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Exploring sentiment parsing of microblogging texts for opinion polling on chinese public figures

机译:探索微博文本的情感分析,以对中国公众人物进行民意调查

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摘要

Microblogging websites such as twitter and Sina Weibo have attracted many users to share their experiences and express their opinions on a variety of topics, making them ideal platforms on which to conduct electronic opinion polls on products, services and public figures. However, conventional sentiment analysis methods for microblogging messages may not meet the demands of opinion polls for public figures. Therefore, in this study, we focus mainly on the problem of sentiment analysis for opinion polling on Chinese public figures. We propose a sentiment parsing-based architecture, which represents and labels opinion targets and their corresponding sentiments jointly to avoid the mismatching of them, for opinion poll of public figures using microblogs. Furthermore, we formulate sentiment parsing of microblogging sentences as a sequence labeling problem and adapt different Recurrent Neural Network (RNN) models to train and infer the model. Our experimental results demonstrate that the proposed sentiment parsing-based methods achieve better performance than conventional sentiment score-based methods in opinion polling on public figures using microblogs.
机译:微博网站(例如twitter和新浪微博)吸引了许多用户分享他们的经验并表达对各种主题的意见,这使它们成为进行产品,服务和公众人物电子民意调查的理想平台。但是,用于微博消息的常规情感分析方法可能无法满足民意测验的需求。因此,在本研究中,我们主要关注针对中国公众人物进行民意测验的情感分析问题。我们提出了一种基于情感分析的架构,该架构可以联合表示和标记意见目标及其相应的情感,以避免它们不匹配,以便使用微博对公众人物进行意见调查。此外,我们将微博句子的情感分析公式化为序列标签问题,并采用不同的递归神经网络(RNN)模型来训练和推断该模型。我们的实验结果表明,在使用微博对公众人物进行民意调查时,基于情感分析的方法比基于传统情感评分的方法具有更好的性能。

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