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Mine the Easy, Classify the Hard: A Semi-Supervised Approach to Automatic Sentiment Classification

机译:我很容易,分类难题:半监督自动情绪分类的方法

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Supervised polarity classification systems are typically domain-specific. Building these systems involves the expensive process of annotating a large amount of data for each domain. A potential solution to this corpus annotation bottleneck is to build unsupervised polarity classification systems. However, unsupervised learning of polarity is difficult, owing in part to the prevalence of sentimentally ambiguous reviews, where reviewers discuss both the positive and negative aspects of a product. To address this problem, we propose a semi-supervised approach to sentiment classification where we first mine the unambiguous reviews using spectral techniques and then exploit them to classify the ambiguous reviews via a novel combination of active learning, transductive learning, and ensemble learning.
机译:监督极性分类系统通常是特定于域的。建立这些系统涉及为每个域注释大量数据的昂贵过程。该语料库注释瓶颈的潜在解决方案是构建无监督的极性分类系统。然而,由于思想歧义评论的普遍普遍存在,审查人员讨论了产品的正面和负面方面,因此难以难以置信的极性。为了解决这个问题,我们提出了一个半监督的情绪分类方法,我们首先使用光谱技术挖掘明确的审查,然后利用他们通过主动学习,转换学习和集合学习的新组合来分类歧义评论。

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