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Academia / Law and economics / Philosophy of law / George Akerlof / Oliver Hart / MIT Sloan School of Management / Philippe Aghion / Knowledge / MIT Department of Economics / Fellows of the Econometric Society / Massachusetts Institute of Technology / Economics
Date: 2012-06-27 10:13:53
Academia
Law and economics
Philosophy of law
George Akerlof
Oliver Hart
MIT Sloan School of Management
Philippe Aghion
Knowledge
MIT Department of Economics
Fellows of the Econometric Society
Massachusetts Institute of Technology
Economics

ROBERT AKERLOF June 2012 Department of Economics

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