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Predictive analytics

Predictive analytics is a form of business analytics applying machine learning to generate a predictive model for certain business applications. As such, it encompasses a variety of statistical techniques from predictive modeling and machine learning that analyze current and historical facts to make predictions about future or otherwise unknown events.[1] It represents a major subset of machine learning applications; in some contexts, it is synonymous with machine learning.[2]

In business, predictive models exploit patterns found in historical and transactional data to identify risks and opportunities. Models capture relationships among many factors to allow assessment of risk or potential associated with a particular set of conditions, guiding decision-making for candidate transactions.[3]

The defining functional effect of these technical approaches is that predictive analytics provides a predictive score (probability) for each individual (customer, employee, healthcare patient, product SKU, vehicle, component, machine, or other organizational unit) in order to determine, inform, or influence organizational processes that pertain across large numbers of individuals, such as in marketing, credit risk assessment, fraud detection, manufacturing, healthcare, and government operations including law enforcement.

Definition edit

Predictive analytics is a set of business intelligence (BI) technologies that uncovers relationships and patterns within large volumes of data that can be used to predict behavior and events. Unlike other BI technologies, predictive analytics is forward-looking, using past events to anticipate the future.[4] Predictive analytics statistical techniques include data modeling, machine learning, AI, deep learning algorithms and data mining. Often the unknown event of interest is in the future, but predictive analytics can be applied to any type of unknown whether it be in the past, present or future. For example, identifying suspects after a crime has been committed, or credit card fraud as it occurs.[5] The core of predictive analytics relies on capturing relationships between explanatory variables and the predicted variables from past occurrences, and exploiting them to predict the unknown outcome. It is important to note, however, that the accuracy and usability of results will depend greatly on the level of data analysis and the quality of assumptions.[1]

Predictive analytics is often defined as predicting at a more detailed level of granularity, i.e., generating predictive scores (probabilities) for each individual organizational element. This distinguishes it from forecasting. For example, "Predictive analytics—Technology that learns from experience (data) to predict the future behavior of individuals in order to drive better decisions."[2] In future industrial systems, the value of predictive analytics will be to predict and prevent potential issues to achieve near-zero break-down and further be integrated into prescriptive analytics for decision optimization.[6]

Analytical techniques edit

The approaches and techniques used to conduct predictive analytics can broadly be grouped into regression techniques and machine learning techniques.

Machine Learning edit

Machine learning can be defined as the ability of a machine to learn and then mimic human behavior that requires intelligence. This is accomplished through artificial intelligence, algorithms, and models.[7]

Autoregressive Integrated Moving Average (ARIMA) edit

ARIMA models are a common example of time series models. These models use autoregression, which means the model can be fitted with a regression software that will use machine learning to do most of the regression analysis and smoothing. ARIMA models are known to have no overall trend, but instead have a variation around the average that has a constant amplitude, resulting in statistically similar time patterns. Through this, variables are analyzed and data is filtered in order to better understand and predict future values.[8][9]

One example of an ARIMA method is exponential smoothing models. Exponential smoothing takes into account the difference in importance between older and newer data sets, as the more recent data is more accurate and valuable in predicting future values. In order to accomplish this, exponents are utilized to give newer data sets a larger weight in the calculations than the older sets.[10]

Time series models edit

Time series models are a subset of machine learning that utilize time series in order to understand and forecast data using past values. A time series is the sequence of a variable's value over equally spaced periods, such as years or quarters in business applications.[11] To accomplish this, the data must be smoothed, or the random variance of the data must be removed in order to reveal trends in the data. There are multiple ways to accomplish this.

Moving average edit

Single moving average methods utilize smaller and smaller numbered sets of past data to decrease error that is associated with taking a single average, making it a more accurate average than it would be to take the average of the entire data set.[12]

Centered moving average methods utilize the data found in the single moving average methods by taking an average of the median-numbered data set. However, as the median-numbered data set is difficult to calculate with even-numbered data sets, this method works better with odd-numbered data sets than even.[13]

Predictive modeling edit

Predictive Modeling is a statistical technique used to predict future behavior. It utilizes predictive models to analyze a relationship between a specific unit in a given sample and one or more features of the unit. The objective of these models is to assess the possibility that a unit in another sample will display the same pattern. Predictive model solutions can be considered a type of data mining technology. The models can analyze both historical and current data and generate a model in order to predict potential future outcomes.[14]

Regardless of the methodology used, in general, the process of creating predictive models involves the same steps. First, it is necessary to determine the project objectives and desired outcomes and translate these into predictive analytic objectives and tasks. Then, analyze the source data to determine the most appropriate data and model building approach (models are only as useful as the applicable data used to build them). Select and transform the data in order to create models. Create and test models in order to evaluate if they are valid and will be able to meet project goals and metrics. Apply the model's results to appropriate business processes (identifying patterns in the data doesn't necessarily mean a business will understand how to take advantage or capitalize on it). Afterward, manage and maintain models in order to standardize and improve performance (demand will increase for model management in order to meet new compliance regulations).[4]

Regression analysis edit

Generally, regression analysis uses structural data along with the past values of independent variables and the relationship between them and the dependent variable to form predictions.[8]

Linear regression edit

In linear regression, a plot is constructed with the previous values of the dependent variable plotted on the Y-axis and the independent variable that is being analyzed plotted on the X-axis. A regression line is then constructed by a statistical program representing the relationship between the independent and dependent variables which can be used to predict values of the dependent variable based only on the independent variable. With the regression line, the program also shows a slope intercept equation for the line which includes an addition for the error term of the regression, where the higher the value of the error term the less precise the regression model is. In order to decrease the value of the error term, other independent variables are introduced to the model, and similar analyses are performed on these independent variables.[8][15] Additionally, multiple linear regression (MLP) can be employed to address relationships involving multiple independent variables, offering a more comprehensive modeling approach.[16]

Applications edit

Analytical Review and Conditional Expectations in Auditing edit

An important aspect of auditing includes analytical review. In analytical review, the reasonableness of reported account balances being investigated is determined. Auditors accomplish this process through predictive modeling to form predictions called conditional expectations of the balances being audited using autoregressive integrated moving average (ARIMA) methods and general regression analysis methods,[8] specifically through the Statistical Technique for Analytical Review (STAR) methods.[17]

The ARIMA method for analytical review uses time-series analysis on past audited balances in order to create the conditional expectations. These conditional expectations are then compared to the actual balances reported on the audited account in order to determine how close the reported balances are to the expectations. If the reported balances are close to the expectations, the accounts are not audited further. If the reported balances are very different from the expectations, there is a higher possibility of a material accounting error and a further audit is conducted.[17]

Regression analysis methods are deployed in a similar way, except the regression model used assumes the availability of only one independent variable. The materiality of the independent variable contributing to the audited account balances are determined using past account balances along with present structural data.[8] Materiality is the importance of an independent variable in its relationship to the dependent variable.[18] In this case, the dependent variable is the account balance. Through this the most important independent variable is used in order to create the conditional expectation and, similar to the ARIMA method, the conditional expectation is then compared to the account balance reported and a decision is made based on the closeness of the two balances.[8]

The STAR methods operate using regression analysis, and fall into two methods. The first is the STAR monthly balance approach, and the conditional expectations made and regression analysis used are both tied to one month being audited. The other method is the STAR annual balance approach, which happens on a larger scale by basing the conditional expectations and regression analysis on one year being audited. Besides the difference in the time being audited, both methods operate the same, by comparing expected and reported balances to determine which accounts to further investigate.[17]

Furthermore, the incorporation of analytical procedures into auditing standards underscores the increasing necessity for auditors to modify these methodologies to suit particular datasets, which reflects the ever-changing nature of financial examination.[19]

Business Value edit

As we move into a world of technological advances where more and more data is created and stored digitally, businesses are looking for ways to take advantage of this opportunity and use this information to help generate profits. Predictive analytics can be used and is capable of providing many benefits to a wide range of businesses, including asset management firms, insurance companies, communication companies, and many other firms. Every company that uses project management to achieve its goals benefits immensely from predictive intelligence capabilities. In a study conducted by IDC Analyze the Future, Dan Vasset and Henry D. Morris explain how an asset management firm used predictive analytics to develop a better marketing campaign. They went from a mass marketing approach to a customer-centric approach, where instead of sending the same offer to each customer, they would personalize each offer based on their customer. Predictive analytics was used to predict the likelihood that a possible customer would accept a personalized offer. Due to the marketing campaign and predictive analytics, the firm's acceptance rate skyrocketed, with three times the number of people accepting their personalized offers.[20]

Technological advances in predictive analytics[21] have increased its value to firms. One technological advancement is more powerful computers, and with this predictive analytics has become able to create forecasts on large data sets much faster. With the increased computing power also comes more data and applications, meaning a wider array of inputs to use with predictive analytics. Another technological advance includes a more user-friendly interface, allowing a smaller barrier of entry and less extensive training required for employees to utilize the software and applications effectively. Due to these advancements, many more corporations are adopting predictive analytics and seeing the benefits in employee efficiency and effectiveness, as well as profits. [22] The percentage of projects that fail is fairly high—a whopping 70% of all projects fail to deliver what was promised to customers. The implementation of a management process, however, is shown to reduce the failure rate to 20% or below.[23]

Cash-flow Prediction edit

ARIMA univariate and multivariate models can be used in forecasting a company's future cash flows, with its equations and calculations based on the past values of certain factors contributing to cash flows. Using time-series analysis, the values of these factors can be analyzed and extrapolated to predict the future cash flows for a company. For the univariate models, past values of cash flows are the only factor used in the prediction. Meanwhile the multivariate models use multiple factors related to accrual data, such as operating income before depreciation.[24]

Another model used in predicting cash-flows was developed in 1998 and is known as the Dechow, Kothari, and Watts model, or DKW (1998). DKW (1998) uses regression analysis in order to determine the relationship between multiple variables and cash flows. Through this method, the model found that cash-flow changes and accruals are negatively related, specifically through current earnings, and using this relationship predicts the cash flows for the next period. The DKW (1998) model derives this relationship through the relationships of accruals and cash flows to accounts payable and receivable, along with inventory.[25]

Child protection edit

Some child welfare agencies have started using predictive analytics to flag high risk cases.[26] For example, in Hillsborough County, Florida, the child welfare agency's use of a predictive modeling tool has prevented abuse-related child deaths in the target population.[27]

Predicting outcomes of legal decisions edit

The predicting of the outcome of juridical decisions can be done by AI programs. These programs can be used as assistive tools for professions in this industry.[28][29]

Portfolio, product or economy-level prediction edit

Often the focus of analysis is not the consumer but the product, portfolio, firm, industry or even the economy. For example, a retailer might be interested in predicting store-level demand for inventory management purposes. Or the Federal Reserve Board might be interested in predicting the unemployment rate for the next year. These types of problems can be addressed by predictive analytics using time series techniques (see below). They can also be addressed via machine learning approaches which transform the original time series into a feature vector space, where the learning algorithm finds patterns that have predictive power.[30][31]

Underwriting edit

Many businesses have to account for risk exposure due to their different services and determine the costs needed to cover the risk. Predictive analytics can help underwrite these quantities by predicting the chances of illness, default, bankruptcy, etc. Predictive analytics can streamline the process of customer acquisition by predicting the future risk behavior of a customer using application level data. Predictive analytics in the form of credit scores have reduced the amount of time it takes for loan approvals, especially in the mortgage market. Proper predictive analytics can lead to proper pricing decisions, which can help mitigate future risk of default. Predictive analytics can be used to mitigate moral hazard and prevent accidents from occurring.[32]

Policing edit

Police agencies are now utilizing proactive strategies for crime prevention. Predictive analytics, which utilizes statistical tools to forecast crime patterns, provides new ways for police agencies to mobilize resources and reduce levels of crime.[33] With this predictive analytics of crime data, the police can better allocate the limited resources and manpower to prevent more crimes from happening. Directed patrol or problem-solving can be employed to protect crime hot spots, which exhibit crime densities much higher than the average in a city.[34]

Sports edit

Several firms have emerged specializing in predictive analytics in the field of professional sports for both teams and individuals.[35] While predicting human behavior creates a wide variance due to many factors that can change after predictions are made, including injuries, officiating, coaches decisions, weather, and more, the use of predictive analytics to project long term trends and performance is useful. Much of the field was started by the Moneyball concept of Billy Beane near the turn of the century, and now most professional sports teams employ their own analytics departments.

See also edit

References edit

  1. ^ a b "To predict or not to Predict". mccoy-partners.com. Retrieved 2022-05-05.
  2. ^ a b Siegel, Eric (2013). Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die (1st ed.). Wiley. ISBN 978-1-1183-5685-2.
  3. ^ Coker, Frank (2014). Pulse: Understanding the Vital Signs of Your Business (1st ed.). Bellevue, WA: Ambient Light Publishing. pp. 30, 39, 42, more. ISBN 978-0-9893086-0-1.
  4. ^ a b Eckerson, Wayne, W (2007). "Predictive Analytics. Extending the Value of Your Data Warehousing Investment" (PDF).{{cite web}}: CS1 maint: multiple names: authors list (link)
  5. ^ Finlay, Steven (2014). Predictive Analytics, Data Mining and Big Data. Myths, Misconceptions and Methods (1st ed.). Basingstoke: Palgrave Macmillan. p. 237. ISBN 978-1137379276.
  6. ^ Spalek, Seweryn (2019). Data Analytics in Project Management. Taylor & Francis Group, LLC.
  7. ^ "Machine learning, explained". MIT Sloan. Retrieved 2022-05-06.
  8. ^ a b c d e f Kinney, William R. (1978). "ARIMA and Regression in Analytical Review: An Empirical Test". The Accounting Review. 53 (1): 48–60. ISSN 0001-4826. JSTOR 245725.
  9. ^ "Introduction to ARIMA models". people.duke.edu. Retrieved 2022-05-06.
  10. ^ "6.4.3. What is Exponential Smoothing?". www.itl.nist.gov. Retrieved 2022-05-06.
  11. ^ "6.4.1. Definitions, Applications and Techniques". www.itl.nist.gov. Retrieved 2022-05-06.
  12. ^ "6.4.2.1. Single Moving Average". www.itl.nist.gov. Retrieved 2022-05-06.
  13. ^ "6.4.2.2. Centered Moving Average". www.itl.nist.gov. Retrieved 2022-05-06.
  14. ^ McCarthy, Richard; McCarthy, Mary; Ceccucci, Wendy (2021). Applying Predictive Analytics: Finding Value in Data. Springer.
  15. ^ "Linear Regression". www.stat.yale.edu. Retrieved 2022-05-06.
  16. ^ Li, Meng; Liu, Jiqiang; Yang, Yeping (2023-10-14). "Financial Data Quality Evaluation Method Based on Multiple Linear Regression". Future Internet. 15 (10): 338. doi:10.3390/fi15100338. ISSN 1999-5903.
  17. ^ a b c Kinney, William R.; Salamon, Gerald L. (1982). "Regression Analysis in Auditing: A Comparison of Alternative Investigation Rules". Journal of Accounting Research. 20 (2): 350–366. doi:10.2307/2490745. ISSN 0021-8456. JSTOR 2490745.
  18. ^ PricewaterhouseCoopers. "Materiality in audits". PwC. Retrieved 2022-05-03.
  19. ^ Wilson, Arlette C. (1991). "Use of Regression Models as Analytical Procedures: An Empirical Investigation of Effect of Data Dispersion on Auditor Decisions". Journal of Accounting, Auditing & Finance. 6 (3): 365–381. doi:10.1177/0148558X9100600307. ISSN 0148-558X. S2CID 154468768.
  20. ^ Vesset, Dan; Morris, Henry D. (June 2011). "The Business Value of Predictive Analytics" (PDF). White Paper: 1–3.
  21. ^ Clay, Halton. "Predictive Analytics: Definition, Model Types, and Uses". Investopedia. Retrieved 8 January 2024.
  22. ^ Stone, Paul (April 2007). "Introducing Predictive Analytics: Opportunities". All Days. doi:10.2118/106865-MS.
  23. ^ Team Stage (29 May 2021). "Project Management Statistics: Trends and Common Mistakes in 2023". TeamStage. Retrieved 8 January 2024.
  24. ^ Lorek, Kenneth S.; Willinger, G. Lee (1996). "A Multivariate Time-Series Prediction Model for Cash-Flow Data". The Accounting Review. 71 (1): 81–102. ISSN 0001-4826. JSTOR 248356.
  25. ^ Barth, Mary E.; Cram, Donald P.; Nelson, Karen K. (2001). "Accruals and the Prediction of Future Cash Flows". The Accounting Review. 76 (1): 27–58. doi:10.2308/accr.2001.76.1.27. ISSN 0001-4826. JSTOR 3068843.
  26. ^ Reform, Fostering (2016-02-03). "New Strategies Long Overdue on Measuring Child Welfare Risk". The Imprint. Retrieved 2022-05-03.
  27. ^ "Within Our Reach: A National Strategy to Eliminate Child Abuse and Neglect Fatalities" (PDF). Commission to Eliminate Child Abuse and Neglect Fatalities. 2016.
  28. ^ Aletras, Nikolaos; Tsarapatsanis, Dimitrios; Preoţiuc-Pietro, Daniel; Lampos, Vasileios (2016). "Predicting judicial decisions of the European Court of Human Rights: a Natural Language Processing perspective". PeerJ Computer Science. 2: e93. doi:10.7717/peerj-cs.93. S2CID 7630289.
  29. ^ UCL (2016-10-24). "AI predicts outcomes of human rights trials". UCL News. Retrieved 2022-05-03.
  30. ^ Dhar, Vasant (May 6, 2011). "Prediction in financial markets: The case for small disjuncts". ACM Transactions on Intelligent Systems and Technology. 2 (3): 1–22. doi:10.1145/1961189.1961191. ISSN 2157-6904. S2CID 11213278.
  31. ^ Dhar, Vasant; Chou, Dashin; Provost, Foster (2000-10-01). "Discovering Interesting Patterns for Investment Decision Making with GLOWER ◯-A Genetic Learner Overlaid with Entropy Reduction". Data Mining and Knowledge Discovery. 4 (4): 251–280. doi:10.1023/A:1009848126475. ISSN 1384-5810. S2CID 1982544.
  32. ^ Montserrat, Guillen; Cevolini, Alberto (November 2021). "Using Risk Analytics to Prevent Accidents Before They Occur – The Future of Insurance". Journal of Financial Transformation.
  33. ^ Towers, Sherry; Chen, Siqiao; Malik, Abish; Ebert, David (2018-10-24). Eisenbarth, Hedwig (ed.). "Factors influencing temporal patterns in crime in a large American city: A predictive analytics perspective". PLOS ONE. 13 (10): e0205151. Bibcode:2018PLoSO..1305151T. doi:10.1371/journal.pone.0205151. ISSN 1932-6203. PMC 6200217. PMID 30356321.
  34. ^ Fitzpatrick, Dylan J.; Gorr, Wilpen L.; Neill, Daniel B. (2019-01-13). "Keeping Score: Predictive Analytics in Policing". Annual Review of Criminology. 2 (1): 473–491. doi:10.1146/annurev-criminol-011518-024534. ISSN 2572-4568. S2CID 169389590.
  35. ^ "Free AI Sports Picks & Predictions for Today's Games". LEANS.AI. Retrieved 2023-07-08.

Further reading edit

predictive, analytics, this, article, needs, additional, citations, verification, please, help, improve, this, article, adding, citations, reliable, sources, unsourced, material, challenged, removed, find, sources, news, newspapers, books, scholar, jstor, june. 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 Predictive analytics news newspapers books scholar JSTOR June 2011 Learn how and when to remove this template message Predictive analytics is a form of business analytics applying machine learning to generate a predictive model for certain business applications As such it encompasses a variety of statistical techniques from predictive modeling and machine learning that analyze current and historical facts to make predictions about future or otherwise unknown events 1 It represents a major subset of machine learning applications in some contexts it is synonymous with machine learning 2 In business predictive models exploit patterns found in historical and transactional data to identify risks and opportunities Models capture relationships among many factors to allow assessment of risk or potential associated with a particular set of conditions guiding decision making for candidate transactions 3 The defining functional effect of these technical approaches is that predictive analytics provides a predictive score probability for each individual customer employee healthcare patient product SKU vehicle component machine or other organizational unit in order to determine inform or influence organizational processes that pertain across large numbers of individuals such as in marketing credit risk assessment fraud detection manufacturing healthcare and government operations including law enforcement Contents 1 Definition 2 Analytical techniques 2 1 Machine Learning 2 2 Autoregressive Integrated Moving Average ARIMA 2 3 Time series models 2 3 1 Moving average 2 4 Predictive modeling 2 5 Regression analysis 2 5 1 Linear regression 3 Applications 3 1 Analytical Review and Conditional Expectations in Auditing 3 2 Business Value 3 3 Cash flow Prediction 3 4 Child protection 3 5 Predicting outcomes of legal decisions 3 6 Portfolio product or economy level prediction 3 7 Underwriting 3 8 Policing 3 9 Sports 4 See also 5 References 6 Further readingDefinition editPredictive analytics is a set of business intelligence BI technologies that uncovers relationships and patterns within large volumes of data that can be used to predict behavior and events Unlike other BI technologies predictive analytics is forward looking using past events to anticipate the future 4 Predictive analytics statistical techniques include data modeling machine learning AI deep learning algorithms and data mining Often the unknown event of interest is in the future but predictive analytics can be applied to any type of unknown whether it be in the past present or future For example identifying suspects after a crime has been committed or credit card fraud as it occurs 5 The core of predictive analytics relies on capturing relationships between explanatory variables and the predicted variables from past occurrences and exploiting them to predict the unknown outcome It is important to note however that the accuracy and usability of results will depend greatly on the level of data analysis and the quality of assumptions 1 Predictive analytics is often defined as predicting at a more detailed level of granularity i e generating predictive scores probabilities for each individual organizational element This distinguishes it from forecasting For example Predictive analytics Technology that learns from experience data to predict the future behavior of individuals in order to drive better decisions 2 In future industrial systems the value of predictive analytics will be to predict and prevent potential issues to achieve near zero break down and further be integrated into prescriptive analytics for decision optimization 6 Analytical techniques editThe approaches and techniques used to conduct predictive analytics can broadly be grouped into regression techniques and machine learning techniques Machine Learning edit Main article Machine Learning Machine learning can be defined as the ability of a machine to learn and then mimic human behavior that requires intelligence This is accomplished through artificial intelligence algorithms and models 7 Autoregressive Integrated Moving Average ARIMA edit Main article ARIMA ARIMA models are a common example of time series models These models use autoregression which means the model can be fitted with a regression software that will use machine learning to do most of the regression analysis and smoothing ARIMA models are known to have no overall trend but instead have a variation around the average that has a constant amplitude resulting in statistically similar time patterns Through this variables are analyzed and data is filtered in order to better understand and predict future values 8 9 One example of an ARIMA method is exponential smoothing models Exponential smoothing takes into account the difference in importance between older and newer data sets as the more recent data is more accurate and valuable in predicting future values In order to accomplish this exponents are utilized to give newer data sets a larger weight in the calculations than the older sets 10 Time series models edit Main article Time series Time series models are a subset of machine learning that utilize time series in order to understand and forecast data using past values A time series is the sequence of a variable s value over equally spaced periods such as years or quarters in business applications 11 To accomplish this the data must be smoothed or the random variance of the data must be removed in order to reveal trends in the data There are multiple ways to accomplish this Moving average edit Main article Moving average Single moving average methods utilize smaller and smaller numbered sets of past data to decrease error that is associated with taking a single average making it a more accurate average than it would be to take the average of the entire data set 12 Centered moving average methods utilize the data found in the single moving average methods by taking an average of the median numbered data set However as the median numbered data set is difficult to calculate with even numbered data sets this method works better with odd numbered data sets than even 13 Predictive modeling edit Main article Predictive modeling Predictive Modeling is a statistical technique used to predict future behavior It utilizes predictive models to analyze a relationship between a specific unit in a given sample and one or more features of the unit The objective of these models is to assess the possibility that a unit in another sample will display the same pattern Predictive model solutions can be considered a type of data mining technology The models can analyze both historical and current data and generate a model in order to predict potential future outcomes 14 Regardless of the methodology used in general the process of creating predictive models involves the same steps First it is necessary to determine the project objectives and desired outcomes and translate these into predictive analytic objectives and tasks Then analyze the source data to determine the most appropriate data and model building approach models are only as useful as the applicable data used to build them Select and transform the data in order to create models Create and test models in order to evaluate if they are valid and will be able to meet project goals and metrics Apply the model s results to appropriate business processes identifying patterns in the data doesn t necessarily mean a business will understand how to take advantage or capitalize on it Afterward manage and maintain models in order to standardize and improve performance demand will increase for model management in order to meet new compliance regulations 4 Regression analysis edit Main article Regression analysis Generally regression analysis uses structural data along with the past values of independent variables and the relationship between them and the dependent variable to form predictions 8 Linear regression edit Main article Linear regression In linear regression a plot is constructed with the previous values of the dependent variable plotted on the Y axis and the independent variable that is being analyzed plotted on the X axis A regression line is then constructed by a statistical program representing the relationship between the independent and dependent variables which can be used to predict values of the dependent variable based only on the independent variable With the regression line the program also shows a slope intercept equation for the line which includes an addition for the error term of the regression where the higher the value of the error term the less precise the regression model is In order to decrease the value of the error term other independent variables are introduced to the model and similar analyses are performed on these independent variables 8 15 Additionally multiple linear regression MLP can be employed to address relationships involving multiple independent variables offering a more comprehensive modeling approach 16 Applications editAnalytical Review and Conditional Expectations in Auditing edit An important aspect of auditing includes analytical review In analytical review the reasonableness of reported account balances being investigated is determined Auditors accomplish this process through predictive modeling to form predictions called conditional expectations of the balances being audited using autoregressive integrated moving average ARIMA methods and general regression analysis methods 8 specifically through the Statistical Technique for Analytical Review STAR methods 17 The ARIMA method for analytical review uses time series analysis on past audited balances in order to create the conditional expectations These conditional expectations are then compared to the actual balances reported on the audited account in order to determine how close the reported balances are to the expectations If the reported balances are close to the expectations the accounts are not audited further If the reported balances are very different from the expectations there is a higher possibility of a material accounting error and a further audit is conducted 17 Regression analysis methods are deployed in a similar way except the regression model used assumes the availability of only one independent variable The materiality of the independent variable contributing to the audited account balances are determined using past account balances along with present structural data 8 Materiality is the importance of an independent variable in its relationship to the dependent variable 18 In this case the dependent variable is the account balance Through this the most important independent variable is used in order to create the conditional expectation and similar to the ARIMA method the conditional expectation is then compared to the account balance reported and a decision is made based on the closeness of the two balances 8 The STAR methods operate using regression analysis and fall into two methods The first is the STAR monthly balance approach and the conditional expectations made and regression analysis used are both tied to one month being audited The other method is the STAR annual balance approach which happens on a larger scale by basing the conditional expectations and regression analysis on one year being audited Besides the difference in the time being audited both methods operate the same by comparing expected and reported balances to determine which accounts to further investigate 17 Furthermore the incorporation of analytical procedures into auditing standards underscores the increasing necessity for auditors to modify these methodologies to suit particular datasets which reflects the ever changing nature of financial examination 19 Business Value edit As we move into a world of technological advances where more and more data is created and stored digitally businesses are looking for ways to take advantage of this opportunity and use this information to help generate profits Predictive analytics can be used and is capable of providing many benefits to a wide range of businesses including asset management firms insurance companies communication companies and many other firms Every company that uses project management to achieve its goals benefits immensely from predictive intelligence capabilities In a study conducted by IDC Analyze the Future Dan Vasset and Henry D Morris explain how an asset management firm used predictive analytics to develop a better marketing campaign They went from a mass marketing approach to a customer centric approach where instead of sending the same offer to each customer they would personalize each offer based on their customer Predictive analytics was used to predict the likelihood that a possible customer would accept a personalized offer Due to the marketing campaign and predictive analytics the firm s acceptance rate skyrocketed with three times the number of people accepting their personalized offers 20 Technological advances in predictive analytics 21 have increased its value to firms One technological advancement is more powerful computers and with this predictive analytics has become able to create forecasts on large data sets much faster With the increased computing power also comes more data and applications meaning a wider array of inputs to use with predictive analytics Another technological advance includes a more user friendly interface allowing a smaller barrier of entry and less extensive training required for employees to utilize the software and applications effectively Due to these advancements many more corporations are adopting predictive analytics and seeing the benefits in employee efficiency and effectiveness as well as profits 22 The percentage of projects that fail is fairly high a whopping 70 of all projects fail to deliver what was promised to customers The implementation of a management process however is shown to reduce the failure rate to 20 or below 23 Cash flow Prediction edit ARIMA univariate and multivariate models can be used in forecasting a company s future cash flows with its equations and calculations based on the past values of certain factors contributing to cash flows Using time series analysis the values of these factors can be analyzed and extrapolated to predict the future cash flows for a company For the univariate models past values of cash flows are the only factor used in the prediction Meanwhile the multivariate models use multiple factors related to accrual data such as operating income before depreciation 24 Another model used in predicting cash flows was developed in 1998 and is known as the Dechow Kothari and Watts model or DKW 1998 DKW 1998 uses regression analysis in order to determine the relationship between multiple variables and cash flows Through this method the model found that cash flow changes and accruals are negatively related specifically through current earnings and using this relationship predicts the cash flows for the next period The DKW 1998 model derives this relationship through the relationships of accruals and cash flows to accounts payable and receivable along with inventory 25 Child protection edit Some child welfare agencies have started using predictive analytics to flag high risk cases 26 For example in Hillsborough County Florida the child welfare agency s use of a predictive modeling tool has prevented abuse related child deaths in the target population 27 Predicting outcomes of legal decisions edit The predicting of the outcome of juridical decisions can be done by AI programs These programs can be used as assistive tools for professions in this industry 28 29 Portfolio product or economy level prediction edit Often the focus of analysis is not the consumer but the product portfolio firm industry or even the economy For example a retailer might be interested in predicting store level demand for inventory management purposes Or the Federal Reserve Board might be interested in predicting the unemployment rate for the next year These types of problems can be addressed by predictive analytics using time series techniques see below They can also be addressed via machine learning approaches which transform the original time series into a feature vector space where the learning algorithm finds patterns that have predictive power 30 31 Underwriting edit Many businesses have to account for risk exposure due to their different services and determine the costs needed to cover the risk Predictive analytics can help underwrite these quantities by predicting the chances of illness default bankruptcy etc Predictive analytics can streamline the process of customer acquisition by predicting the future risk behavior of a customer using application level data Predictive analytics in the form of credit scores have reduced the amount of time it takes for loan approvals especially in the mortgage market Proper predictive analytics can lead to proper pricing decisions which can help mitigate future risk of default Predictive analytics can be used to mitigate moral hazard and prevent accidents from occurring 32 Policing edit Main article Predictive policing Police agencies are now utilizing proactive strategies for crime prevention Predictive analytics which utilizes statistical tools to forecast crime patterns provides new ways for police agencies to mobilize resources and reduce levels of crime 33 With this predictive analytics of crime data the police can better allocate the limited resources and manpower to prevent more crimes from happening Directed patrol or problem solving can be employed to protect crime hot spots which exhibit crime densities much higher than the average in a city 34 Sports edit Several firms have emerged specializing in predictive analytics in the field of professional sports for both teams and individuals 35 While predicting human behavior creates a wide variance due to many factors that can change after predictions are made including injuries officiating coaches decisions weather and more the use of predictive analytics to project long term trends and performance is useful Much of the field was started by the Moneyball concept of Billy Beane near the turn of the century and now most professional sports teams employ their own analytics departments See also editActuarial science Artificial intelligence in healthcare Analytical procedures finance auditing Big data Computational sociology Criminal Reduction Utilising Statistical History Decision management Disease surveillance Learning analytics Odds algorithm Pattern recognition Predictive inference Predictive policing Social media analyticsReferences edit a b To predict or not to Predict mccoy partners com Retrieved 2022 05 05 a b Siegel Eric 2013 Predictive Analytics The Power to Predict Who Will Click Buy Lie or Die 1st ed Wiley ISBN 978 1 1183 5685 2 Coker Frank 2014 Pulse Understanding the Vital Signs of Your Business 1st ed Bellevue WA Ambient Light Publishing pp 30 39 42 more ISBN 978 0 9893086 0 1 a b Eckerson Wayne W 2007 Predictive Analytics Extending the Value of Your Data Warehousing Investment PDF a href Template Cite web html title Template Cite web cite web a CS1 maint multiple names authors list link Finlay Steven 2014 Predictive Analytics Data Mining and Big Data Myths Misconceptions and Methods 1st ed Basingstoke Palgrave Macmillan p 237 ISBN 978 1137379276 Spalek Seweryn 2019 Data Analytics in Project Management Taylor amp Francis Group LLC Machine learning explained MIT Sloan Retrieved 2022 05 06 a b c d e f Kinney William R 1978 ARIMA and Regression in Analytical Review An Empirical Test The Accounting Review 53 1 48 60 ISSN 0001 4826 JSTOR 245725 Introduction to ARIMA models people duke edu Retrieved 2022 05 06 6 4 3 What is Exponential Smoothing www itl nist gov Retrieved 2022 05 06 6 4 1 Definitions Applications and Techniques www itl nist gov Retrieved 2022 05 06 6 4 2 1 Single Moving Average www itl nist gov Retrieved 2022 05 06 6 4 2 2 Centered Moving Average www itl nist gov Retrieved 2022 05 06 McCarthy Richard McCarthy Mary Ceccucci Wendy 2021 Applying Predictive Analytics Finding Value in Data Springer Linear Regression www stat yale edu Retrieved 2022 05 06 Li Meng Liu Jiqiang Yang Yeping 2023 10 14 Financial Data Quality Evaluation Method Based on Multiple Linear Regression Future Internet 15 10 338 doi 10 3390 fi15100338 ISSN 1999 5903 a b c Kinney William R Salamon Gerald L 1982 Regression Analysis in Auditing A Comparison of Alternative Investigation Rules Journal of Accounting Research 20 2 350 366 doi 10 2307 2490745 ISSN 0021 8456 JSTOR 2490745 PricewaterhouseCoopers Materiality in audits PwC Retrieved 2022 05 03 Wilson Arlette C 1991 Use of Regression Models as Analytical Procedures An Empirical Investigation of Effect of Data Dispersion on Auditor Decisions Journal of Accounting Auditing amp Finance 6 3 365 381 doi 10 1177 0148558X9100600307 ISSN 0148 558X S2CID 154468768 Vesset Dan Morris Henry D June 2011 The Business Value of Predictive Analytics PDF White Paper 1 3 Clay Halton Predictive Analytics Definition Model Types and Uses Investopedia Retrieved 8 January 2024 Stone Paul April 2007 Introducing Predictive Analytics Opportunities All Days doi 10 2118 106865 MS Team Stage 29 May 2021 Project Management Statistics Trends and Common Mistakes in 2023 TeamStage Retrieved 8 January 2024 Lorek Kenneth S Willinger G Lee 1996 A Multivariate Time Series Prediction Model for Cash Flow Data The Accounting Review 71 1 81 102 ISSN 0001 4826 JSTOR 248356 Barth Mary E Cram Donald P Nelson Karen K 2001 Accruals and the Prediction of Future Cash Flows The Accounting Review 76 1 27 58 doi 10 2308 accr 2001 76 1 27 ISSN 0001 4826 JSTOR 3068843 Reform Fostering 2016 02 03 New Strategies Long Overdue on Measuring Child Welfare Risk The Imprint Retrieved 2022 05 03 Within Our Reach A National Strategy to Eliminate Child Abuse and Neglect Fatalities PDF Commission to Eliminate Child Abuse and Neglect Fatalities 2016 Aletras Nikolaos Tsarapatsanis Dimitrios Preoţiuc Pietro Daniel Lampos Vasileios 2016 Predicting judicial decisions of the European Court of Human Rights a Natural Language Processing perspective PeerJ Computer Science 2 e93 doi 10 7717 peerj cs 93 S2CID 7630289 UCL 2016 10 24 AI predicts outcomes of human rights trials UCL News Retrieved 2022 05 03 Dhar Vasant May 6 2011 Prediction in financial markets The case for small disjuncts ACM Transactions on Intelligent Systems and Technology 2 3 1 22 doi 10 1145 1961189 1961191 ISSN 2157 6904 S2CID 11213278 Dhar Vasant Chou Dashin Provost Foster 2000 10 01 Discovering Interesting Patterns for Investment Decision Making with GLOWER A Genetic Learner Overlaid with Entropy Reduction Data Mining and Knowledge Discovery 4 4 251 280 doi 10 1023 A 1009848126475 ISSN 1384 5810 S2CID 1982544 Montserrat Guillen Cevolini Alberto November 2021 Using Risk Analytics to Prevent Accidents Before They Occur The Future of Insurance Journal of Financial Transformation Towers Sherry Chen Siqiao Malik Abish Ebert David 2018 10 24 Eisenbarth Hedwig ed Factors influencing temporal patterns in crime in a large American city A predictive analytics perspective PLOS ONE 13 10 e0205151 Bibcode 2018PLoSO 1305151T doi 10 1371 journal pone 0205151 ISSN 1932 6203 PMC 6200217 PMID 30356321 Fitzpatrick Dylan J Gorr Wilpen L Neill Daniel B 2019 01 13 Keeping Score Predictive Analytics in Policing Annual Review of Criminology 2 1 473 491 doi 10 1146 annurev criminol 011518 024534 ISSN 2572 4568 S2CID 169389590 Free AI Sports Picks amp Predictions for Today s Games LEANS AI Retrieved 2023 07 08 Further reading editAgresti Alan 2002 Categorical Data Analysis Hoboken John Wiley amp Sons ISBN 0 471 36093 7 Coggeshall Stephen Davies John Jones Roger Schutzer Daniel 1995 Intelligent Security Systems In Freedman Roy S Flein Robert A Lederman Jess eds Artificial Intelligence in the Capital Markets Chicago Irwin ISBN 1 55738 811 3 Coker Frank 2014 Pulse Understanding the Vital Signs of Your Business Bellevue WA Ambient Light Publishing ISBN 978 0 9893086 0 1 Devroye L Gyorfi L Lugosi G 1996 A Probabilistic Theory of Pattern Recognition New York Springer Verlag ISBN 9781461207115 via Google Books Enders Walter 2004 Applied Time Series Econometrics Hoboken John Wiley amp Sons ISBN 0 521 83919 X Finlay Steven 2014 Predictive Analytics Data Mining and Big Data Myths Misconceptions and Methods Basingstoke Palgrave Macmillan ISBN 978 1 137 37927 6 Greene William 2012 Econometric Analysis 7th ed London Prentice Hall ISBN 978 0 13 139538 1 Guidere Mathieu Howard N Argamon Sh 2009 Rich Language Analysis for Counterterrorism Berlin London New York Springer Verlag ISBN 978 3 642 01140 5 Mitchell Tom 1997 Machine Learning New York McGraw Hill ISBN 0 07 042807 7 Siegel Eric 2016 Predictive Analytics The Power to Predict Who Will Click Buy Lie or Die John Wiley amp Sons ISBN 978 1119145677 Tukey John 1977 Exploratory Data Analysis New York Addison Wesley ISBN 0 201 07616 0 Retrieved from https en wikipedia org w index php title Predictive analytics amp oldid 1204041551, wikipedia, wiki, book, books, library,

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