文本文档集群的Apache Spark实现

Elias Dritsas, M. Trigka, Gerasimos Vonitsanos, Andreas Kanavos, Phivos Mylonas
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引用次数: 0

摘要

由于每天生成和存储的数据量不断增加,因此需要找到能够自动从中发现信息的技术。使用文本挖掘可以有效地解决这一问题,文本挖掘使用了源自数据挖掘、信息检索、机器学习以及自然语言处理的方法。本文通过高效地利用云计算基础设施中的聚类技术,解决了从大量文档中提取文本信息的问题。聚类采用三种不同的算法,即k-Means、bisiting k-Means和高斯混合模型(GMM)。为了评估这些方法的质量,我们在Apache Spark分布式环境中对几个知名的数据集进行了实验,这些数据集的文档都是手动聚类的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Apache Spark Implementation for Text Document Clustering
As the volume of data generated and stored on a daily basis is constantly increasing, the need for finding techniques in terms of the automated discovery of information from them has arisen. This purpose can be effectively solved with the use of text mining, which uses methods derived from data mining, information retrieval, machine learning, as well as natural language processing. This paper addresses the problem of extracting textual information from large collections of documents by efficiently exploiting clustering techniques in a cloud computing infrastructure. The clustering was performed using three different algorithms, namely k-Means, Bisecting k-Means, and Gaussian Mixture Model (GMM). To evaluate the quality of these methods, we experimented in the Apache Spark distributed environment, on several well-known datasets, the documents of which have been manually clustered.
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