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An ontology-based dimensionality reduction algorithm for biomedical literature classification

机译:基于本体的生物医学文献分类维数维度算法

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Dimension reduction is an important component in automatic text categorization, especially biomedical literature classification. Many studies have showed that statistic-based dimension reduction algorithms, like Information Gain (IG), are very effective in document categorization. However these algorithms still suffer from major drawbacks. One facet is that they tend to use all the words as features. Another facet is that they can't capture the semantic information that underlies the lexical words. To overcome these drawbacks, in this paper, a novel algorithm is presented to reduce the dimensionality of biomedical literature. First, a good biomedical concept set can be obtained by the ontology-based entity extraction technique to be the feature space. The semantic relatedness information is incorporated by mapping some original features to “Least-Max-Cover” features, according to the structure of the domain ontology. We demonstrate our method on the problem of classifying MEDLINE-indexed journal abstracts using C4.5 as the basic classifier. The experimental results show that our method has achieved a significant improvement in F-value (3.5%) and recall (5.25%) on average, compared with other state-of-the-art dimensionality reduction algorithms such as IG, CHI, One-R and LARS.
机译:尺寸减少是自动文本分类的重要组成部分,特别是生物医学文献分类。许多研究表明,基于统计的维度缩小算法,如信息增益(IG),在文档分类中非常有效。然而,这些算法仍然存在主要缺点。一个方面是他们倾向于将所有单词用作特征。另一个方面是他们无法捕获词汇词的语义信息。为了克服这些缺点,本文提出了一种新的算法以降低生物医学文献的维度。首先,可以通过基于本体的实体提取技术来获得良好的生物医学概念集来成为特征空间。根据域本体结构的结构,通过将一些原始特征映射到“最小最大覆盖”功能来整合语义相关信息。我们展示了我对使用C4.5作为基本分类器分类Medline索引期刊摘要的问题的方法。实验结果表明,与其他最先进的维数减少算法相比,我们的方法达到了F值(3.5%)和召回(5.25%)的显着改善,如Ig,Chi,ch r和lars。

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