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| Hiroaki Masuhara |
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| ''Identifying finite mixture models in the presence of moment-generating function: application in medical care using a zero-inflated binomial model'' |
| ( 2019, Vol. 39 No.2 ) |
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| This study presents a simple method to identify the parameters in finite mixture models when a moment-generating function (MGF) is present.
We obtain the model conditions using a zero-inflated binomial model, a simple form of the finite mixture binary model, and analyze the results using the Monte Carlo simulation.
Using the zero-inflated and standard binomial models, we compare the marginal effects of health care usage.
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| Keywords: Finite mixtures, identifiability, zero-inflated |
JEL: C4 - Econometric and Statistical Methods: Special Topics C1 - Econometric and Statistical Methods: General |
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| Manuscript Received : Apr 03 2018 | | Manuscript Accepted : Jun 15 2019 |
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