Context-Aware Co-attention Neural Network for Service Recommendations

Lei Li, Ruihai Dong, Li Chen
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引用次数: 5

Abstract

Context-aware recommender systems are able to produce more accurate recommendations by harnessing contextual information, such as consuming time and location. Further, user reviews as an important information resource, providing valuable information about users' preferences, items' aspects, and implicit contextual features, could be used to enhance the embeddings of users, items, and contexts. However, few works attempt to incorporate these two types of information, i.e., contexts and reviews, into their models. Recent state-of-the-art context-aware methods only characterize relations between two types of entities among users, items and contexts, which may be insufficient, as the final prediction is closely related to all the three types of entities. In this paper, we propose a novel model, named Context-aware Co-Attention Neural Network (CCANN), to dynamically infer relations between contexts and users/items, and subsequently to model the degree of matching between users' contextual preferences and items' context-aware aspects via co-attention mechanism. To better leverage the information from reviews, we propose an embedding method, named Entity2Vec, to jointly learn embeddings of different entities (users, items and contexts) with words in a textual review. Experimental results, on three datasets composed of millions of review records crawled from TripAdvisor, demonstrate that our CCANN significantly outperforms state-of-the-art recommendation methods, and Entity2Vec can further boost the model's performance.
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面向服务推荐的上下文感知协同关注神经网络
上下文感知推荐系统能够通过利用上下文信息(如消耗时间和位置)产生更准确的推荐。此外,用户评论作为一种重要的信息资源,提供了关于用户偏好、项目方面和隐式上下文特征的有价值的信息,可用于增强用户、项目和上下文的嵌入。然而,很少有作品试图将这两种类型的信息,即上下文和评论,合并到他们的模型中。最近最先进的上下文感知方法仅表征用户、项目和上下文之间两种实体之间的关系,这可能是不够的,因为最终的预测与所有三种类型的实体密切相关。在本文中,我们提出了一个新的模型,称为上下文感知共同注意神经网络(CCANN),动态推断上下文与用户/项目之间的关系,随后通过共同注意机制对用户的上下文偏好与项目的上下文感知方面的匹配程度进行建模。为了更好地利用评论中的信息,我们提出了一种名为Entity2Vec的嵌入方法,在文本评论中共同学习不同实体(用户、项目和上下文)与单词的嵌入。在从TripAdvisor抓取的数百万条评论记录组成的三个数据集上的实验结果表明,我们的CCANN显著优于最先进的推荐方法,而Entity2Vec可以进一步提高模型的性能。
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