Measuring documents similarity in large corpus using MapReduce algorithm

Marouane Birjali, A. B. Hssane, M. Erritali
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引用次数: 5

Abstract

Document similarity measures between documents and queries has been extensively studied in information retrieval. Measuring the similarity of documents are crucial components of many text-analysis tasks, including information retrieval, document classification, and document clustering. However, there are a growing number of tasks that require computing the similarity between two very short segments of text. There exist a large number of composed documents in a large amount of corpus. Most of them are required to compute the similarity for validation. In this paper, we propose our approach of measuring similarity between documents in large amount of corpus. For evaluation, we compare the proposed approach with other approaches previously presented by using our new MapReduce algorithm. Simulation results, on Hadoop framework, show that our new MapReduce algorithm outperforms the classical ones in term of running time performance and increases the value of the similarity.
使用MapReduce算法测量大型语料库中的文档相似度
文档和查询之间的文档相似度度量在信息检索中得到了广泛的研究。度量文档的相似性是许多文本分析任务的关键组成部分,包括信息检索、文档分类和文档聚类。然而,越来越多的任务需要计算两个非常短的文本片段之间的相似性。在大量的语料库中存在着大量的组合文档。其中大多数都需要计算验证的相似度。在本文中,我们提出了一种测量大量语料库中文档之间相似度的方法。为了评估,我们将所提出的方法与之前使用我们的新MapReduce算法提出的其他方法进行了比较。在Hadoop框架上的仿真结果表明,新的MapReduce算法在运行时间性能上优于经典算法,并提高了相似度值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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