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Structured Neural Topic Models for Reviews

机译:结构化神经主题模型的评论

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We present Variational Aspect-based Latent Topic Allocation (VALTA), a family of autoencoding topic models that learn aspect-based representations of reviews. VALTA defines a user-item encoder that maps bag-of-words vectors for combined reviews associated with each paired user and item onto structured embeddings, which in turn define per-aspect topic weights. We model individual reviews in a structured manner by inferring an aspect assignment for each sentence in a given review, where the per-aspect topic weights obtained by the user-item encoder serve to define a mixture over topics, conditioned on the aspect. The result is an autoencoding neural topic model for reviews, which can be trained in a fully unsupervised manner to learn topics that are structured into aspects. Experimental evaluation on large number of datasets demonstrates that aspects are interpretable, yield higher coherence scores than non-structured autoencoding topic model variants, and can be utilized to perform aspect-based comparison and genre discovery.
机译:我们介绍了基于变体的潜在主题分配(VALTA),这是一个自动编码的主题模型系列,可以学习基于方面的评论表示形式。 VALTA定义了一个用户项目编码器,该代码将用于与每个配对的用户和项目相关联的组合评论的词袋矢量映射到结构化嵌入中,该嵌入依次定义了每个方面的主题权重。我们通过推断给定评论中每个句子的方面分配,以结构化的方式对单个评论进行建模,其中,用户-项目编码器获得的每个方面的主题权重用于定义主题方面的混合主题。结果是一个用于评论的自动编码神经主题模型,可以以完全无监督的方式对其进行训练,以学习组织成方面的主题。对大量数据集的实验评估表明,方面是可解释的,比非结构化自动编码主题模型变体具有更高的连贯性评分,并且可用于执行基于方面的比较和体裁发现。

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