This dissertation presents three independent essays in microeconomic theory. Chapter 1 suggests an alternative to the common prior assumption, in which agents form beliefs by learning from data, possibly interpreting the data in different ways. In the limit as agents observe increasing quantities of data, the model returns strict solutions of a limiting complete information game, but predictions may diverge substantially for small quantities of data. Chapter 2 (with Jon Kleinberg and Sendhil Mullainathan) proposes use of machine learning algorithms to construct benchmarks for “achievable" predictive accuracy. The paper illustrates this approach for the problem of predicting human-generated random sequences. We find that leading models expla...
In many machine learning domains, misclassification costs are different for different examples, in t...
This chapter provides a survey of the recent work on learning in the context of macroeconomics. Lear...
Much of econometrics is based on a tight probabilistic approach to empirical modeling that dates bac...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
This dissertation is composed of three independent chapters relating the theory and empirical method...
This paper utilizes a novel data on consumer choice under uncertainty, obtained in a laboratory expe...
This dissertation concentrates on applying machine learning methods to economic policy analysis. Whe...
[eng] The presented discourse followed several topics where every new chapter introduced an economic...
Thesis: Ph. D. in Linguistics, Massachusetts Institute of Technology, Department of Linguistics and ...
Machine learning has become one of the most active and exciting areas of computer science research, ...
People's payoffs are often jointly determined by their action and an unobserved common payoff releva...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2018Cataloged from P...
This thesis investigates optimality of heuristic forecasting. According to Goldstein a Gigerenzer (2...
An important use of machine learning is to learn what people value. What posts or photos should a us...
This dissertation presents three independent essays in microeconomic theory. Motivated by the rise o...
In many machine learning domains, misclassification costs are different for different examples, in t...
This chapter provides a survey of the recent work on learning in the context of macroeconomics. Lear...
Much of econometrics is based on a tight probabilistic approach to empirical modeling that dates bac...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
This dissertation is composed of three independent chapters relating the theory and empirical method...
This paper utilizes a novel data on consumer choice under uncertainty, obtained in a laboratory expe...
This dissertation concentrates on applying machine learning methods to economic policy analysis. Whe...
[eng] The presented discourse followed several topics where every new chapter introduced an economic...
Thesis: Ph. D. in Linguistics, Massachusetts Institute of Technology, Department of Linguistics and ...
Machine learning has become one of the most active and exciting areas of computer science research, ...
People's payoffs are often jointly determined by their action and an unobserved common payoff releva...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2018Cataloged from P...
This thesis investigates optimality of heuristic forecasting. According to Goldstein a Gigerenzer (2...
An important use of machine learning is to learn what people value. What posts or photos should a us...
This dissertation presents three independent essays in microeconomic theory. Motivated by the rise o...
In many machine learning domains, misclassification costs are different for different examples, in t...
This chapter provides a survey of the recent work on learning in the context of macroeconomics. Lear...
Much of econometrics is based on a tight probabilistic approach to empirical modeling that dates bac...