基于最大熵和k均值聚类的意见分类

A. Hamzah, Naniek Widyastuti
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引用次数: 8

摘要

学术问卷的回答通常包含许多评论、建议和建议。由于缺乏处理方法,该响应没有系统地处理。而这些信息作为决策的额外来源可能非常有用。意见挖掘非常适合解决这个问题。本研究的目的是利用最大熵(ME)和k -均值聚类(KMC)建立意见分类系统。待分类的意见是来自学术问卷的印尼语文本评论。分类分为两类,即消极意见和积极意见。数据包含2000条评论,这些评论被采样为多领域意见,代表许多对象,如讲师,教室等。从意见文本中的单词中选择用于分类的特征。我们用于聚类的加权方案是TF/IDF。结果表明,与ME相比,K-Means聚类具有更好的性能,平均精度约为3%。使用2000个文本意见时,KMC的执行速度也比ME快约25毫秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion classification using Maximum Entropy and K-Means Clustering
responds from academic questionnaire generally contains many comments, advice and suggestions. This responds is not processed systematically due to lack of method to process. whereas such information might be very useful as additional source in decision making. Opinion mining is well suited to address the issue. The objective of this study is to develop opinion classification system using Maximum entropy (ME)) and K-Means Clustering (KMC). Opinion to be classified was Indonesian textual comments from academic questionnaire. Classification was conducted into two classes, i.e. negative opinion and positive opinion. Data contained of 2000 comments that was sampled as multi domain opinion, represented many objects such as lecturer, class room, etc. Features used for classification was selected from word in the opinion text. The weighting scheme that we used for clustering was TF/IDF. The results show that K-Means Clustering gives better performance as compared with ME in averages about 3% precision. KMC also perform faster than ME about 25 msec using 2000 text opinion.
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