paper available
Michael Biehl
biehl at connect.nbi.dk
Fri Jul 15 17:57:47 EDT 1994
FTP-host: archive.cis.ohio-state.edu
FTP-file: pub/neuroprose/marangi.clusters.ps.Z
The following paper has been placed in the Neuroprose archive in file
marangi.clusters.ps.Z (8 pages). Hardcopies are not available.
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SUPERVISED LEARNING FROM CLUSTERED INPUT EXAMPLES
Carmela Marangi
Dipartimento di Fisica dell' Universita' di Bari
and I.N.F.N., Sez. di Bari
Via Orabona 4, 70126 Bari, Italy
Michael Biehl ^ and Sara Solla
CONNECT, The Niels Bohr Institute
Blegdamsvej 17, 2100 Copenhagen, Denmark
^ email: biehl at physik.uni-wuerzburg.de
submitted to Europhysics Letters
ABSTRACT
In this paper we analyse the effect of introducing a structure in the input
distribution on the generalzation 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. The asymptotic behavior 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 nonmonotonic for certain values of the model
parameters.
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--- Michael Biehl biehl at physik.uni-wuerzburg.de
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