基于隐主题建模的评审质量预测与分类方法

Hoan Tran Quoc, H. Ochiai, H. Esaki
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引用次数: 1

摘要

随着在线评论数量的迅速增加,在线评论质量的自动评估变得越来越重要。为了帮助确定评论的质量,一些在线服务提供了一个系统,用户可以评估或反馈评论的有用性,作为众包知识。该方法存在投票数据稀疏和“越富越富”的问题,其中赞成评论的投票频率高于其他评论。在这项工作中,我们使用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)方法挖掘所有评论的隐藏主题分布信息,并提出基于评论质量概率意义的主管预测模型。我们还提出了一个深度神经网络来对评论的质量进行分类,并在一些真实的评论数据集中验证我们的建议。研究表明,使用隐藏主题分布信息有助于提高评论质量预测和分类的准确性。
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Hidden topics modeling approach for review quality prediction and classification
The automatic assessment of online review's quality is becoming important with the number of reviews increasing rapidly. In order to help determining review's quality, some online services provide a system where users can evaluate or feedback the helpfulness of review as crowdsourcing knowledge. This approach has shortcomings of sparse voted data and richer-get-richer problem in which favor reviews are voted frequently more than others. In this work, we use Latent Dirichlet Allocation (LDA) method to exploit hidden topics distribution information of all reviews and propose supervisor prediction model based on probabilistic meaning of the review's quality. We also propose a deep neural network to classify the review in quality and validate our proposals within some real reviews datasets. We demonstrate that using hidden topics distribution information could be helpful to improve the accuracy of review quality prediction and classification.
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