A Comparative Study on using Principle Component Analysis with Different Text Classifiers
July 04, 2018 Β· Declared Dead Β· π arXiv.org
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Authors
Ahmed I. Taloba, D. A. Eisa, Safaa S. I. Ismail
arXiv ID
1807.03283
Category
cs.IR: Information Retrieval
Cross-listed
cs.LG
Citations
23
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Text categorization (TC) is the task of automatically organizing a set of documents into a set of pre-defined categories. Over the last few years, increased attention has been paid to the use of documents in digital form and this makes text categorization becomes a challenging issue. The most significant problem of text categorization is its huge number of features. Most of these features are redundant, noisy and irrelevant that cause over fitting with most of the classifiers. Hence, feature extraction is an important step to improve the overall accuracy and the performance of the text classifiers. In this paper, we will provide an overview of using principle component analysis (PCA) as a feature extraction with various classifiers. It was observed that the performance rate of the classifiers after using PCA to reduce the dimension of data improved. Experiments are conducted on three UCI data sets, Classic03, CNAE-9 and DBWorld e-mails. We compare the classification performance results of using PCA with popular and well-known text classifiers. Results show that using PCA encouragingly enhances classification performance on most of the classifiers.
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