An Empirical Evaluation of Dimensionality Reduction Using Latent Semantic Analysis on Hindi Text

Karthik Krishnamurthi, Ravi Kumar Sudi, Vijayapal Reddy Panuganti, Vishnu Vardhan Bulusu
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引用次数: 4

Abstract

Dimensionality reduction is the process of deriving an approximate representation of a dataset, that can reflect most of the correlations underlying within the dataset. In the context of text processing, dimensionality reduction is used for transforming any text to a precise representation that efficiently identifies the main insights of the original text. LSA(Latent Semantic Analysis) is a technique that is used to find correlations between words and sentences based on the usage of words within the text. This paper addresses the issue of dimensionality reduction in representing relevant data from Hindi text using LSA. An empirical evaluation is performed to find the influence of language complexity and influence of various weighting schemes on dimensionality reduction. The results are presented using the standard measures such as recall, precision and F-score.
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基于潜在语义分析的印地语文本降维效果的实证评价
降维是导出数据集的近似表示的过程,它可以反映数据集内部的大多数相关性。在文本处理的上下文中,降维用于将任何文本转换为精确的表示,从而有效地识别原始文本的主要见解。LSA(Latent Semantic Analysis,潜在语义分析)是一种基于文本中单词的用法来查找单词和句子之间相关性的技术。本文解决了使用LSA表示印地语文本相关数据时的降维问题。实证分析了语言复杂度和不同权重方案对降维的影响。结果采用召回率、准确率和f分等标准测量方法。
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