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Large-scale latent semantic analysis

机译:大规模潜在语义分析

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Latent semantic analysis (LSA) is a statistical technique for representing word meaning that has been widely used for making semantic similarity judgments between words, sentences, and documents. In order to perform an LSA analysis, an LSA space is created in a two-stage procedure, involving the construction of a word frequency matrix and the dimensionality reduction of that matrix through singular value decomposition (SVD). This article presents LANSE, an SVD algorithm specifically designed for LSA, which allows extremely large matrices to be processed using off-the-shelf computer hardware.
机译:潜在语义分析(LSA)是一种表示单词含义的统计技术,已广泛用于在单词,句子和文档之间进行语义相似性判断。为了执行LSA分析,在两步过程中创建了LSA空间,其中涉及字频率矩阵的构建以及通过奇异值分解(SVD)对该矩阵的降维。本文介绍了LANSE,这是一种专为LSA设计的SVD算法,它允许使用现成的计算机硬件处理超大型矩阵。

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