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Hierarchical text interaction for rating prediction

机译:评级预测的分层文本交互

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摘要

Traditional recommender systems encounter several challenges such as data sparsity and unexplained recommendation. To address these challenges, many works propose to exploit semantic information from review data. However, these methods have two major limitations in terms of the way to model textual features and capture textual interaction. For textual modeling, they simply concatenate all the reviews of a user/item into a single review. However, feature extraction at word/phrase level can violate the meaning of the original reviews. As for textual interaction, they defer the interactions to the prediction layer, making them fail to capture complex correlations between users and items. To address those limitations, we propose a novel Hierarchical Text Interaction model (HTI) for rating prediction. In HTI, we propose to model low-level word semantics and high-level review representations hierarchically. The hierarchy allows us to exploit textual features at different granularities. To further capture complex user-item interactions, we propose to exploit semantic correlations between each user-item pair at different hierarchies. At word level, we propose an attention mechanism specialized to each user-item pair, and capture the important words for representing each review. At review level, we mutually propagate textual features between the user and item, and capture the informative reviews. The aggregated review representations are integrated into a collaborative filtering framework for rating prediction. Experiments on five real-world datasets demonstrate that HTI outperforms stateof-the-art models by a large margin. Further case studies provide a deep insight into HTI's ability to capture semantic correlations at different levels of granularities for rating prediction. (C) 2020 Elsevier B.V. All rights reserved.
机译:传统的推荐系统遇到了多种挑战,如数据稀疏性和无法解释的建议。为解决这些挑战,许多作品建议从审查数据中利用语义信息。然而,这些方法在模拟文本特征和捕获文本交互的方式方面具有两个主要限制。对于文本建模,他们只是将用户/项目的所有审查连接到单一审查中。但是,Word /短语级别的特征提取可以违反原始评论的含义。对于文本交互,它们将与预测层的交互推迟,使得它们无法捕获用户和项目之间的复杂相关性。为了解决这些限制,我们提出了一种用于评级预测的新型层次文本交互模型(HTI)。在HTI中,我们建议在层次级别模拟低级词语语义和高级评论表示。层次结构允许我们利用不同粒度的文本特征。为了进一步捕获复杂的用户项交互,我们建议在不同层次结构处的每个用户项对之间利用语义相关性。在Word级别,我们提出了专门用于每个用户项对的注意机制,并捕获代表每次评论的重要单词。在审阅级别,我们相互传播用户和项目之间的文本功能,并捕获信息性评估。聚合审查表示融入了用于评级预测的协同过滤框架。五个真实数据集的实验表明,HTI以大边缘占据了最新的模型。进一步的案例研究对HTI捕获不同粒度粒度的语义相关性的能力深入了解,以进行评级预测。 (c)2020 Elsevier B.v.保留所有权利。

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