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Topic and Sentiment Analysis Matrix Factorization on Rating Prediction for Recommendation

机译:主题与情感分析矩阵分解推荐评级预测

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In today's online services, users' feedback such as numerical rating, textual review, time of purchase and so on for each product is often encouraged to provide. Many recommender systems predict the products that the users may like and purchase in the future using users' historical ratings. With the increase of user data in the systems, more detailed and interpretable information about product features and user sentiments can be extracted from textual reviews that are relative to ratings. In this paper, we propose a novel topic and sentiment matrix factorization model, which leverages both topic and sentiment drawn from the reviews simultaneously. First, we conduct topic analysis and sentiment analysis on reviews using Latent Dirichlet Allocation (LDA) and a lexicon construction technique, respectively. Second, we combine the user consistency, which is calculated from his/her reviews and ratings, and helpful votes from other users on reviews to obtain a reliability measure to weight the ratings. Third, we integrate the obtained reliability measure and the results of the topic and sentiment analysis of reviews into the matrix factorization framework for prediction. Our experimental comparison using eight Amazon datasets indicates that the proposed method significantly improves performance compared to traditional matrix factorization up to 20.82%.
机译:在今天的在线服务中,用户通常鼓励用户的反馈,例如数值评级,文本评估,购买时间等,以提供每种产品。许多推荐系统预测用户可能在将来购买的产品使用用户的历史评级。随着系统中的用户数据的增加,可以从相对于额定值的文本评语中提取有关产品特征和用户情绪的更详细和可解释的信息。在本文中,我们提出了一种新颖的主题和情绪矩阵分解模型,其利用同时从评论中汲取的主题和情绪。首先,我们分别使用潜在Dirichlet分配(LDA)和Lexicon施工技术进行主题分析和情绪分析。其次,我们将用户一致性结合起来,该审核和评级从其他用户的评论和评级计算,并在评论中有用的投票获取可靠性措施来重量评级。第三,我们将获得的可靠性措施与审核审查的主题和情感分析集成到预测中的综述和情感分析。我们使用八个亚马逊数据集的实验比较表明,与传统的矩阵分解相比,所提出的方法显着提高了高达20.82%的性能。

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