Nonparametric Identification And Estimation Of Multivariate Mixtures
Hiroyuki Kasahara and
Katsumi Shimotsu
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Katsumi Shimotsu: Department of Economics, Queen's University
No 1153, Working Paper from Economics Department, Queen's University
Abstract:
We study nonparametric identifiability of finite mixture models of k-variate data with M subpopulations, in which the components of the data vector are independent conditional on belonging to a subpopulation. We provide a sufficient condition for nonparametrically identifying M subpopulations when k>=3. Our focus is on the relationship between the number of values the components of the data vector can take on, and the number of identifiable subpopulations. Intuition would suggest that if the data vector can take many different values, then combining information from these different values helps identification. Hall and Zhou (2003) show, however, when k=2, two-component finite mixture models are not nonparametrically identifiable regardless of the number of the values the data vector can take. When k>=3, there emerges a link between the variation in the data vector, and the number of identifiable subpopulations: the number of identifiable subpopulations increases as the data vector takes on additional (different) values. This points to the possibility of identifying many components even when k=3, if the data vector has a continuously distributed element. Our identification method is constructive, and leads to an estimation strategy. It is not as efficient as the MLE, but can be used as the initial value of the optimization algorithm in computing the MLE. We also provide a sufficient condition for identifying the number of nonparametrically identifiable components, and develop a method for statistically testing and consistently estimating the number of nonparametrically identifiable components. We extend these procedures to develop a test for the number of components in binomial mixtures.
Keywords: finite mixture; binomial mixture; model selection; number of components; rank estimation (search for similar items in EconPapers)
JEL-codes: C13 C14 C51 C52 (search for similar items in EconPapers)
Pages: 25 pages
Date: 2007-12
New Economics Papers: this item is included in nep-ecm
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Citations: View citations in EconPapers (2)
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Persistent link: https://EconPapers.repec.org/RePEc:qed:wpaper:1153
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