The promises of Machine Learning and Big Data in entrepreneurship research

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Abstract

While the potential data landscape in econometric research is undergoing dramatic changes, terminologies such as “Big Data” and the associated discipline of “Machine Learning” (ML) have so far received little attention among econometricians. In this chapter, we illustrate the potentials for and promises of quantitative entrepreneurship research to benefit from the availability of unprecedentedly rich datasets and non-traditional data sources such as text, video, or image data. However, we also highlight that such datasets are in need of new approaches, both methodological and epistemological. We proceed by introducing the ML approach to quantitative analysis geared towards optimizing predictive performance, and contrast it with standard practices in econometrics that focus on producing good parameter estimates. The chapter also introduces ML techniques such as out-of-sample model validation and variable selection, as well as regularization procedures. We further illustrate and exemplify these principles by exploring popular ML techniques such as classification and regression trees, artificial neural networks, and vector space models for natural language processing. We provide guidance on how to apply these techniques to quantitative research in entrepreneurship and point towards promising avenues of future research that could be enabled by the use of new data sources and estimation techniques.
Original languageEnglish
Title of host publicationHandbook of Quantitative Research Methods in Entrepreneurship
EditorsGeorge Saridakis, Marc Cowling
Number of pages45
PublisherEdward Elgar Publishing
Publication date26 Jun 2020
Pages176–220
Chapter10
ISBN (Print)9781786430953
ISBN (Electronic)9781786430960
DOIs
Publication statusPublished - 26 Jun 2020

Bibliographical note

Publisher Copyright:
© George Saridakis and Marc Cowling 2020.

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