient, correspon. For other uses see Analytics disambiguation This article has multiple issues Please help improve it or discuss these issues on the talk page Learn how and when to remove these template messages This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations December 2021 Learn how and when to remove this template message This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Analytics news newspapers books scholar JSTOR December 2021 Learn how and when to remove this template message Learn how and when to remove this template message Analytics is the systematic computational analysis of data or statistics 1 It is used for the discovery interpretation and communication of meaningful patterns in data It also entails applying data patterns toward effective decision making It can be valuable in areas rich with recorded information analytics relies on the simultaneous application of statistics computer programming and operations research to quantify performance Organizations may apply analytics to business data to describe predict and improve business performance Specifically areas within analytics include descriptive analytics diagnostic analytics predictive analytics prescriptive analytics and cognitive analytics 2 Analytics may apply to a variety of fields such as marketing management finance online systems information security and software services Since analytics can require extensive computation see big data the algorithms and software used for analytics harness the most current methods in computer science statistics and mathematics 3 According to International Data Corporation global spending on big data and business analytics BDA solutions is estimated to reach 215 7 billion in 2021 4 5 As per Gartner the overall analytic platforms software market grew by 25 5 billion in 2020 6 Contents 1 Analytics vs analysis 2 Applications 2 1 Marketing optimization 2 2 People analytics 2 3 Portfolio analytics 2 4 Risk analytics 2 5 Digital analytics 2 6 Security analytics 2 7 Software analytics 3 Challenges 3 1 Risks 4 See also 5 References 6 External linksAnalytics vs analysis editThis section may be confusing or unclear to readers In particular it is still not clear what the difference between analytics and analysis is Please help clarify the section There might be a discussion about this on the talk page March 2018 Learn how and when to remove this template message Data analysis focuses on the process of examining past data through business understanding data understanding data preparation modeling and evaluation and deployment 7 It is a subset of data analytics which takes multiple data analysis processes to focus on why an event happened and what may happen in the future based on the previous data 8 unreliable source Data analytics is used to formulate larger organizational decisions citation needed Data analytics is a multidisciplinary field There is extensive use of computer skills mathematics statistics the use of descriptive techniques and predictive models to gain valuable knowledge from data through analytics citation needed There is increasing use of the term advanced analytics typically used to describe the technical aspects of analytics especially in the emerging fields such as the use of machine learning techniques like neural networks decision trees logistic regression linear to multiple regression analysis and classification to do predictive modeling 9 7 It also includes unsupervised machine learning techniques like cluster analysis Principal Component Analysis segmentation profile analysis and association analysis citation needed Applications editMarketing optimization edit Marketing organizations use analytics to determine the outcomes of campaigns or efforts and to guide decisions for investment and consumer targeting Demographic studies customer segmentation conjoint analysis and other techniques allow marketers to use large amounts of consumer purchase survey and panel data to understand and communicate marketing strategy 10 Marketing analytics consists of both qualitative and quantitative structured and unstructured data used to drive strategic decisions about brand and revenue outcomes The process involves predictive modelling marketing experimentation automation and real time sales communications The data enables companies to make predictions and alter strategic execution to maximize performance results 10 Web analytics allows marketers to collect session level information about interactions on a website using an operation called sessionization Google Analytics is an example of a popular free analytics tool that marketers use for this purpose 11 Those interactions provide web analytics information systems with the information necessary to track the referrer search keywords identify the IP address 12 and track the activities of the visitor With this information a marketer can improve marketing campaigns website creative content and information architecture 13 Analysis techniques frequently used in marketing include marketing mix modeling pricing and promotion analyses sales force optimization and customer analytics e g segmentation Web analytics and optimization of websites and online campaigns now frequently work hand in hand with the more traditional marketing analysis techniques A focus on digital media has slightly changed the vocabulary so that marketing mix modeling is commonly referred to as attribution modeling in the digital or marketing mix modeling context citation needed These tools and techniques support both strategic marketing decisions such as how much overall to spend on marketing how to allocate budgets across a portfolio of brands and the marketing mix and more tactical campaign support in terms of targeting the best potential customer with the optimal message in the most cost effective medium at the ideal time People analytics edit People analytics uses behavioral data to understand how people work and change how companies are managed 14 People analytics is also known as workforce analytics HR analytics talent analytics people insights talent insights colleague insights human capital analytics and HRIS analytics HR analytics is the application of analytics to help companies manage human resources 15 Additionally HR analytics has become a strategic tool in analyzing and forecasting Human related trends in the changing labor markets using Career Analytics tools 16 The aim is to discern which employees to hire which to reward or promote what responsibilities to assign and similar human resource problems 17 For example inspection of the strategic phenomenon of employee turnover utilizing People Analytics Tools may serve as an important analysis at times of disruption 18 It has been suggested that People Analytics is a separate discipline to HR analytics representing a greater focus on business issues rather than administrative processes 19 and that People Analytics may not really belong within Human Resources in organizations 20 However experts disagree on this with many arguing that Human Resources will need to develop People Analytics as a key part of a more capable and strategic business function in the changing world of work brought on by automation 21 Instead of moving People Analytics outside HR some experts argue that it belongs in HR albeit enabled by a new breed of HR professional who is more data driven and business savvy 22 Portfolio analytics edit A common application of business analytics is portfolio analysis In this a bank or lending agency has a collection of accounts of varying value and risk The accounts may differ by the social status wealthy middle class poor etc of the holder the geographical location its net value and many other factors The lender must balance the return on the loan with the risk of default for each loan The question is then how to evaluate the portfolio as a whole 23 The least risk loan may be to the very wealthy but there are a very limited number of wealthy people On the other hand there are many poor that can be lent to but at greater risk Some balance must be struck that maximizes return and minimizes risk The analytics solution may combine time series analysis with many other issues in order to make decisions on when to lend money to these different borrower segments or decisions on the interest rate charged to members of a portfolio segment to cover any losses among members in that segment citation needed Risk analytics edit Predictive models in the banking industry are developed to bring certainty across the risk scores for individual customers Credit scores are built to predict an individual s delinquency behavior and are widely used to evaluate the credit worthiness of each applicant 24 Furthermore risk analyses are carried out in the scientific world 25 and the insurance industry 26 It is also extensively used in financial institutions like online payment gateway companies to analyse if a transaction was genuine or fraud 27 For this purpose they use the transaction history of the customer This is more commonly used in Credit Card purchases when there is a sudden spike in the customer transaction volume the customer gets a call of confirmation if the transaction was initiated by him her This helps in reducing loss due to such circumstances 28 Digital analytics edit Digital analytics is a set of business and technical activities that define create collect verify or transform digital data into reporting research analyses recommendations optimizations predictions and automation 29 This also includes the SEO search engine optimization where the keyword search is tracked and that data is used for marketing purposes 30 Even banner ads and clicks come under digital analytics 31 A growing number of brands and marketing firms rely on digital analytics for their digital marketing assignments where MROI Marketing Return on Investment is an important key performance indicator KPI citation needed Security analytics edit Security analytics refers to information technology IT to gather security events to understand and analyze events that pose the greatest risk 32 33 Products in this area include security information and event management and user behavior analytics Software analytics edit Main article Software analytics Software analytics is the process of collecting information about the way a piece of software is used and produced 34 Challenges editIn the industry of commercial analytics software an emphasis has emerged on solving the challenges of analyzing massive complex data sets often when such data is in a constant state of change Such data sets are commonly referred to as big data 35 Whereas once the problems posed by big data were only found in the scientific community today big data is a problem for many businesses that operate transactional systems online and as a result amass large volumes of data quickly 36 35 The analysis of unstructured data types is another challenge getting attention in the industry Unstructured data differs from structured data in that its format varies widely and cannot be stored in traditional relational databases without significant effort at data transformation 37 Sources of unstructured data such as email the contents of word processor documents PDFs geospatial data etc are rapidly becoming a relevant source of business intelligence for businesses governments and universities 38 39 For example in Britain the discovery that one company was illegally selling fraudulent doctor s notes in order to assist people in defrauding employers and insurance companies 40 is an opportunity for insurance firms to increase the vigilance of their unstructured data analysis 41 original research These challenges are the current inspiration for much of the innovation in modern analytics information systems giving birth to relatively new machine analysis concepts such as complex event processing 42 full text search and analysis and even new ideas in presentation One such innovation is the introduction of grid like architecture in machine analysis allowing increases in the speed of massively parallel processing by distributing the workload to many computers all with equal access to the complete data set 43 Analytics is increasingly used in education particularly at the district and government office levels However the complexity of student performance measures presents challenges when educators try to understand and use analytics to discern patterns in student performance predict graduation likelihood improve chances of student success etc 44 For example in a study involving districts known for strong data use 48 of teachers had difficulty posing questions prompted by data 36 did not comprehend given data and 52 incorrectly interpreted data 45 To combat this some analytics tools for educators adhere to an over the counter data format embedding labels supplemental documentation and a help system and making key package display and content decisions to improve educators understanding and use of the analytics being displayed 46 Risks edit Risks for the general population include discrimination on the basis of characteristics such as gender skin colour ethnic origin or political opinions through mechanisms such as price discrimination or statistical discrimination 47 See also editAnalysis Analytic applications Architectural analytics Behavioral analytics Business analytics Business intelligence Cloud analytics Complex event processing Continuous analytics Cultural analytics Customer analytics Dashboard business Data mining Data presentation architecture Embedded analytics Learning analytics List of software engineering topics Mobile Location Analytics News analytics Online analytical processing Online video analytics Operational reporting Operations research Prediction Predictive analytics Predictive engineering analytics Prescriptive analytics Semantic analytics Smart grid Social analytics Software analytics Speech analytics Statistics User behavior analytics Visual analytics Web analytics Win loss analyticsReferences edit Oxford definition of analytics Archived from the original on August 10 2020 Cognitive Analytics combining Artificial Intelligence AI and Data Analytics www ulster ac uk March 8 2017 Archived from the original on January 10 2022 Retrieved January 7 2022 Kohavi Rothleder and Simoudis 2002 Emerging Trends in Business Analytics Communications of the ACM 45 8 45 48 CiteSeerX 10 1 1 13 3005 doi 10 1145 545151 545177 S2CID 15938729 Global Spending on Big Data and Analytics Solutions Will Reach 215 7 Billion in 2021 According to a New IDC Spending Guide Archived from the original on July 23 2022 Retrieved July 24 2022 Big data and business analytics revenue 2022 Archived from the original on July 20 2022 Retrieved July 24 2022 Market Share Data and Analytics Software Worldwide 2020 Archived from the original on October 3 2022 Retrieved July 24 2022 a b Kelleher John D 2020 Fundamentals of machine learning for predictive data analytics algorithms worked examples and case studies Brian Mac Namee Aoife D Arcy 2 ed Cambridge Massachusetts p 16 ISBN 978 0 262 36110 1 OCLC 1162184998 a href Template Cite book html title Template Cite book cite book a CS1 maint location missing publisher link Park David Analysis vs Analytics Past vs Future EE Times Archived from the original on January 29 2021 Retrieved January 20 2021 AI Big Data amp Advanced Analytics In The Supply Chain Forbes com Archived from the original on June 23 2022 Retrieved April 16 2020 a b Wedel Michel Kannan P K November 1 2016 Marketing Analytics for Data Rich Environments Journal of Marketing 80 6 97 121 doi 10 1509 jm 15 0413 ISSN 0022 2429 S2CID 168410284 Archived from the original on March 31 2022 Retrieved January 10 2022 Session Analytics Help support google com Archived from the original on January 10 2022 Retrieved January 9 2022 IP address Analytics Help support google com Archived from the original on January 10 2022 Retrieved January 9 2022 Analytics Tools amp Solutions for Your Business Google Analytics Google Marketing Platform Archived from the original on October 2 2022 Retrieved January 9 2022 lukem November 4 2016 People Analytics Transforming Management with Behavioral Data Programs for Professionals MIT Professional Education Archived from the original on September 8 2018 Retrieved April 3 2018 Chalutz Ben Gal Hila 2019 An ROI based review of HR analytics practical implementation tools PDF Personnel Review Vol 48 No 6 pp 1429 1448 Archived from the original PDF on October 30 2021 Retrieved February 9 2020 Sela A Chalutz Ben Gal Hila 2018 Career Analytics data driven analysis of turnover and career paths in knowledge intensive firms Google Facebook and others PDF In 2018 IEEE International Conference on the Science of Electrical Engineering in Israel ICSEE IEEE Archived from the original PDF on March 31 2022 Retrieved February 9 2020 a href Template Cite web html title Template Cite web cite web a CS1 maint multiple names authors list link People analytics University of Pennsylvania Coursera Archived from the original on April 19 2019 Retrieved May 3 2017 Avrahami D Pessach D Singer G Chalutz Ben Gal Hila 2022 A human resources analytics and machine learning examination of turnover implications for theory and practice PDF International Journal of Manpower Vol ahead of print No ahead of print Archived from the original PDF on April 2 2022 Retrieved July 27 2022 People Analytics MIT July 24 2017 HR Examiner August 2 2017 Archived from the original on April 28 2019 Retrieved April 3 2018 Bersin Josh The Geeks Arrive In HR People Analytics Is Here Forbes Archived from the original on September 20 2019 Retrieved April 3 2018 The CEO s guide to competing through HR Archived from the original on July 24 2020 Retrieved July 24 2020 McNulty Keith It s Time for HR 3 0 Talent Economy Archived from the original on July 3 2020 Retrieved July 24 2020 Pilbeam Keith 2005 Pilbeam Keith ed Portfolio Analysis Risk and Return in Financial Markets Finance and Financial Markets London Macmillan Education UK pp 156 187 doi 10 1007 978 1 349 26273 1 7 ISBN 978 1 349 26273 1 retrieved January 9 2022 Credit Reports and Scores USAGov www usa gov Archived from the original on January 8 2022 Retrieved January 9 2022 Mayernik Matthew S Breseman Kelsey Downs Robert R Duerr Ruth Garretson Alexis Hou Chung Yi Sophie Committee Environmental Data Governance Initiative EDGI and Earth Science Information Partners ESIP Data Stewardship March 12 2020 Risk Assessment for Scientific Data Data Science Journal 19 1 10 doi 10 5334 dsj 2020 010 ISSN 1683 1470 S2CID 215873228 Predictive Analytics in Insurance Types Tools and the Future Maryville Online October 28 2020 Archived from the original on January 10 2022 Retrieved January 9 2022 Liebana Cabanillas Francisco Singh Nidhi Kalinic Zoran Carvajal Trujillo Elena June 1 2021 Examining the determinants of continuance intention to use and the moderating effect of the gender and age of users of NFC mobile payments a multi analytical approach Information Technology and Management 22 2 133 161 doi 10 1007 s10799 021 00328 6 ISSN 1573 7667 S2CID 234834347 Crail Chauncey March 9 2021 How to Enable Mobile Credit Card Alerts for Purchases and Fraud Forbes Advisor Archived from the original on January 10 2022 Retrieved January 9 2022 Phillips Judah Building a Digital Analytics Organization Financial Times Press 2013 pp 7 8 SEO Starter Guide The Basics Google Search Central Google Developers Archived from the original on January 12 2022 Retrieved January 9 2022 Clickthrough rate CTR Definition Google Ads Help support google com Archived from the original on January 10 2022 Retrieved January 9 2022 Security analytics shores up hope for breach detection Enterprise Innovation Archived from the original on February 12 2019 Retrieved April 27 2015 Talabis Mark Ryan M 2015 Information security analytics finding security insights patterns and anomalies in big data Robert McPherson I Miyamoto Jason L Martin Waltham MA p 1 ISBN 978 0 12 800506 4 OCLC 910911974 a href Template Cite book html title Template Cite book cite book a CS1 maint location missing publisher link Software Analytics an overview ScienceDirect Topics www sciencedirect com Archived from the original on January 11 2022 Retrieved January 9 2022 a b 2 3 Ten common characteristics of big data www bitbybitbook com Archived from the original on March 31 2022 Retrieved January 10 2022 Naone Erica The New Big Data Technology Review MIT Archived from the original on May 20 2022 Retrieved August 22 2011 Inmon Bill Nesavich Anthony 2007 Tapping Into Unstructured Data Prentice Hall ISBN 978 0 13 236029 6 Wise Lyndsay Data Analysis and Unstructured Data Dashboard Insight Archived from the original on January 5 2014 Retrieved February 14 2011 Tapping the power of unstructured data MIT Sloan Archived from the original on January 10 2022 Retrieved January 10 2022 Fake doctors sick notes for Sale for 25 NHS fraud squad warns The Telegraph London August 26 2008 Archived from the original on January 12 2022 Retrieved September 16 2011 Big Data The next frontier for innovation competition and productivity as reported in Building with Big Data The Economist May 26 2011 Archived from the original on June 3 2011 Flouris Ioannis Giatrakos Nikos Deligiannakis Antonios Garofalakis Minos Kamp Michael Mock Michael May 1 2017 Issues in complex event processing Status and prospects in the Big Data era Journal of Systems and Software 127 217 236 doi 10 1016 j jss 2016 06 011 ISSN 0164 1212 Archived from the original on April 14 2019 Retrieved January 10 2022 Yang Ning Liu Diyou Feng Quanlong Xiong Quan Zhang Lin Ren Tianwei Zhao Yuanyuan Zhu Dehai Huang Jianxi June 25 2019 Large Scale Crop Mapping Based on Machine Learning and Parallel Computation with Grids Remote Sensing 11 12 1500 Bibcode 2019RemS 11 1500Y doi 10 3390 rs11121500 ISSN 2072 4292 Prinsloo Paul Slade Sharon March 13 2017 An elephant in the learning analytics room Proceedings of the Seventh International Learning Analytics amp Knowledge Conference PDF LAK 17 New York NY USA Association for Computing Machinery pp 46 55 doi 10 1145 3027385 3027406 ISBN 978 1 4503 4870 6 S2CID 9490514 U S Department of Education Office of Planning Evaluation and Policy Development 2009 Implementing data informed decision making in schools Teacher access supports and use United States Department of Education ERIC Document Reproduction Service No ED504191 Rankin J March 28 2013 How data Systems amp reports can either fight or propagate the data analysis error epidemic and how educator leaders can help Archived March 26 2019 at the Wayback Machine Presentation conducted from Technology Information Center for Administrative Leadership TICAL School Leadership Summit Favaretto Maddalena De Clercq Eva Elger Bernice Simone February 5 2019 Big Data and discrimination perils promises and solutions A systematic review Journal of Big Data 6 1 12 doi 10 1186 s40537 019 0177 4 ISSN 2196 1115 S2CID 59603476 External links edit nbsp The dictionary definition of analytics at Wiktionary Retrieved from https en wikipedia org w index php title Analytics amp oldid 1195338818, wikipedia, wiki, book, books, library,

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