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SUPERVISED LEARNING FROM CLUSTERED INPUT EXAMPLES

Academic Article
Publication Date:
1995
abstract:
In this paper we analyse the effect of introducing a structure in the input distribution on the generalization ability of a simple perceptron. The simple case of two clusters of input data and a linearly separable rule is considered. We find that the generalization ability improves with the separation between the clusters, and is bounded from below by the result for the unstructured case, recovered as the separation between clusters vanishes. The asymptotic behaviour for large training sets, however, is the same for structured and unstructured input distributions. For small training sets, the dependence of the generalization error on the number of examples is observed to be non-monotonic for certain values of the model parameters.
Iris type:
01.01 Articolo in rivista
Keywords:
PERCEPTRON; STABILITY; ABILITY
List of contributors:
Marangi, Carmela
Authors of the University:
MARANGI CARMELA
Handle:
https://iris.cnr.it/handle/20.500.14243/198183
Published in:
EUROPHYSICS LETTERS (PRINT)
Journal
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URL

http://iopscience.iop.org/0295-5075/30/2/010/pdf/0295-5075_30_2_010.pdf
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