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📄 Articles - Articles exploring the intersection of these two fields
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📋Academic Papers - Research papers by Economists/ Statisticians on ML and Economics
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📺 Videos / Lectures - Lectures given by Economists on ML/ Data Science
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👩 👨 Economists / Data Scientists - Economists working as Data Scientists in Industry and Academia
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🎓 Program / Courses - Syllabus and courses which are at the intersection of Data Science and Economics
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Breaking the Spell That Grips Economics Noah Smith - Bloomberg
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Economics Struggles to Cope With Reality Noah Smith - Bloomberg
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All of a Sudden, Economists Are Getting Real Jobs Noah Smith - Bloomberg
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Data Geeks Are Taking Over Economics Noah Smith - Bloomberg
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Theory Versus Data? You Shouldn't Have to Choose Noah Smith - Bloomberg
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Goodbye, Ivory Tower. Hello, Silicon Valley Candy Store Steve Lohr - NYT
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How Economics Went From Theory to Data Justin Fox - Bloomberg
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Quora Session with Susan Athey Susan Athey- Stanford GSB Prof.
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Economics Gets Real Noah Smith - Bloomberg
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Hunting for a Hot Job in High Tech? Try 'Digitization Economist Roberta Holland - Working Knowledge
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Uber’s secret weapon is its team of economists Alison Griswold - Quartz
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Why Uber Is an Economist’s Dream Stephen J. Dubner - Freakonomics
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Susan Athey Interview: Applying Machine Learning to the Economy Stanford GSB
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Sexy and Social Data Scientists Forbes Article
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Computer Science Is Coming for Economics Vishal Wilde
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Micro stars, macro effects Economist Article
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Economists are prone to fads, and the latest is machine learning Economist Article- 2012
- A critical piece by Economist on the surge of ML in Econ. This was followed by counter argument by Noah Smith
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Are current trends in econ methodology just fads? Noah Smith
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Two Cousins Meet Avinash Tripathi
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Causal Inference and Machine Learning Guido Imbens
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Teconomics- Economists in Tech - Emily Glassberg Sands & Duncan Gilchrist
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Machine Learning for Decision Making - Emily Glassberg Sands & Duncan Gilchrist
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How to Use Machine Learning to Accelerate A/B Testing - Emily Glassberg Sands & Duncan Gilchrist
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Machine Learning Meets Instrumental Variables - Emily Glassberg Sands & Duncan Gilchrist
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Stanford is Using Machine Learning on Satellite Images to Predict Poverty- Analytics Vidhya
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Economic Predictions with Big Data: The Illusion of Sparsity - NY Federal Reserve
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Refining the “science” of political science (MIT)- MIT PolSc
- Political Methodology Lab- MIT PolSc
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Recent Ideas in Econometrics (Spring 2017)
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The State of Applied Econometrics: Causality and Policy Evaluation - Susan Athey & Guido W. Imbens
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Machine Learning: An Applied Econometric Approach - Sendhil Mullainathan & Jann Spiess
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The Use of Structural Models in Econometrics - Hamish Low & Costas Meghir
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Twenty Years of Time Series Econometrics in Ten Pictures - James H. Stock & Mark W. Watson
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Identification and Asymptotic Approximations: Three Examples of Progress in Econometric Theory - James L. Powell
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Big Data: New Tricks for Econometrics - Hal Varian
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High-Dimensional Methods and Inference on Structural and Treatment Effects - Alexandre Belloni, Victor Chernozhukov, Christian Hansen
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Political Campaigns and Big Data - David W. Nickerson & Todd Rogers
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Privacy and Data-Based Research - Ori Heffetz & Katrina Ligett
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Econometrics Tools (Fall 2011) - Various papers and authors
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Con out of Economics (Spring 2010)
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Taking the Dogma out of Econometrics: Structural Modeling and Credible Inference - Nevo and Whinston
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The Credibility Revolution in Empirical Economics: How Better Research Design Is Taking the Con out of Econometrics - Angrist and Pischke
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A Structural Perspective on the Experimentalist School - M.P Keane
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- Beyond Big Data - Hal Varian
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Machine Learning: What's in it for Economics - Playlist Univ. of Chicago
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Machine Learning Meets Economics: Using Theory, Data, and Experiments to Design Markets
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Why Economics Needs Data Mining Cosma Shalizi(CMU)
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Machinistas meet Randomistas: useful ML tools for Empirical Researchers Esther Duflo
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The Economics of Artificial Intelligence & Income Distribution Jeffrey Sachs
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Human Decisions and Machine Predictions Jon Kleinberg (Cornell)
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The Challenge of Big Data for the Social Sciences Kenneth Benoit, Kenneth Cukier
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Data Science from the Perspective of an Applied Economist Scott Nicholson
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From Economist to Data Scientist: How our discipline can participate in the growth of analytics Kenneth Sanford
Person | Affiliation | Comments |
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Matthew Harding | University of California - Irvine | Check the Deep Data Lab |
David Broockman | Stanford | - |
Andrew B. Hall | Stanford | - |
Ariel Procaccia | CMU | - |
Dario Sansone | Georgetown University | Dario has compiled an informative list on ML and Economics |
Soubhik Barari | Harvard University | - |
Matteo Courthoud | University of Zurich | Matteo has very good teaching resources on his website |
Economist | Company | Comment |
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Emily Glassberg Sands | Coursera | Data Science Head |
Jed Kolko | Indeed | Chief Economist |
David H Reiley | Pandora | Economist- Advertising Science |
Jacob LaRiviere | Microsoft | Economist |
Dan Goldstein | Microsoft | Economist |
Matt Goldman | Microsoft | Economist - Studies online economic behavior and decision making |
Justin M. Rao | Microsoft | Economist -Member of interdisciplinary research group combining social science with computational and theoretical methods |
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Companies like Airbnb, Microsoft and Amazon have huge teams which is filled with Economists
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- Also check Economics @ Amazon
Course/Degree | Type | Institution | Prof | Detail type |
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M.S. Economics & Computation | Masters Degree | Duke | - | 🗞️ |
Computer Science , Economics and Data Science | Bachelors Degree | MIT | - | 🗞️ |
Machine Learning and Data Science in Politics | Course | MIT | In Song Kim | 📑 |
Data Analysis for Social Scientists | Course | MIT | Esther Duflo & Sara Fisher | 📑 💻 📖 |
R-Based High Performance Computing for Social Science | Course | MIT | Soubhik Barari | 📑 |
Data Science for Politics | Course | Stanford | 📑 | |
Machine Learning and Causal Inference | Course | Stanford | Susan Athey | 📑 |
Data for Sustainable Development | Course | Stanford | Marshall Burke, Stefano Ermon, David Lobell | 📑 |
Big Data | Course | Brown | Daniel Bjorkegren | 📑 |
Using Big Data to Solve Economic and Social Problems | Course | Harvard | Raj Chetty | 📑 💻 📖 |
Industrial Organization and Data Science | Course | Microsoft | Justin Rao | 📑 |
Data Science for Game Theory and Pricing | Course | Microsoft | Jacob | 📑 |
Machine Learning and Econometrics | Course | Stanford/Berkley | Susan Athey, Guido Imbens | 📑 💻 📖 |
Enviornmental Economics and Data Science | Course | University of Oregon | Grant McDermott | 📑 |
Designing the Digital Economy | Course | Yale | Glen Weyl | 📑 |