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JEAM: A Novel Model for Cross-Domain Sentiment Classification Based on Emotion Analysis

机译:jeam:基于情感分析的跨域情绪分类的新模型

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Cross-domain sentiment classification (CSC) aims at learning a sentiment classifier for unlabeled data in the target domain based on the labeled data from a different source domain. Due to the differences of data distribution of two domains in terms of the raw features, the CSC problem is difficult and challenging. Previous researches mainly focused on concepts mining by clustering words across data domains, which ignored the importance of authors' emotion contained in data, or the different representations of the emotion between domains, hi this paper, we propose a novel framework to solve the CSC problem, by modelling the emotion across domains. We first develop a probabilistic model named JEAM to model author's emotion state when writing. Then, an EM algorithm is introduced to solve the likelihood maximum problem and to obtain the latent emotion distribution of the author. Finally, a supervised learning method is utilized to assign the sentiment polarity to a given online review. Experiments show that our approach is effective and outperforms state-of-the-art approaches.
机译:跨域情感分类(CSC)旨在基于来自不同源域的标记数据来学习目标域中的未标记数据的情感分类器。由于两个域在原始特征方面的数据分布的差异,CSC问题是困难和具有挑战性的。以前的研究主要集中在跨数据领域的群体群体挖掘,这忽略了作者情绪中所包含的作者情绪的重要性,或者在域之间的情感的不同表现,嗨本文,我们提出了一种解决CSC问题的新框架,通过跨越域的情感来建立。我们首先在写作时开发名为Jeam的概率模型来模拟作者的情感状态。然后,引入了EM算法以解决可能性最大问题,并获得作者的潜在情绪分布。最后,利用监督学习方法将情调极性分配给给定的在线审查。实验表明,我们的方法是有效和优于最先进的方法。

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