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DOCENG
2003
ACM

Accuracy improvement of automatic text classification based on feature transformation

14 years 5 months ago
Accuracy improvement of automatic text classification based on feature transformation
In this paper, we describe a comparative study on techniques of feature transformation and classification to improve the accuracy of automatic text classification. The normalization to the relative word frequency, the principal component analysis (K-L transformation) and the power transformation were applied to the feature vectors, which were classified by the Euclidean distance, the linear discriminant function, the projection distance, the modified projection distance and the SVM. Categories and Subject Descriptors I.5.4 [Pattern Recognition]: Applications –Text processing. General Terms Algorithms, Experimentation, Performance. Keywords automatic text classification, principal component analysis, variable transformation.
Guowei Zu, Wataru Ohyama, Tetsushi Wakabayashi, Fu
Added 05 Jul 2010
Updated 05 Jul 2010
Type Conference
Year 2003
Where DOCENG
Authors Guowei Zu, Wataru Ohyama, Tetsushi Wakabayashi, Fumitaka Kimura
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