Title
Predictive analytics in information systems research
Abstract
This research essay highlights the need to integrate predictive analytics into information systems research and shows several concrete ways in which this goal can be accomplished. Predictive analytics include empirical methods (statistical and other) that generate data predictions as well as methods for assessing predictive power. Predictive analytics not only assist in creating practically useful models, they also play an important role alongside explanatory modeling in theory building and theory testing. We describe six roles for predictive analytics: new theory generation, measurement development, comparison of competing theories, improvement of existing models, relevance assessment, and assessment of the predictability of empirical phenomena. Despite the importance of predictive analytics, we find that they are rare in the empirical IS literature. Extant IS literature relies nearly exclusively on explanatory statistical modeling, where statistical inference is used to test and evaluate the explanatory power of underlying causal models, and predictive power is assumed to follow automatically from the explanatory model. However, explanatory power does not imply predictive power and thus predictive analytics are necessary for assessing predictive power and for building empirical models that predict well. To show that predictive analytics and explanatory statistical modeling are fundamentally disparate, we show that they are different in each step of the modeling process. These differences translate into different final models, so that a pure explanatory statistical model is best tuned for testing causal hypotheses and a pure predictive model is best in terms of predictive power. We convert a well-known explanatory paper on TAM to a predictive context to illustrate these differences and show how predictive analytics can add theoretical and practical value to IS research.
Year
DOI
Venue
2011
10.2307/23042796
MIS Quarterly
Keywords
Field
DocType
predictive power,pure explanatory statistical model,explanatory statistical modeling,well-known explanatory paper,explanatory modeling,predictive analytics,predictive context,explanatory model,information systems research,pure predictive model,explanatory power,empirical model,causal explanation,causal models,prediction model,data mining,empirical method,prediction,statistical inference,statistical model,information systems
Data science,Predictive power,Computer science,Predictive analytics,Concept drift,Explanatory power,Statistical inference,Explanatory model,Empirical research,Causal model
Journal
Volume
Issue
ISSN
35
3
0276-7783
Citations 
PageRank 
References 
114
3.82
35
Authors
2
Search Limit
100114
Name
Order
Citations
PageRank
Galit Shmueli126523.00
Otto R. Koppius221512.29