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Logistic regression / Statistical theory / Estimation theory / Econometrics / Statistics / Regression analysis / Categorical data
Date: 2014-07-28 22:25:12
Logistic regression
Statistical theory
Estimation theory
Econometrics
Statistics
Regression analysis
Categorical data

Stochastic Choice: An Optimizing Neuroeconomic Model Michael Woodford∗ January 28, 2014 Abstract

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