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Identifying Dynamic Discrete Choice Models with Hyperbolic Discounting
Published 21 Nov 2021 in econ.EM | (2111.10721v4)
Abstract: We study identification of dynamic discrete choice models with hyperbolic discounting. We show that the standard discount factor, present bias factor, and instantaneous utility functions for the sophisticated agent are point-identified from observed conditional choice probabilities and transition probabilities in a finite horizon model. The main idea to achieve identification is to exploit variation in the observed conditional choice probabilities over time. We present the estimation method and demonstrate a good performance of the estimator by simulation.
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