Machine Learning: An Applied Econometric Approach
Autor: | Sendhil Mullainathan, Jann Spiess |
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Rok vydání: | 2017 |
Předmět: |
Economics and Econometrics
050208 finance Active learning (machine learning) Computer science business.industry Mechanical Engineering media_common.quotation_subject 05 social sciences Stability (learning theory) Energy Engineering and Power Technology Online machine learning Management Science and Operations Research Machine learning computer.software_genre Facial recognition system Abstract machine Computational learning theory Face (geometry) 0502 economics and business Artificial intelligence 050207 economics Function (engineering) business computer media_common |
Zdroj: | Journal of Economic Perspectives. 31:87-106 |
ISSN: | 0895-3309 |
Popis: | Machines are increasingly doing “intelligent” things. Face recognition algorithms use a large dataset of photos labeled as having a face or not to estimate a function that predicts the presence y of a face from pixels x. This similarity to econometrics raises questions: How do these new empirical tools fit with what we know? As empirical economists, how can we use them? We present a way of thinking about machine learning that gives it its own place in the econometric toolbox. Machine learning not only provides new tools, it solves a different problem. Specifically, machine learning revolves around the problem of prediction, while many economic applications revolve around parameter estimation. So applying machine learning to economics requires finding relevant tasks. Machine learning algorithms are now technically easy to use: you can download convenient packages in R or Python. This also raises the risk that the algorithms are applied naively or their output is misinterpreted. We hope to make them conceptually easier to use by providing a crisper understanding of how these algorithms work, where they excel, and where they can stumble—and thus where they can be most usefully applied. |
Databáze: | OpenAIRE |
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