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Title:
On Classification from Outlier View
Authors:
Hsiao, C. -A.; Chen, H.
Publication:
eprint arXiv:0907.5155
Publication Date:
07/2009
Origin:
ARXIV
Keywords:
Computer Science - Artificial Intelligence
Comment:
10 pages, 2 figures
Bibliographic Code:
2009arXiv0907.5155H

Abstract

Classification is the basis of cognition. Unlike other solutions, this study approaches it from the view of outlier. We present expanding algorithm to detect outliers in univariate dataset, accompanied with underlying foundation. The algorithm runs in a holistic way, which makes itself a rather robust solution. Synthetic and real data experiments show its efficiency.
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arXiv e-prints