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Accurate and Explainable Recommendation via Hierarchical Attention Network Oriented Towards Crowd Intelligence

机译:通过针对人群智能的分层关注网络准确和解释的建议

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Review-based recommendation algorithms can alleviate the data sparsity issue in collaborative filtering by combining user ratings and reviews in model learning. However, most existing methods simplify the feature extraction process from reviews by assuming that different granularities of information (e.g., word, review, and feature) are equally important, which cannot optimally leverage the most important information and thus achieves suboptimal recommendation accuracy. Besides, many existing works directly regard text features as users or items representations, which may not be enough to make precise representations due to the large amount of redundant information in reviews. To tackle the two problems mentioned above, we propose a deep learning-based method named Hierarchical Attention Network Oriented Towards Crowd Intelligence (HANCI). First, HANCI replaces the commonly-used topic models or CNN text processor with an RNN text processor in review feature extraction, which can fully exploit the advantages of the sequential dependencies of reviews by using the whole hidden layers of the bidirectional LSTM as outputs. Second, HANCI weighs the importance of features guided by crowd intelligence to more accurately represent each user on each item, and vice versa. Third, HANCI utilizes a hierarchical attention network based on multi-level review text analysis to extract more precise user preferences and item latent features, so that HANCI can explore the importance of words, the usefulness of reviews and the importance of features to achieve more accurate recommendation. Extensive experiments on three public datasets show that HANCI outperforms the state-of-the-art review-based recommendation algorithms in accuracy and meanwhile provides insightful explanations. (C) 2020 Elsevier B.V. All rights reserved.
机译:审查的推荐算法可以通过在模型学习中结合用户评级和评论来缓解协作过滤中的数据稀疏问题。然而,大多数现有方法通过假设信息的不同粒度(例如,单词,审查和特征)同样重要的评论来简化来自审查的特征提取过程,这不能最佳地利用最重要的信息,从而实现了次优推荐准确性。此外,许多现有的作品直接将文本功能视为用户或项目表示,这可能不足以使由于评论中的大量冗余信息产生精确的表示。为了解决上述两个问题,我们提出了一种基于深入的学习方法,名为朝向人群智力(HANCI)的分层关注网络。首先,HANCI替换了常用的主题模型或CNN文本处理器,通过RNN文本处理器进行了审阅功能提取,可以通过使用双向LSTM的整个隐藏层作为输出来充分利用顺序依赖性的优势。其次,Hanci重量通过人群智能引导的功能的重要性,以更准确地代表每个项目的每个用户,反之亦然。第三,Hanci基于多级评论文本分析利用分层关注网络,提取更多精确的用户偏好和项目潜在功能,使得HANCI可以探讨单词的重要性,评论的有用性以及功能更准确的功能的重要性和重要性推荐。在三个公共数据集上的广泛实验表明,HANCI以准确性的基于最先进的审查推荐算法表明,同时提供了富有洞察力的解释。 (c)2020 Elsevier B.v.保留所有权利。

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