Neural Comp. Sign up for ETOCS
HOME HELP FEEDBACK SUBSCRIPTIONS ARCHIVE SEARCH TABLE OF CONTENTS
 QUICK SEARCH:   [advanced]


     


This Article
Right arrow Full Text
Right arrow Full Text (PDF)
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Services
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Download to citation manager
Right arrow reprints & permissions
Citing Articles
Right arrow Citing Articles via HighWire
Right arrow Citing Articles via Google Scholar
Google Scholar
Right arrow Articles by Graepel, T.
Right arrow Articles by Obermayer, K.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Graepel, T.
Right arrow Articles by Obermayer, K.

Neural Computation, Vol 11, 139-155, Copyright © 1999 by The MIT Press


LETTERS

A Stochastic Self-Organizing Map for Proximity Data

Thore Graepel and Klaus Obermayer

We derive an efficient algorithm for topographic mapping of proximity data (TMP), which can be seen as an extension of Kohonen's self-organizing map to arbitrary distance measures. The TMP cost function is derived in a Baysian framework of folded Markov chains for the description of autoencoders. It incorporates the data by a dissimilarity matrix <i>D</i> and the topographic neighborhood by a matrix <i>H</i> of transition probabilities. From the principle of maximum entropy, a nonfactorizing Gibbs distribution is obtained, which is approximated in a mean-field fashion. This allows for maximum likelihood estimation using an expectation-maximization algorithm. In analogy to the transition from topographic vector quantization to the self-organizing map, we suggest an approximation to TMP that is computationally more efficient. In order to prevent convergence to local minima, an annealing scheme in the temperature parameter is introduced, for which the critical temperature of the first phase transition is calculated in terms of <i>D</i> and <i>H</i>. Numerical results demonstrate the working of the algorithm and confirm the analytical results. Finally, the algorithm is used to generate a connection map of areas of the cat&apos;s cerebral cortex.


This article has been cited by other articles:


Home page
Neural Comput.Home page
A. Hyvarinen, P. O. Hoyer, and M. Inki
Topographic Independent Component Analysis
Neural Comput., July 1, 2001; 13(7): 1527 - 1558.
[Abstract] [Full Text]


Home page
Protein Eng Des SelHome page
M. Stahl, C. Taroni, and G. Schneider
Mapping of protein surface cavities and prediction of enzyme class by a self-organizing neural network
Protein Eng. Des. Sel., February 1, 2000; 13(2): 83 - 88.
[Abstract] [Full Text] [PDF]




HOME HELP FEEDBACK SUBSCRIPTIONS ARCHIVE SEARCH TABLE OF CONTENTS
J COGNITIVE NEUROSCIENCE NEURAL COMPUTATION MIT PRESS JOURNALS
Copyright © 1999 by The MIT Press.