GMM estimation of a maximum entropy distribution with interval data |
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Authors: | Ximing Wu Jeffrey M. Perloff |
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Affiliation: | 1. Department of Agricultural Economics, Texas A&M University, USA;2. Department of Agricultural and Resource Economics, University of California, USA |
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Abstract: | We develop a generalized method of moments (GMM) estimator for the distribution of a variable where summary statistics are available only for intervals of the random variable. Without individual data, one cannot calculate the weighting matrix for the GMM estimator. Instead, we propose a simulated weighting matrix based on a first-step consistent estimate. When the functional form of the underlying distribution is unknown, we estimate it using a simple yet flexible maximum entropy density. Our Monte Carlo simulations show that the proposed maximum entropy density is able to approximate various distributions extremely well. The two-step GMM estimator with a simulated weighting matrix improves the efficiency of the one-step GMM considerably. We use this method to estimate the U.S. income distribution and compare these results with those based on the underlying raw income data. |
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Keywords: | Density estimation Grouped data GMM Maximum entropy |
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