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ICML
1996
IEEE

Unsupervised Learning Using MML

15 years 1 months ago
Unsupervised Learning Using MML
This paper discusses the unsupervised learning problem. An important part of the unsupervised learning problem is determining the numberofconstituent groups (componentsor classes) which best describes some data. We apply the MinimumMessage Length (MML) criterion to the unsupervised learning problem, modifying an earlier such MML application. We give an empirical comparison of criteria prominent in the literature for estimating the number of components in a data set. We conclude that the Minimum Message Length criterion performs better than the alternatives on the data considered here for unsupervised learning tasks.
Jonathan J. Oliver, Rohan A. Baxter, Chris S. Wall
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 1996
Where ICML
Authors Jonathan J. Oliver, Rohan A. Baxter, Chris S. Wallace
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