DocumentCode
983492
Title
Competitive Repetition Suppression (CoRe) Clustering: A Biologically Inspired Learning Model With Application to Robust Clustering
Author
Bacciu, Davide ; Starita, Antonina
Author_Institution
IMT Lucca Inst. for Adv. Studies, Lucca
Volume
19
Issue
11
fYear
2008
Firstpage
1922
Lastpage
1941
Abstract
Determining a compact neural coding for a set of input stimuli is an issue that encompasses several biological memory mechanisms as well as various artificial neural network models. In particular, establishing the optimal network structure is still an open problem when dealing with unsupervised learning models. In this paper, we introduce a novel learning algorithm, named competitive repetition-suppression (CoRe) learning, inspired by a cortical memory mechanism called repetition suppression (RS). We show how such a mechanism is used, at various levels of the cerebral cortex, to generate compact neural representations of the visual stimuli. From the general CoRe learning model, we derive a clustering algorithm, named CoRe clustering, that can automatically estimate the unknown cluster number from the data without using a priori information concerning the input distribution. We illustrate how CoRe clustering, besides its biological plausibility, posses strong theoretical properties in terms of robustness to noise and outliers, and we provide an error function describing CoRe learning dynamics. Such a description is used to analyze CoRe relationships with the state-of-the art clustering models and to highlight CoRe similitude with rival penalized competitive learning (RPCL), showing how CoRe extends such a model by strengthening the rival penalization estimation by means of loss functions from robust statistics.
Keywords
error statistics; neural nets; pattern clustering; unsupervised learning; artificial neural network; biologically inspired learning model; competitive repetition suppression learning; cortical memory mechanism; error function; pattern clustering; rival penalized competitive learning; statistics; unsupervised learning; Art; Artificial neural networks; Biological system modeling; Brain modeling; Cerebral cortex; Clustering algorithms; Noise robustness; State estimation; Statistical analysis; Unsupervised learning; Robust clustering; neural nets; rival penalized competitive learning (RPCL); soft competitive learning; unsupervised learning; Algorithms; Animals; Artificial Intelligence; Biomimetics; Cluster Analysis; Computer Simulation; Humans; Learning; Mental Recall; Models, Theoretical; Pattern Recognition, Automated;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2008.2004407
Filename
4668643
Link To Document