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Predictive modelling

Predictive modelling uses statistics to predict outcomes.[1] Most often the event one wants to predict is in the future, but predictive modelling can be applied to any type of unknown event, regardless of when it occurred. For example, predictive models are often used to detect crimes and identify suspects, after the crime has taken place.[2]

In many cases, the model is chosen on the basis of detection theory to try to guess the probability of an outcome given a set amount of input data, for example given an email determining how likely that it is spam.

Models can use one or more classifiers in trying to determine the probability of a set of data belonging to another set. For example, a model might be used to determine whether an email is spam or "ham" (non-spam).

Depending on definitional boundaries, predictive modelling is synonymous with, or largely overlapping with, the field of machine learning, as it is more commonly referred to in academic or research and development contexts. When deployed commercially, predictive modelling is often referred to as predictive analytics.

Predictive modelling is often contrasted with causal modelling/analysis. In the former, one may be entirely satisfied to make use of indicators of, or proxies for, the outcome of interest. In the latter, one seeks to determine true cause-and-effect relationships. This distinction has given rise to a burgeoning literature in the fields of research methods and statistics and to the common statement that "correlation does not imply causation".

Models edit

Nearly any statistical model can be used for prediction purposes. Broadly speaking, there are two classes of predictive models: parametric and non-parametric. A third class, semi-parametric models, includes features of both. Parametric models make "specific assumptions with regard to one or more of the population parameters that characterize the underlying distribution(s)".[3] Non-parametric models "typically involve fewer assumptions of structure and distributional form [than parametric models] but usually contain strong assumptions about independencies".[4]

Applications edit

Uplift modelling edit

Uplift modelling is a technique for modelling the change in probability caused by an action. Typically this is a marketing action such as an offer to buy a product, to use a product more or to re-sign a contract. For example, in a retention campaign you wish to predict the change in probability that a customer will remain a customer if they are contacted. A model of the change in probability allows the retention campaign to be targeted at those customers on whom the change in probability will be beneficial. This allows the retention programme to avoid triggering unnecessary churn or customer attrition without wasting money contacting people who would act anyway.

Archaeology edit

Predictive modelling in archaeology gets its foundations from Gordon Willey's mid-fifties work in the Virú Valley of Peru.[5] Complete, intensive surveys were performed then covariability between cultural remains and natural features such as slope and vegetation were determined. Development of quantitative methods and a greater availability of applicable data led to growth of the discipline in the 1960s and by the late 1980s, substantial progress had been made by major land managers worldwide.

Generally, predictive modelling in archaeology is establishing statistically valid causal or covariable relationships between natural proxies such as soil types, elevation, slope, vegetation, proximity to water, geology, geomorphology, etc., and the presence of archaeological features. Through analysis of these quantifiable attributes from land that has undergone archaeological survey, sometimes the "archaeological sensitivity" of unsurveyed areas can be anticipated based on the natural proxies in those areas. Large land managers in the United States, such as the Bureau of Land Management (BLM), the Department of Defense (DOD),[6][7] and numerous highway and parks agencies, have successfully employed this strategy. By using predictive modelling in their cultural resource management plans, they are capable of making more informed decisions when planning for activities that have the potential to require ground disturbance and subsequently affect archaeological sites.

Customer relationship management edit

Predictive modelling is used extensively in analytical customer relationship management and data mining to produce customer-level models that describe the likelihood that a customer will take a particular action. The actions are usually sales, marketing and customer retention related.

For example, a large consumer organization such as a mobile telecommunications operator will have a set of predictive models for product cross-sell, product deep-sell (or upselling) and churn. It is also now more common for such an organization to have a model of savability using an uplift model. This predicts the likelihood that a customer can be saved at the end of a contract period (the change in churn probability) as opposed to the standard churn prediction model.

Auto insurance edit

Predictive modelling is utilised in vehicle insurance to assign risk of incidents to policy holders from information obtained from policy holders. This is extensively employed in usage-based insurance solutions where predictive models utilise telemetry-based data to build a model of predictive risk for claim likelihood.[citation needed] Black-box auto insurance predictive models utilise GPS or accelerometer sensor input only.[citation needed] Some models include a wide range of predictive input beyond basic telemetry including advanced driving behaviour, independent crash records, road history, and user profiles to provide improved risk models.[citation needed]

Health care edit

In 2009 Parkland Health & Hospital System began analyzing electronic medical records in order to use predictive modeling to help identify patients at high risk of readmission. Initially, the hospital focused on patients with congestive heart failure, but the program has expanded to include patients with diabetes, acute myocardial infarction, and pneumonia.[8]

In 2018, Banerjee et al.[9] proposed a deep learning model for estimating short-term life expectancy (>3 months) of the patients by analyzing free-text clinical notes in the electronic medical record, while maintaining the temporal visit sequence. The model was trained on a large dataset (10,293 patients) and validated on a separated dataset (1818 patients). It achieved an area under the ROC (Receiver Operating Characteristic) curve of 0.89. To provide explain-ability, they developed an interactive graphical tool that may improve physician understanding of the basis for the model's predictions. The high accuracy and explain-ability of the PPES-Met model may enable the model to be used as a decision support tool to personalize metastatic cancer treatment and provide valuable assistance to physicians.

The first clinical prediction model reporting guidelines were published in 2015 (Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD)), and have since been updated [10].

Predictive modelling has been used to estimate surgery duration.

Algorithmic trading edit

Predictive modeling in trading is a modeling process wherein the probability of an outcome is predicted using a set of predictor variables. Predictive models can be built for different assets like stocks, futures, currencies, commodities etc.[citation needed] Predictive modeling is still extensively used by trading firms to devise strategies and trade. It utilizes mathematically advanced software to evaluate indicators on price, volume, open interest and other historical data, to discover repeatable patterns.[11]

Lead tracking systems edit

Predictive modelling gives lead generators a head start by forecasting data-driven outcomes for each potential campaign. This method saves time and exposes potential blind spots to help client make smarter decisions.[12]

Notable failures of predictive modeling edit

Although not widely discussed by the mainstream predictive modeling community, predictive modeling is a methodology that has been widely used in the financial industry in the past and some of the major failures contributed to the financial crisis of 2007–2008. These failures exemplify the danger of relying exclusively on models that are essentially backward looking in nature. The following examples are by no mean a complete list:

  1. Bond rating. S&P, Moody's and Fitch quantify the probability of default of bonds with discrete variables called rating. The rating can take on discrete values from AAA down to D. The rating is a predictor of the risk of default based on a variety of variables associated with the borrower and historical macroeconomic data. The rating agencies failed with their ratings on the US$600 billion mortgage backed Collateralized Debt Obligation (CDO) market. Almost the entire AAA sector (and the super-AAA sector, a new rating the rating agencies provided to represent super safe investment) of the CDO market defaulted or severely downgraded during 2008, many of which obtained their ratings less than just a year previously.[citation needed]
  2. So far, no statistical models that attempt to predict equity market prices based on historical data are considered to consistently make correct predictions over the long term. One particularly memorable failure is that of Long Term Capital Management, a fund that hired highly qualified analysts, including a Nobel Memorial Prize in Economic Sciences winner, to develop a sophisticated statistical model that predicted the price spreads between different securities. The models produced impressive profits until a major debacle that caused the then Federal Reserve chairman Alan Greenspan to step in to broker a rescue plan by the Wall Street broker dealers in order to prevent a meltdown of the bond market.[citation needed]

Possible fundamental limitations of predictive models based on data fitting edit

History cannot always accurately predict the future. Using relations derived from historical data to predict the future implicitly assumes there are certain lasting conditions or constants in a complex system. This almost always leads to some imprecision when the system involves people.[citation needed]

Unknown unknowns are an issue. In all data collection, the collector first defines the set of variables for which data is collected. However, no matter how extensive the collector considers his/her selection of the variables, there is always the possibility of new variables that have not been considered or even defined, yet are critical to the outcome.[citation needed]

Algorithms can be defeated adversarially. After an algorithm becomes an accepted standard of measurement, it can be taken advantage of by people who understand the algorithm and have the incentive to fool or manipulate the outcome. This is what happened to the CDO rating described above. The CDO dealers actively fulfilled the rating agencies' input to reach an AAA or super-AAA on the CDO they were issuing, by cleverly manipulating variables that were "unknown" to the rating agencies' "sophisticated" models.[citation needed]

See also edit

References edit

  1. ^ Geisser, Seymour (1993). Predictive Inference: An Introduction. Chapman & Hall. p. [page needed]. ISBN 978-0-412-03471-8.
  2. ^ Finlay, Steven (2014). Predictive Analytics, Data Mining and Big Data. Myths, Misconceptions and Methods (1st ed.). Palgrave Macmillan. p. 237. ISBN 978-1137379276.
  3. ^ Sheskin, David J. (April 27, 2011). Handbook of Parametric and Nonparametric Statistical Procedures. CRC Press. p. 109. ISBN 978-1439858011.
  4. ^ Cox, D. R. (2006). Principles of Statistical Inference. Cambridge University Press. p. 2.
  5. ^ Willey, Gordon R. (1953), "Prehistoric Settlement Patterns in the Virú Valley, Peru", Bulletin 155. Bureau of American Ethnology
  6. ^ Heidelberg, Kurt, et al. "An Evaluation of the Archaeological Sample Survey Program at the Nevada Test and Training Range", SRI Technical Report 02-16, 2002
  7. ^ Jeffrey H. Altschul, Lynne Sebastian, and Kurt Heidelberg, "Predictive Modeling in the Military: Similar Goals, Divergent Paths", Preservation Research Series 1, SRI Foundation, 2004
  8. ^ "Hospital Uses Data Analytics and Predictive Modeling To Identify and Allocate Scarce Resources to High-Risk Patients, Leading to Fewer Readmissions". Agency for Healthcare Research and Quality. 2014-01-29. Retrieved 2019-03-19.
  9. ^ Banerjee, Imon; et al. (2018-07-03). "Probabilistic Prognostic Estimates of Survival in Metastatic Cancer Patients (PPES-Met) Utilizing Free-Text Clinical Narratives". Scientific Reports. 8 (10037 (2018)): 10037. Bibcode:2018NatSR...810037B. doi:10.1038/s41598-018-27946-5. PMC 6030075. PMID 29968730.
  10. ^ Collins, Gary; et al. (2024-04-16). "TRIPOD+AI statement: updated guidance for reporting clinical prediction models that use regression or machine learning methods". BMJ. doi:10.1136/bmj-2023-078378. PMC 11019967. PMID 38626948.
  11. ^ "Predictive-Model Based Trading Systems, Part 1 - System Trader Success". System Trader Success. 2013-07-22. Retrieved 2016-11-25.
  12. ^ "Predictive Modeling for Call Tracking". Phonexa. 2019-08-22. Retrieved 2021-02-25.

Further reading edit

  • Clarke, Bertrand S.; Clarke, Jennifer L. (2018), Predictive Statistics, Cambridge University Press
  • Iglesias, Pilar; Sandoval, Mônica C.; Pereira, Carlos Alberto de Bragança (1993), "Predictive likelihood in finite populations", Brazilian Journal of Probability and Statistics, 7 (1): 65–82, JSTOR 43600831
  • Kelleher, John D.; Mac Namee, Brian; D'Arcy, Aoife (2015), Fundamentals of Machine Learning for Predictive Data Analytics: Algorithms, worked Examples and Case Studies, MIT Press
  • Kuhn, Max; Johnson, Kjell (2013), Applied Predictive Modeling, Springer
  • Shmueli, G. (2010), "To explain or to predict?", Statistical Science, 25 (3): 289–310, arXiv:1101.0891, doi:10.1214/10-STS330, S2CID 15900983

predictive, modelling, neutrality, this, article, disputed, relevant, discussion, found, talk, page, please, remove, this, message, until, conditions, april, 2016, learn, when, remove, this, template, message, uses, statistics, predict, outcomes, most, often, . The neutrality of this article is disputed Relevant discussion may be found on the talk page Please do not remove this message until conditions to do so are met April 2016 Learn how and when to remove this template message Predictive modelling uses statistics to predict outcomes 1 Most often the event one wants to predict is in the future but predictive modelling can be applied to any type of unknown event regardless of when it occurred For example predictive models are often used to detect crimes and identify suspects after the crime has taken place 2 In many cases the model is chosen on the basis of detection theory to try to guess the probability of an outcome given a set amount of input data for example given an email determining how likely that it is spam Models can use one or more classifiers in trying to determine the probability of a set of data belonging to another set For example a model might be used to determine whether an email is spam or ham non spam Depending on definitional boundaries predictive modelling is synonymous with or largely overlapping with the field of machine learning as it is more commonly referred to in academic or research and development contexts When deployed commercially predictive modelling is often referred to as predictive analytics Predictive modelling is often contrasted with causal modelling analysis In the former one may be entirely satisfied to make use of indicators of or proxies for the outcome of interest In the latter one seeks to determine true cause and effect relationships This distinction has given rise to a burgeoning literature in the fields of research methods and statistics and to the common statement that correlation does not imply causation Contents 1 Models 2 Applications 2 1 Uplift modelling 2 2 Archaeology 2 3 Customer relationship management 2 4 Auto insurance 2 5 Health care 2 6 Algorithmic trading 2 7 Lead tracking systems 2 8 Notable failures of predictive modeling 3 Possible fundamental limitations of predictive models based on data fitting 4 See also 5 References 6 Further readingModels editNearly any statistical model can be used for prediction purposes Broadly speaking there are two classes of predictive models parametric and non parametric A third class semi parametric models includes features of both Parametric models make specific assumptions with regard to one or more of the population parameters that characterize the underlying distribution s 3 Non parametric models typically involve fewer assumptions of structure and distributional form than parametric models but usually contain strong assumptions about independencies 4 Applications editUplift modelling edit Uplift modelling is a technique for modelling the change in probability caused by an action Typically this is a marketing action such as an offer to buy a product to use a product more or to re sign a contract For example in a retention campaign you wish to predict the change in probability that a customer will remain a customer if they are contacted A model of the change in probability allows the retention campaign to be targeted at those customers on whom the change in probability will be beneficial This allows the retention programme to avoid triggering unnecessary churn or customer attrition without wasting money contacting people who would act anyway Archaeology edit Predictive modelling in archaeology gets its foundations from Gordon Willey s mid fifties work in the Viru Valley of Peru 5 Complete intensive surveys were performed then covariability between cultural remains and natural features such as slope and vegetation were determined Development of quantitative methods and a greater availability of applicable data led to growth of the discipline in the 1960s and by the late 1980s substantial progress had been made by major land managers worldwide Generally predictive modelling in archaeology is establishing statistically valid causal or covariable relationships between natural proxies such as soil types elevation slope vegetation proximity to water geology geomorphology etc and the presence of archaeological features Through analysis of these quantifiable attributes from land that has undergone archaeological survey sometimes the archaeological sensitivity of unsurveyed areas can be anticipated based on the natural proxies in those areas Large land managers in the United States such as the Bureau of Land Management BLM the Department of Defense DOD 6 7 and numerous highway and parks agencies have successfully employed this strategy By using predictive modelling in their cultural resource management plans they are capable of making more informed decisions when planning for activities that have the potential to require ground disturbance and subsequently affect archaeological sites Customer relationship management edit Predictive modelling is used extensively in analytical customer relationship management and data mining to produce customer level models that describe the likelihood that a customer will take a particular action The actions are usually sales marketing and customer retention related For example a large consumer organization such as a mobile telecommunications operator will have a set of predictive models for product cross sell product deep sell or upselling and churn It is also now more common for such an organization to have a model of savability using an uplift model This predicts the likelihood that a customer can be saved at the end of a contract period the change in churn probability as opposed to the standard churn prediction model Auto insurance edit Predictive modelling is utilised in vehicle insurance to assign risk of incidents to policy holders from information obtained from policy holders This is extensively employed in usage based insurance solutions where predictive models utilise telemetry based data to build a model of predictive risk for claim likelihood citation needed Black box auto insurance predictive models utilise GPS or accelerometer sensor input only citation needed Some models include a wide range of predictive input beyond basic telemetry including advanced driving behaviour independent crash records road history and user profiles to provide improved risk models citation needed Health care edit In 2009 Parkland Health amp Hospital System began analyzing electronic medical records in order to use predictive modeling to help identify patients at high risk of readmission Initially the hospital focused on patients with congestive heart failure but the program has expanded to include patients with diabetes acute myocardial infarction and pneumonia 8 In 2018 Banerjee et al 9 proposed a deep learning model for estimating short term life expectancy gt 3 months of the patients by analyzing free text clinical notes in the electronic medical record while maintaining the temporal visit sequence The model was trained on a large dataset 10 293 patients and validated on a separated dataset 1818 patients It achieved an area under the ROC Receiver Operating Characteristic curve of 0 89 To provide explain ability they developed an interactive graphical tool that may improve physician understanding of the basis for the model s predictions The high accuracy and explain ability of the PPES Met model may enable the model to be used as a decision support tool to personalize metastatic cancer treatment and provide valuable assistance to physicians The first clinical prediction model reporting guidelines were published in 2015 Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis TRIPOD and have since been updated 10 Predictive modelling has been used to estimate surgery duration Algorithmic trading edit Predictive modeling in trading is a modeling process wherein the probability of an outcome is predicted using a set of predictor variables Predictive models can be built for different assets like stocks futures currencies commodities etc citation needed Predictive modeling is still extensively used by trading firms to devise strategies and trade It utilizes mathematically advanced software to evaluate indicators on price volume open interest and other historical data to discover repeatable patterns 11 Lead tracking systems edit See also behavioral analytics Predictive modelling gives lead generators a head start by forecasting data driven outcomes for each potential campaign This method saves time and exposes potential blind spots to help client make smarter decisions 12 Notable failures of predictive modeling edit Although not widely discussed by the mainstream predictive modeling community predictive modeling is a methodology that has been widely used in the financial industry in the past and some of the major failures contributed to the financial crisis of 2007 2008 These failures exemplify the danger of relying exclusively on models that are essentially backward looking in nature The following examples are by no mean a complete list Bond rating S amp P Moody s and Fitch quantify the probability of default of bonds with discrete variables called rating The rating can take on discrete values from AAA down to D The rating is a predictor of the risk of default based on a variety of variables associated with the borrower and historical macroeconomic data The rating agencies failed with their ratings on the US 600 billion mortgage backed Collateralized Debt Obligation CDO market Almost the entire AAA sector and the super AAA sector a new rating the rating agencies provided to represent super safe investment of the CDO market defaulted or severely downgraded during 2008 many of which obtained their ratings less than just a year previously citation needed So far no statistical models that attempt to predict equity market prices based on historical data are considered to consistently make correct predictions over the long term One particularly memorable failure is that of Long Term Capital Management a fund that hired highly qualified analysts including a Nobel Memorial Prize in Economic Sciences winner to develop a sophisticated statistical model that predicted the price spreads between different securities The models produced impressive profits until a major debacle that caused the then Federal Reserve chairman Alan Greenspan to step in to broker a rescue plan by the Wall Street broker dealers in order to prevent a meltdown of the bond market citation needed Possible fundamental limitations of predictive models based on data fitting editHistory cannot always accurately predict the future Using relations derived from historical data to predict the future implicitly assumes there are certain lasting conditions or constants in a complex system This almost always leads to some imprecision when the system involves people citation needed Unknown unknowns are an issue In all data collection the collector first defines the set of variables for which data is collected However no matter how extensive the collector considers his her selection of the variables there is always the possibility of new variables that have not been considered or even defined yet are critical to the outcome citation needed Algorithms can be defeated adversarially After an algorithm becomes an accepted standard of measurement it can be taken advantage of by people who understand the algorithm and have the incentive to fool or manipulate the outcome This is what happened to the CDO rating described above The CDO dealers actively fulfilled the rating agencies input to reach an AAA or super AAA on the CDO they were issuing by cleverly manipulating variables that were unknown to the rating agencies sophisticated models citation needed See also editCalibration statistics Prediction interval Predictive analytics Predictive inference Statistical learning theory Statistical modelReferences edit Geisser Seymour 1993 Predictive Inference An Introduction Chapman amp Hall p page needed ISBN 978 0 412 03471 8 Finlay Steven 2014 Predictive Analytics Data Mining and Big Data Myths Misconceptions and Methods 1st ed Palgrave Macmillan p 237 ISBN 978 1137379276 Sheskin David J April 27 2011 Handbook of Parametric and Nonparametric Statistical Procedures CRC Press p 109 ISBN 978 1439858011 Cox D R 2006 Principles of Statistical Inference Cambridge University Press p 2 Willey Gordon R 1953 Prehistoric Settlement Patterns in the Viru Valley Peru Bulletin 155 Bureau of American Ethnology Heidelberg Kurt et al An Evaluation of the Archaeological Sample Survey Program at the Nevada Test and Training Range SRI Technical Report 02 16 2002 Jeffrey H Altschul Lynne Sebastian and Kurt Heidelberg Predictive Modeling in the Military Similar Goals Divergent Paths Preservation Research Series 1 SRI Foundation 2004 Hospital Uses Data Analytics and Predictive Modeling To Identify and Allocate Scarce Resources to High Risk Patients Leading to Fewer Readmissions Agency for Healthcare Research and Quality 2014 01 29 Retrieved 2019 03 19 Banerjee Imon et al 2018 07 03 Probabilistic Prognostic Estimates of Survival in Metastatic Cancer Patients PPES Met Utilizing Free Text Clinical Narratives Scientific Reports 8 10037 2018 10037 Bibcode 2018NatSR 810037B doi 10 1038 s41598 018 27946 5 PMC 6030075 PMID 29968730 Collins Gary et al 2024 04 16 TRIPOD AI statement updated guidance for reporting clinical prediction models that use regression or machine learning methods BMJ doi 10 1136 bmj 2023 078378 PMC 11019967 PMID 38626948 Predictive Model Based Trading Systems Part 1 System Trader Success System Trader Success 2013 07 22 Retrieved 2016 11 25 Predictive Modeling for Call Tracking Phonexa 2019 08 22 Retrieved 2021 02 25 Further reading editClarke Bertrand S Clarke Jennifer L 2018 Predictive Statistics Cambridge University Press Iglesias Pilar Sandoval Monica C Pereira Carlos Alberto de Braganca 1993 Predictive likelihood in finite populations Brazilian Journal of Probability and Statistics 7 1 65 82 JSTOR 43600831 Kelleher John D Mac Namee Brian D Arcy Aoife 2015 Fundamentals of Machine Learning for Predictive Data Analytics Algorithms worked Examples and Case Studies MIT Press Kuhn Max Johnson Kjell 2013 Applied Predictive Modeling Springer Shmueli G 2010 To explain or to predict Statistical Science 25 3 289 310 arXiv 1101 0891 doi 10 1214 10 STS330 S2CID 15900983 Retrieved from https en wikipedia org w index php title Predictive modelling amp oldid 1220267912, wikipedia, wiki, book, books, library,

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