Bayesian and Akaike’s information criterions for some multivariate tests of homogeneity with applications in multisample clustering
Abstract
W pracy zostały przedstawione dwa kryteria dotyczące selekcji modeli, mianowicie
kryterium Akaike: AIC (Akaike’s Information Criterion) i kryterium bayesowskie: BIC
(Bayesian Information Criterion). This paper studies the AlC and B1C (Akaike’s and Bayesian Information
Criterion) replacement for:
- Box’s (1949) M test of the homogeneity of covariances,
- Wilks’ (1932) Л criterion for testing the equality of mean vectors and
- likelihood ratio test of the complete homogeneity as two of model - selection
criterions.
AIC and BIC are new procedures for comparing means and samples, and selecting
the homogeneous groups from heterogenous ones in multi-sample data analysis problems.
f rom the Bayesian view-point, the approach to the model-selection problem is to
specily the prior probability ol each model, prior distributions for all parameters in each
model and compute the posterior probability of each model given the data. That model
lor which the estimated posterior probability is the largest is chosen to be the best one.
A clustering technique is presented to generate all possible choices of clustering
alternatives of groups and indentify the best clustering among the alternative clusterings.
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