Title
Pattern synthesis using fuzzy partitions of the feature set for nearest neighbor classifier design
Abstract
Nearest neighbor classifiers require a larger training set in order to achieve a better classification accuracy. For a higher dimensional data, if the training set size is small, it suffers from the curse of dimensionality effect and performance gets degraded. Partition based pattern synthesis is an existing technique of generating a larger set of artificial training patterns based on a chosen partition of the feature set. If the blocks of the partition are statistically independent then the quality of synthetic patterns generated is high. But, such a partition, often does not exist for real world problems. So, approximate ways of generating a partition based on correlation coefficient values between pairs of features were used earlier in some studies. That is, an approximate hard partition, where each feature belongs to exactly one cluster (block) of the partition was used for doing the synthesis. The current paper proposes an improvement over this. Instead of having a hard approximate partition, a soft approximate partition based on fuzzy set theory could be beneficial. The present paper proposes such a fuzzy partitioning method of the feature set called fuzzy partition around medoids (fuzzy-PAM). Experimentally, using some standard data-sets, it is demonstrated that the fuzzy partition based synthetic patters are better as for as the classification accuracy is concerned.
Year
DOI
Venue
2011
10.1007/978-3-642-25725-4_11
MIWAI
Keywords
Field
DocType
fuzzy partition,approximate way,fuzzy set theory,training set size,feature set,approximate hard partition,chosen partition,soft approximate partition,nearest neighbor classifier design,hard approximate partition,pattern synthesis,larger set
k-nearest neighbors algorithm,Pattern recognition,Computer science,Fuzzy logic,Curse of dimensionality,Fuzzy set,Artificial intelligence,Partition (number theory),Graph partition,Partition refinement,Medoid
Conference
Volume
ISSN
Citations 
7080
0302-9743
0
PageRank 
References 
Authors
0.34
10
4
Name
Order
Citations
PageRank
P. Viswanath114811.77
S. Chennakesalu200.34
R. Rajkumar300.34
M. Raja Sekhar400.34