Mining positive and negative patterns for relevance feature discovery

Yuefeng Li, Abdulmohsen Algarni, N. Zhong
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引用次数: 97

Abstract

It is a big challenge to guarantee the quality of discovered relevance features in text documents for describing user preferences because of the large number of terms, patterns, and noise. Most existing popular text mining and classification methods have adopted term-based approaches. However, they have all suffered from the problems of polysemy and synonymy. Over the years, people have often held the hypothesis that pattern-based methods should perform better than term-based ones in describing user preferences, but many experiments do not support this hypothesis. The innovative technique presented in paper makes a breakthrough for this difficulty. This technique discovers both positive and negative patterns in text documents as higher level features in order to accurately weight low-level features (terms) based on their specificity and their distributions in the higher level features. Substantial experiments using this technique on Reuters Corpus Volume 1 and TREC topics show that the proposed approach significantly outperforms both the state-of-the-art term-based methods underpinned by Okapi BM25, Rocchio or Support Vector Machine and pattern based methods on precision, recall and F measures.
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挖掘积极和消极模式的相关特征发现
由于大量的术语、模式和噪声,保证在描述用户偏好的文本文档中发现的相关特征的质量是一个很大的挑战。大多数现有流行的文本挖掘和分类方法都采用了基于术语的方法。然而,它们都存在着一词多义、同义的问题。多年来,人们经常认为基于模式的方法在描述用户偏好方面应该比基于术语的方法表现得更好,但许多实验并不支持这一假设。本文提出的创新技术突破了这一难题。该技术将文本文档中的积极模式和消极模式都发现为高级特征,以便根据低级特征(术语)的特殊性及其在高级特征中的分布准确地加权。在路透社语料库卷1和TREC主题上使用该技术的大量实验表明,所提出的方法在精度、召回率和F度量方面明显优于Okapi BM25、Rocchio或支持向量机支持的最先进的基于术语的方法和基于模式的方法。
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