Xing Xie
2020
Fine-grained Interest Matching for Neural News Recommendation
Heyuan Wang
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Fangzhao Wu
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Zheng Liu
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Xing Xie
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
Personalized news recommendation is a critical technology to improve users’ online news reading experience. The core of news recommendation is accurate matching between user’s interests and candidate news. The same user usually has diverse interests that are reflected in different news she has browsed. Meanwhile, important semantic features of news are implied in text segments of different granularities. Existing studies generally represent each user as a single vector and then match the candidate news vector, which may lose fine-grained information for recommendation. In this paper, we propose FIM, a Fine-grained Interest Matching method for neural news recommendation. Instead of aggregating user’s all historical browsed news into a unified vector, we hierarchically construct multi-level representations for each news via stacked dilated convolutions. Then we perform fine-grained matching between segment pairs of each browsed news and the candidate news at each semantic level. High-order salient signals are then identified by resembling the hierarchy of image recognition for final click prediction. Extensive experiments on a real-world dataset from MSN news validate the effectiveness of our model on news recommendation.
MIND: A Large-scale Dataset for News Recommendation
Fangzhao Wu
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Ying Qiao
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Jiun-Hung Chen
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Chuhan Wu
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Tao Qi
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Jianxun Lian
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Danyang Liu
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Xing Xie
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Jianfeng Gao
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Winnie Wu
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Ming Zhou
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
News recommendation is an important technique for personalized news service. Compared with product and movie recommendations which have been comprehensively studied, the research on news recommendation is much more limited, mainly due to the lack of a high-quality benchmark dataset. In this paper, we present a large-scale dataset named MIND for news recommendation. Constructed from the user click logs of Microsoft News, MIND contains 1 million users and more than 160k English news articles, each of which has rich textual content such as title, abstract and body. We demonstrate MIND a good testbed for news recommendation through a comparative study of several state-of-the-art news recommendation methods which are originally developed on different proprietary datasets. Our results show the performance of news recommendation highly relies on the quality of news content understanding and user interest modeling. Many natural language processing techniques such as effective text representation methods and pre-trained language models can effectively improve the performance of news recommendation. The MIND dataset will be available at https://msnews.github.io.
Graph Neural News Recommendation with Unsupervised Preference Disentanglement
Linmei Hu
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Siyong Xu
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Chen Li
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Cheng Yang
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Chuan Shi
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Nan Duan
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Xing Xie
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Ming Zhou
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
With the explosion of news information, personalized news recommendation has become very important for users to quickly find their interested contents. Most existing methods usually learn the representations of users and news from news contents for recommendation. However, they seldom consider high-order connectivity underlying the user-news interactions. Moreover, existing methods failed to disentangle a user’s latent preference factors which cause her clicks on different news. In this paper, we model the user-news interactions as a bipartite graph and propose a novel Graph Neural News Recommendation model with Unsupervised Preference Disentanglement, named GNUD. Our model can encode high-order relationships into user and news representations by information propagation along the graph. Furthermore, the learned representations are disentangled with latent preference factors by a neighborhood routing algorithm, which can enhance expressiveness and interpretability. A preference regularizer is also designed to force each disentangled subspace to independently reflect an isolated preference, improving the quality of the disentangled representations. Experimental results on real-world news datasets demonstrate that our proposed model can effectively improve the performance of news recommendation and outperform state-of-the-art news recommendation methods.
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Co-authors
- Fangzhao Wu 2
- Ming Zhou 2
- Heyuan Wang 1
- Zheng Liu 1
- Ying Qiao 1
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Venues
- ACL3