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Limbic: Author-Based Sentiment Aspect Modeling Regularized with Word Embeddings and Discourse Relations

机译:Limbic:基于词嵌入和语篇关系的基于作者的情感方面建模

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We propose Limbic, an unsupervised probabilistic model that addresses the problem of discovering aspects and sentiments and associating them with authors of opinionated texts. Limbic combines three ideas, incorporating authors, discourse relations, and word embeddings. For discourse relations, Limbic adopts a generative process regularized by a Markov Random Field. To promote words with high semantic similarity into the same topic, Limbic captures semantic regularities from word embeddings via a generalized Polya Urn process. We demonstrate that Limbic (1) discovers aspects associated with sentiments with high lexical diversity; (2) outperforms state-of-the-art models by a substantial margin in topic cohesion and sentiment classification.
机译:我们提出了Limbic,一种无监督的概率模型,该模型解决了发现方面和情感并将其与观点文章的作者联系起来的问题。 Limbic结合了三种思想,包括作者,话语关系和词嵌入。对于话语关系,Limbic采用了由马尔可夫随机场正则化的生成过程。为了将具有高度语义相似性的单词推广到同一主题中,Limbic通过广义Polya Urn过程从单词嵌入中捕获语义规律性。我们证明了Limbic(1)发现了与词法多样性高的情感相关的方面; (2)在主题凝聚力和情感分类上的表现大大优于最新模型。

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