Submitted by mjarvisa on December 3, 2010 - 09:58
Lecturer :
Panu Luosto
Event type:
HIIT seminar
Event time:
2010-12-10 10:15 to 11:00
Place:
Kumpula Exactum C222
Description:
Talk announcement: HIIT Seminar Kumpula, Friday Dec 10, 10:15 a.m., Exactum C222 SPEAKER: Panu Luosto University of Helsinki TITLE: Clustering using the minimum description length principle ABSTRACT: Within a model class framework, the best model for data is according to the minimum description length principle the one that leads to the most efficient compression of the data in the worst case sense. However, many useful model classes have a property called infinite parametric complexity, and in those cases an optimal solution cannot be defined in a straightforward way. This talk introduces one solution to the problem. The resulting code length functions are applied to two kinds of clustering applications. In the first case, an unknown number of Gaussian clusters is searched for in the presence of uniform background noise. In the second application, clustering with a richer variety of model classes is used for one-dimensional density estimation. BIO: Panu Luosto is a PhD student under the supervision of Jyrki Kivinen in the Department of Computer Science at the University of Helsinki. Welcome! --Matti Järvisalo
Last updated on 3 Dec 2010 by Matti Järvisalo - Page created on 3 Dec 2010 by Matti Järvisalo