Sciweavers

SSPR
2004
Springer

EM Initialisation for Bernoulli Mixture Learning

13 years 9 months ago
EM Initialisation for Bernoulli Mixture Learning
Mixture modelling is a hot area in pattern recognition. This paper focuses on the use of Bernoulli mixtures for binary data and, in particular, for binary images. More specifically, six EM initialisation techniques are described and empirically compared on a classification task of handwritten Indian digits. Somehow surprisingly, we have found that a relatively good initialisation for Bernoulli prototypes is to use slightly perturbed versions of the hypercube centre. Key words: Mixture Models, EM Algorithm, Multivariate Bernoulli Distribution, Initialisation Techniques, Binary Data, Indian Digits
Alfons Juan, José García-Herná
Added 02 Jul 2010
Updated 02 Jul 2010
Type Conference
Year 2004
Where SSPR
Authors Alfons Juan, José García-Hernández, Enrique Vidal
Comments (0)