The Informational Complexity of Learning from Examples
Item
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Title
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en_US
The Informational Complexity of Learning from Examples
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Creator
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en_US
Niyogi, Partha
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Date
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2004-10-20T20:28:05Z
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Date Available
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2004-10-20T20:28:05Z
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Date Issued
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en_US
1996-09-01
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Identifier
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en_US
AITR-1587
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Abstract
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en_US
This thesis attempts to quantify the amount of information needed to learn certain tasks. The tasks chosen vary from learning functions in a Sobolev space using radial basis function networks to learning grammars in the principles and parameters framework of modern linguistic theory. These problems are analyzed from the perspective of computational learning theory and certain unifying perspectives emerge.
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Extent
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3260099 bytes
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3332017 bytes
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Format
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application/postscript
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application/pdf
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Language
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en_US
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Relation
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en_US
AITR-1587