Data science and automation in the process of theorizing: Machine learning’s power of induction in the co-duction cycle

4Citations
Citations of this article
8Readers
Mendeley users who have this article in their library.
Get full text

Abstract

Recent calls to take up data science either revolve around the superior predictive performance associated with machine learning or the potential of data science techniques for exploratory data analysis. Many believe that these strengths come at the cost of explanatory insights, which form the basis for theorization. In this paper, we show that this trade-off is false. When used as a part of a full research process, including inductive, deductive and abductive steps, machine learning can offer explanatory insights and provide a solid basis for theorization. We present a systematic five-step theory-building and theory-testing cycle that consists of: 1. Element identification (reduction); 2. Exploratory analysis (induction); 3. Hypothesis development (retroduction); 4. Hypothesis testing (deduction); and 5. Theorization (abduction). We demonstrate the usefulness of this approach, which we refer to as co-duction, in a vignette where we study firm growth with real-world observational data.

Cite

CITATION STYLE

APA

Kolkman, D., Lee, G. K., & van Witteloostuijn, A. (2024). Data science and automation in the process of theorizing: Machine learning’s power of induction in the co-duction cycle. PLoS ONE, 19(11 November). https://doi.org/10.1371/journal.pone.0309318

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free