DICO-2:基于机器学习分类器的教育意见挖掘语境化词汇资源DICO的改进

Melissa Oussaid, Samia Lazib, Farida Bouarab-Dahmani, N. Cullot
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引用次数: 0

摘要

意见挖掘是目前最活跃的研究领域之一。它旨在分析人们的感受,这使得它成为决策过程中的一个重要因素。它被引入到不同的领域,特别是在教育领域。这项工作的目的是通过重新计算极性来改进一个叫做DICO的词汇资源,该资源是我们在之前的教育意见挖掘工作中提出的,以改进意见检测过程。这种改进是通过使用EDUCA训练机器学习分类器来完成的,EDUCA是一个从教育社区构建的语料库,包括一组手动注释的主观评论。这种方法是使用允许生成分类模型的WEKA平台实现的。这些模型对词汇资源DICO的术语进行分类,并利用这些模型所具有的极性进行重新计算,从而得到一个更好的词汇资源DICO-2。最后通过比较使用DICO和使用DICO-2的EDUCA语料库的分类来评估这一点。结果表明,随着性能的提高,特别是准确率的提高,意见分类效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DICO-2 : An Improvement of the Contextualized Lexical Resource DICO for Educational Opinion Mining Using Machine Learning Classifiers
Opinion mining is currently considered one of the most active research fields. It aims to analyze people's feelings, which makes it an important element in the decision-making process. It is introduced in different fields, especially in the education one. The objective of this work is to improve a lexical resource called DICO, which we have presented in our previous works for educational opinion mining, through a recalculation of polarities, in order to improve the opinion detection process. This improvement is done by training machine learning classifiers with EDUCA, a corpus built from educational communities, including a set of manually annotated subjective comments. This approach is implemented using the WEKA platform which allows the generation of classification models. These models classify the terms of the lexical resource DICO and, the polarities attributed by these models are used for their recalculation to get a better lexical resource called DICO-2. This last is evaluated by comparing the classification of the EDUCA corpus using DICO with that one using DICO-2. The results obtained show a better classification of opinions with increase of the performance, especially the accuracy.
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