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Latent syntactic structure-based sentiment analysis

机译:基于局部杂志的情感分析

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摘要

People share their opinions about things like products, movies and services using social media channels. The analysis of these textual contents for sentiments is a gold mine for marketing experts, thus automatic sentiment analysis is a popular area of applied artificial intelligence. We propose a latent syntactic structure-based approach for sentiment analysis which requires only sentence-level polarity labels for training. Our experiments on three domains (movie, IT products, restaurant) show that a sentiment analyzer that exploits syntactic parses and has access only to sentence-level polarity annotation for in-domain sentences can outperform state-of-the-art models that were trained on out-domain parse trees with sentiment annotation for each node of the trees. In practice, millions of sentence-level polarity annotations are usually available for a particular domain thus our approach is applicable for training a sentiment analyzer for a new domain while it can exploit the syntactic structure of sentences as well.
机译:人们分享的东西同类产品,电影和服务的使用社交媒体渠道的意见。这些文本内容进行情感分析是一个金矿营销专家,从而自动情绪分析应用于人工智能的一个热点地区。我们提出这需要培训只有一句话级极性标签情感分析潜在的句法结构为基础的方法。我们对三个领域(电影,IT产品,餐厅)实验证明,它利用语法解析,而且仅有句级极性注释准入域内句子情感分析器可以超越的培训是国家的最先进的机型与情绪标注为树的每个节点外域解析树。在实践中,数以百万计语句级极性的注解通常可用于特定域因而我们的方法适用于训练情感分析器的一个新的领域,同时它可以利用句子的句法结构为好。

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