Fast and Accuracy Control Chart Pattern Recognition using a New cluster-k-Nearest Neighbor
By taking advantage of both k-NN which is highly accurate and K-means cluster which is able to reduce the time of classi¯cation, we can introduce Cluster-k-Nearest Neighbor as "variable k"-NN dealing with the centroid or mean point of all subclasses generated by clustering algorithm. In...
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Main Author: | |
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Format: | Citation Index Journal |
Published: |
2008
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Subjects: | |
Online Access: | http://eprints.utp.edu.my/905/1/C_K_NN.pdf http://eprints.utp.edu.my/905/ |
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Institution: | Universiti Teknologi Petronas |
Summary: | By taking advantage of both k-NN which is highly accurate and K-means cluster which
is able to reduce the time of classi¯cation, we can introduce Cluster-k-Nearest Neighbor
as "variable k"-NN dealing with the centroid or mean point of all subclasses generated by
clustering algorithm. In general the algorithm of K-means cluster is not stable, in term of
accuracy, for that reason we develop another algorithm for clustering our space which gives
a higher accuracy than K-means cluster, less subclass number, stability and bounded time
of classi¯cation with respect to the variable data size. We ¯nd between 96% and 99.7 % of
accuracy in the classi¯cation of 6 di®erent types of Time series by using K-means cluster
algorithm and we ¯nd 99.7% by using the new clustering algorithm. |
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