面向推荐的情感主题矩阵分解模型

Xiaoteng Wang, Bo Yang
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引用次数: 4

摘要

传统的推荐系统模型隐矩阵分解只使用评分,而忽略了评论文本中隐藏的信息。近年来,有一些基于潜在矩阵分解的模型利用评论。他们大多使用评论中的主题,因为评论中的主题可以很好地捕捉到项目的特征。然而,他们忽略了评论中包含的情感,而评论中隐藏的情感反映了用户的偏好。在本文中,我们提出了一种新的矩阵分解模型,该模型同时考虑了评论和评级中涉及的情感和主题。在实际数据集上的实验结果表明,我们的模型达到了目前最先进的模型的性能,并且我们的模型具有更好的可解释性,特别是在用户偏好方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STMF: A Sentiment Topic Matrix Factorization Model for Recommendation
Traditional recommender system model latent matrix factorization only use the ratings but ignore the information hidden in reviews text. In recent years, there have been some models based on latent matrix factorization exploiting reviews. Most of them use the topics in reviews because the topics in reviews can capture item features well. However, they missed the sentiment contained in reviews while the sentiment hidden in reviews reflects user preference. In this paper, we propose a novel matrix factorization model which simultaneously considers sentiment and topics involved in reviews and ratings as well. Experimental results on real datasets show that our model reached the performance of state of the art models, and our model has better interpretability especially in user preference.
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