Simulation-based Inference in a Zero-inflated Bernoulli Regression Model |
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Authors: | Aba Diop Aliou Diop |
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Institution: | 1. Laboratoire Mathématiques, Image et Applications, Université de La Rochelle, La Rochelle, France;2. LERSTAD, Université Gaston Berger, Saint Louis, Sénégal;3. LERSTAD, Université Gaston Berger, Saint Louis, Sénégal |
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Abstract: | The logistic regression model has become a standard tool to investigate the relationship between a binary outcome and a set of potential predictors. When analyzing binary data, it often arises that the observed proportion of zeros is greater than expected under the postulated logistic model. Zero-inflated binomial (ZIB) models have been developed to fit binary data that contain too many zeros. Maximum likelihood estimators in these models have been proposed and their asymptotic properties established. Several aspects of ZIB models still deserve attention however, such as the estimation of odds-ratios and event probabilities. In this article, we propose estimators of these quantities and we investigate their properties both theoretically and via simulations. Based on these results, we provide recommendations about the range of conditions (minimum sample size, maximum proportion of zeros in excess) under which a reliable statistical inference on the odds-ratios and event probabilities can be obtained in a ZIB regression model. A real-data example illustrates the proposed estimators. |
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Keywords: | Convergence Logistic regression model Maximum likelihood estimation Mixture model Simulations |
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