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Aspect Categorization Using Domain-Trained Word Embedding and Topic Modelling

机译:使用域训练的单词嵌入和主题建模的方面分类

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Abstract Aspect-based sentiment analysis is the most important research topic conducted to extract and categorize aspect-terms from online reviews. Recent efforts have shown that topic modelling is vigorously used for this task. In this paper, we integrated word embedding into collapsed Gibbs sampling in Latent Dirichlet Allocation (LDA). Specifically, the conditional distribution in the topic model is improved using the word embedding model that was trained against (customer review) training dataset. Semantic similarity (cosine measure) was leveraged to distribute the aspect-terms to their related aspect-category cognitively. The experiment was conducted to extract and categorize the aspect terms from SemEval 2014 dataset.
机译:摘要基于方面的情感分析是从在线评论中提取和分类方面的最重要的研究主题。最近的努力表明,主题建模是大力用于此任务的。在本文中,我们将嵌入的单词集成到倒塌的Gibbs采样中的潜在Dirichlet分配(LDA)。具体而言,使用针对(客户评估)训练数据集的单词嵌入模型来改进主题模型中的条件分布。利用语义相似性(余弦测量)以认知地分配与其相关方面类别的方面术语。进行实验以从Semeval 2014数据集中提取和分类方面术语。

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