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Analytical Problem Solving Based on Causal, Correlational and Deductive Models

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Version 2 2022-03-10, 21:00
Version 1 2022-01-04, 16:20
journal contribution
posted on 2022-03-10, 21:00 authored by Jeroen de Mast, Stefan H. Steiner, Wim P. M. Nuijten, Daniel Kapitan

Many approaches for solving problems in business and industry are based on analytics and statistical modeling. Analytical problem solving is driven by the modeling of relationships between dependent (Y) and independent (X) variables, and we discuss three frameworks for modeling such relationships: cause-and-effect modeling, popular in applied statistics and beyond, correlational predictive modeling, popular in machine learning, and deductive (first-principles) modeling, popular in business analytics and operations research. We aim to explain the differences between these types of models, and flesh out the implications of these differences for study design, for discovering potential X/Y relationships, and for the types of solution patterns that each type of modeling could support. We use our account to clarify the popular descriptive-diagnostic-predictive-prescriptive analytics framework, but extend it to offer a more complete model of the process of analytical problem solving, reflecting the essential differences between causal, correlational, and deductive models.

Funding

Stefan Steiner acknowledges support from the Natural Sciences and Engineering Research Council (NSERC) of Canada Discovery grant program (grant # 105240).

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