SentiWordNet分数适合多领域情感分类吗?

K. Denecke
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引用次数: 95

摘要

由于观点分析在多领域场景中的大量应用,本文研究了一种基于sentiti - wordnet作为词汇资源的多领域情感分析方法的潜力。SentiWordNet分数与其他功能一起利用机器学习为文本分配极性。另一方面,研究了基于情感得分的基于规则的方法。所介绍的方法在由六个不同域的文档组成的真实数据集的单个域上进行了测试,也在跨域设置中进行了测试。结果表明,对于跨领域情感分析,基于规则的固定意见词典方法是不适合的。对于基于机器学习的情感分类,混合不同领域的文档可以获得很好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Are SentiWordNet scores suited for multi-domain sentiment classification?
Motivated by the numerous applications of analysing opinions in multi-domain scenarios, this paper studies the potential of a still rarely considered approach to the problem of multi-domain sentiment analysis based on Senti-WordNet as lexical resource. SentiWordNet scores are exploited together with additional features to assign a polarity to a text using machine learning. On the other hand, a rule-based approach is studied based on sentiment scores. The introduced methods are tested on single domains of a real-world data set consisting of documents in six different domains, but also in cross-domain settings. The results show that for cross-domain sentiment analysis rule-based approaches with fix opinion lexica are unsuited. For machine-learning based sentiment classification a mixture of documents of different domains achieves good results.
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