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NECO
2000

Practical Identifiability of Finite Mixtures of Multivariate Bernoulli Distributions

13 years 4 months ago
Practical Identifiability of Finite Mixtures of Multivariate Bernoulli Distributions
The class of finite mixtures of multivariate Bernoulli distributions is known to be nonidentifiable, i.e., different values of the mixture parameters can correspond to exactly the same probability distribution. In principle, this would mean that sample estimates using this model would give rise to different interpretations. We give empirical support to the fact that estimation of this class of mixtures can still produce meaningful results in practice, thus lessening the importance of the identifiability problem. We also show that the EM algorithm is guaranteed to converge to a proper maximum likelihood estimate, owing to a property of the log-likelihood surface. Experiments with synthetic data sets show that an original generating distribution can be estimated from a sample. Experiments with an electropalatography (EPG) data set show important structure in the data.
Miguel Á. Carreira-Perpiñán,
Added 19 Dec 2010
Updated 19 Dec 2010
Type Journal
Year 2000
Where NECO
Authors Miguel Á. Carreira-Perpiñán, Steve Renals
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