利用印尼语情感词典和Sentiwordnet的词汇资源对公众投诉进行情感分析

M. Lailiyah, S. Sumpeno, I. Purnama
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引用次数: 18

摘要

公众投诉是公众对公共服务实施的一种参与和意识。来自公众投诉的信息可以被政府用来提高公众满意度。此外,政府可以通过社交媒体或政府官方网站上的公众投诉来获取民意。人们对情感分析进行了各种各样的研究,或采用统计方法,或采用语义方法,或两者兼而有之。统计学方法被广泛采用。而语义方法是近年来研究的热点。在语义方法上,词汇资源是文本分类情感的重要组成部分。即Sentiwordnet和印尼情感词典。目前,用于情感分析的印尼语词汇资源有所增加。但是词典没有极性分数,可以像Sentiwordnet那样测量文本的情感。情感词网在英语研究中得到了广泛的应用。在本研究中,我们应用Sentiwordnet对印尼公众投诉的情绪进行分类,在媒体Twitter上的准确率为47%,在官方政府网站的数据上的准确率为56.85%。此外,我们将其与印尼语情绪词汇进行比较,在媒体Twitter上的准确率为65.4%,在社交政府网站上的准确率为81.4%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment analysis of public complaints using lexical resources between Indonesian sentiment lexicon and Sentiwordnet
Public complaints were one of the kinds of public participation and awareness to public service implementation. Information from public complaints can be used by the government to improve public satisfaction. In addition, the government can obtain public sentiment from public complaints either on media social or the official government site. Many kinds of research on sentiment analysis have been done, either used statistical method approach, semantic method approach or both. Statistical method approach was widely used. While semantic method approach being the hot topic recently. On semantic method approach, lexical resource was an important component to classily sentiment on text. Namely Sentiwordnet and Indonesian sentiment lexicon. Currently, Indonesian lexical resources for sentiment analysis has grown. But the lexicon doesn't have polarity score that can be measure emotion on text like Sentiwordnet. Sentiwordnet has been widely used on research in English. In this research, we apply Sentiwordnet to classify sentiment on Indonesian public complaints with accuracy 47% either on media Twitter and 56.85% on the official government website's data. Furthermore, we compare it with Indonesian sentiment lexical and get the accuracy 65.4% on media Twitter and 81.4% on the of Ticial government website
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