Algorithm Supported Induction for Building Theory: How Can We Use Prediction Models to Theorize?
成果类型:
Article
署名作者:
Shrestha, Yash Raj; He, Vivianna Fang; Puranam, Phanish; von Krogh, Georg
署名单位:
Swiss Federal Institutes of Technology Domain; ETH Zurich; INSEAD Business School
刊物名称:
ORGANIZATION SCIENCE
ISSN/ISSBN:
1047-7039
DOI:
10.1287/orsc.2020.1382
发表日期:
2021
页码:
856-880
关键词:
Machine learning
algorithmic induction
theory building
摘要:
Across many fields of social science, machine learning (ML) algorithms are rapidly advancing research as tools to support traditional hypothesis testing research (e.g., through data reduction and automation of data coding or for improving matching on observable features of a phenomenon or constructing instrumental variables). In this paper, we argue that researchers are yet to recognize the value of ML techniques for theory building from data. This may be in part because of scholars' inherent distaste for predictions without explanations that ML algorithms are known to produce. However, precisely because of this property, we argue that ML techniques can be very useful in theory construction during a key step of inductive theorizing-pattern detection. ML can facilitate algorithm supported induction, yielding conclusions about patterns in data that are likely to be robustly replicable by other analysts and in other samples from the same population. These patterns can then be used as inputs to abductive reasoning for building or developing theories that explain them. We propose that algorithm-supported induction is valuable for researchers interested in using quantitative data to both develop and test theories in a transparent and reproducible manner, and we illustrate our arguments using simulations.