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An effective hybrid model for opinion mining and sentiment analysis

机译:一种有效的意见采矿与情感分析的混合模型

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Sentiment analysis and opinion mining is a task to analyze people's opinions or sentiments from textual data, which is very useful for the analysis of many NLP applications. The difficulty of this task is that there are a variety of sentiments inside documents, and these sentiments have variety expressions. Hence, it is hard to extract all sentiments using a dictionary that is commonly used. In this paper, we construct the domain sentiment dictionary using external textual data. Besides, many classification models can be used to classify documents according to their opinion. However, these single models have strengths and weaknesses. We propose a highly effective hybrid model combining different single models to overcome their weaknesses. The experimental results show that our hybrid model outperforms baseline single models.
机译:情感分析和意见采矿是一种任务,可以分析文本数据的观点或情绪,这对于分析许多NLP应用是非常有用的。这项任务的难度是文档内部存在各种情绪,这些情绪有多种表达。因此,很难使用常用的字典提取所有情绪。在本文中,我们使用外部文本数据构建域情词典。此外,许多分类模型可用于根据他们的意见对文档进行分类。但是,这些单一型号具有优势和缺点。我们提出了一种高效的混合模型,组合不同的单一模型来克服他们的弱点。实验结果表明,我们的混合模型优于基线单一模型。

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