Econom\'etrie et Machine Learning
Arthur Charpentier,
Emmanuel Flachaire and
Antoine Ly
Papers from arXiv.org
Abstract:
Econometrics and machine learning seem to have one common goal: to construct a predictive model, for a variable of interest, using explanatory variables (or features). However, these two fields developed in parallel, thus creating two different cultures, to paraphrase Breiman (2001). The first was to build probabilistic models to describe economic phenomena. The second uses algorithms that will learn from their mistakes, with the aim, most often to classify (sounds, images, etc.). Recently, however, learning models have proven to be more effective than traditional econometric techniques (with a price to pay less explanatory power), and above all, they manage to manage much larger data. In this context, it becomes necessary for econometricians to understand what these two cultures are, what opposes them and especially what brings them closer together, in order to appropriate tools developed by the statistical learning community to integrate them into Econometric models.
Date: 2017-07, Revised 2018-03
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:1708.06992
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