Subspaces of text discrimination with application to biological literature

Mahesan Suwannaroj, M. Niranjan
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引用次数: 1

Abstract

This paper is about the application of statistical pattern recognition techniques to the classification of text with the objective of retrieving documents relevant for the construction of gene networks. We start from the usual practice of representing a document, electronically available abstracts of scientific papers in this case, as a high dimensional vector of term of occurrences. We consider the problem of retrieving documents corresponding to the metabolic pathway of the organism yeast, Saccharomyces Cerevisiae, using a trained classifier as filter. We use support vector machines (SVMs) as classifiers and compare techniques for reducing the dimensionality of the problem: latent semantic kernels (LSK) and sequential forward selection (SFS). In order to deal with the issue of having only a small set of accurately labelled documents, we used the approach of transductive inference. In this case, LSK leads to a subspace formed as a linear combination of features (terms in the lexicon) while SFS selects a subset of the dimension. We find, for this problem, that the discriminant information appears to lie in a subspace, which is very small in dimensionality compared to that of the original formulation. By matching against the gene ontology (GO) database, we further find that the selection process (SFS) picks out the discriminant terms that are of biological significance for this problem.
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文本子空间辨析及其在生物文献中的应用
本文研究了统计模式识别技术在文本分类中的应用,目的是检索与基因网络构建相关的文档。我们从表示文档的通常做法开始,在这种情况下,电子科学论文的摘要作为出现次数的高维向量。我们考虑的问题,检索文件对应的有机体酵母的代谢途径,酿酒酵母,使用训练分类器作为过滤器。我们使用支持向量机(svm)作为分类器,并比较了降低问题维数的技术:潜在语义核(LSK)和顺序前向选择(SFS)。为了处理只有一小部分准确标记的文档的问题,我们使用了转换推理的方法。在这种情况下,LSK生成的子空间是特征(词汇表中的术语)的线性组合,而SFS则选择维度的子集。我们发现,对于这个问题,判别信息似乎位于子空间中,与原始公式相比,该子空间的维数非常小。通过与基因本体(GO)数据库的匹配,我们进一步发现选择过程(SFS)挑选出对该问题具有生物学意义的判别项。
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