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Meta-Graph Based Attention-Aware Recommendation over Heterogeneous Information Networks

机译:异构信息网络上基于元图的注意力感知推荐

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Heterogeneous information network (HIN), which involves diverse types of data, has been widely used in recommender systems. However, most existing HINs based recommendation methods equally treat different latent features and simply model various feature interactions in the same way so that the rich semantic information cannot be fully utilized. To comprehensively exploit the heterogeneous information for recommendation, in this paper, we propose a Meta-Graph based Attention-aware Recommendation (MGAR) over HINs. First of all, MGAR utilizes rich meta-graph based latent features to guide the heterogeneous information fusion recommendation. Specifically, in order to discriminate the importance of latent features generated by different meta-graphs, we propose an attention-based feature enhancement model. The model enables useful features and useless features contribute differently to the prediction, thus improves the performance of the recommendation. Furthermore, to holistically exploit the different interrelation of features, we propose a hierarchical feature interaction method which consists three layers of second-order interaction to mine the underlying correlations between users and items. Extensive experiments show that MGAR outperforms the state-of-the-art recommendation methods in terms of RMSE on Yelp and Amazon Electronics.
机译:涉及多种类型数据的异构信息网络(HIN)已广泛用于推荐系统。然而,大多数现有的基于HIN的推荐方法均等地对待不同的潜在特征,并以相同的方式简单地对各种特征交互进行建模,从而无法充分利用丰富的语义信息。为了全面利用异构信息进行推荐,我们在HIN上提出了一种基于元图的注意力感知推荐(MGAR)。首先,MGAR利用基于丰富元图的潜在特征来指导异构信息融合建议。具体来说,为了区分由不同的元图生成的潜在特征的重要性,我们提出了一种基于注意力的特征增强模型。该模型使有用的功能和无用的功能对预测的贡献不同,从而提高了建议的性能。此外,为了整体地利用特征的不同相互关系,我们提出了一种层次特征交互方法,该方法由三层二阶交互组成,以挖掘用户和项目之间的潜在相关性。大量实验表明,就Yelp和Amazon Electronics上的RMSE而言,MGAR优于最新的推荐方法。

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