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Examining the Impact of Feature Selection on Sentiment Analysis for the Greek Language

机译:检查特征选择对希腊语情感分析的影响

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Sentiment analysis identifies the attitude that a person has towards a service, a topic or an event and it is very useful for companies which receive many written opinions. Research studies have shown that the determination of sentiment in written text can be accurately determined through text and part of speech features. In this paper, we present an approach to recognize opinions in Greek language and we examine the impact of feature selection on the analysis of opinions and the performance of the classifiers. We analyze a large number of feedback and comments from teachers towards e-learning, life-long courses that have attended with the aim to specify their opinions. A number of text-based and part of speech based features from textual data are extracted and a generic approach to analyze text and determine opinion is presented. Evaluation results indicate that the approach illustrated is accurate in specifying opinions in Greek text and also sheds light on the effect that various features have on the classification performance.
机译:情绪分析可以确定一个人对服务,主题或事件的态度,这对于收到许多书面意见的公司非常有用。研究表明,通过文本和部分语音功能可以准确地确定书面文本中的情感。在本文中,我们提出了一种识别希腊语意见的方法,并研究了特征选择对意见分析和分类器性能的影响。我们分析了教师对在线学习,终身课程的大量反馈和评论,这些课程旨在阐明他们的观点。从文本数据中提取了许多基于文本和基于语音的功能,并提出了一种用于分析文本和确定意见的通用方法。评价结果表明,所说明的方法在指定希腊文本中的意见时是准确的,并且还阐明了各种功能对分类性能的影响。

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