English

Normalized Maximum Likelihood Coding for Exponential Family with Its Applications to Optimal Clustering

Machine Learning 2012-05-18 v2

Abstract

We are concerned with the issue of how to calculate the normalized maximum likelihood (NML) code-length. There is a problem that the normalization term of the NML code-length may diverge when it is continuous and unbounded and a straightforward computation of it is highly expensive when the data domain is finite . In previous works it has been investigated how to calculate the NML code-length for specific types of distributions. We first propose a general method for computing the NML code-length for the exponential family. Then we specifically focus on Gaussian mixture model (GMM), and propose a new efficient method for computing the NML to them. We develop it by generalizing Rissanen's re-normalizing technique. Then we apply this method to the clustering issue, in which a clustering structure is modeled using a GMM, and the main task is to estimate the optimal number of clusters on the basis of the NML code-length. We demonstrate using artificial data sets the superiority of the NML-based clustering over other criteria such as AIC, BIC in terms of the data size required for high accuracy rate to be achieved.

Keywords

Cite

@article{arxiv.1205.3549,
  title  = {Normalized Maximum Likelihood Coding for Exponential Family with Its Applications to Optimal Clustering},
  author = {So Hirai and Kenji Yamanishi},
  journal= {arXiv preprint arXiv:1205.3549},
  year   = {2012}
}
R2 v1 2026-06-21T21:04:46.935Z