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Opinion Mining on Non-English Short Text

机译:非英语短文本的观点挖掘

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摘要

As the type and the number of such venues increase, automated analysis of sentiment on textual resources has become an essential data mining task. In this paper, we investigate the problem of mining opinions on the collection of informal short texts. Both positive and negative sentiment strength of texts are detected. We focus on a non-English language that has few resources for text mining. This approach would help enhance the sentiment analysis in languages where a list of opinionated words does not exist. We present a new method to automatically construct a list of words with their sentiment strengths. Then, we propose a new method projects the text into dense and low dimensional feature vectors according to the sentiment strength of the words. We detect the mixture of positive and negative sentiments on a multi-variant scale. Empirical evaluation of the proposed framework on Turkish tweets shows that our approach gets good results for opinion mining.
机译:随着此类场所的类型和数量的增加,对文本资源的情感进行自动分析已成为一项必不可少的数据挖掘任务。在本文中,我们研究了在收集非正式短文方面挖掘观点的问题。可以检测文本的正面和负面情绪强度。我们专注于一种非英语语言,该语言几乎没有用于文本挖掘的资源。这种方法将有助于增强不存在已列出的单词列表的语言中的情感分析。我们提出了一种新方法,可自动构建具有情感优势的单词列表。然后,我们提出了一种根据单词的情感强度将文本投影到密集和低维特征向量中的新方法。我们在多变量尺度上检测到正面情绪和负面情绪的混合。对拟议的土耳其推文框架的实证评估表明,我们的方法在观点挖掘方面取得了良好的结果。

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