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Optimal Subset Selection for Classification through SAT Encodings

Conference Paper
Publication Date:
2008
abstract:
In this work we propose a method for computing a minimum size training set consistent subset for the Nearest Neighbor rule (also said CNN problem) via SAT encodings. We introduce the SAT-CNN algorithm, which exploits a suitable encoding of the CNN problem in a sequence of SAT problems in order to exactly solve it, provided that enough computational resources are available. Comparison of SAT-CNN with well-known greedy methods shows that SAT-CNN is able to return a better solution. The proposed approach can be extended to several hard subset selection classification problems.
Iris type:
04.01 Contributo in Atti di convegno
List of contributors:
Basta, Stefano
Authors of the University:
BASTA STEFANO
Handle:
https://iris.cnr.it/handle/20.500.14243/70004
Book title:
ARTIFICIAL INTELLIGENCE IN THEORY AND PRACTICE II
Published in:
IFIP INTERNATIONAL FEDERATION FOR INFORMATION PROCESSING
Series
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