2020
DOI: 10.1109/access.2020.3002102
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Dual Relations Network for Collaborative Filtering

Abstract: Collaborative filtering (CF) is one of the most effective and popular recommendation methods. Deep learning has achieved great success in various tasks and extensive work has applied deep learning into collaborative filtering. However, existing deep learning based CF methods only capture either user-item relations (users' affection for target items) or item-item relations (association between target items and users' historical items), which may lead to sub-optimal recommendation accuracy. In this paper, we pro… Show more

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Cited by 6 publications
(5 citation statements)
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“…China's tourism industry has achieved a historic leap and has developed into a comprehensive industry with the participation of the whole population and a high degree of industrial integration. It is in the period of building a well-off tourism power in an all-round way, and it will step into the ranks of a preliminary affluent tourism power [7]. Because the traffic demand for the tourist highway network is closely related to the value of tourist resources, the traditional highway network planning method is only partially appropriate for tourist highway network planning and there is little research on fully integrating tourist traffic into tourist highway planning.…”
Section: R E T R a C T E D R E T R A C T E D R E T R A C T E D R E T ...mentioning
confidence: 99%
“…China's tourism industry has achieved a historic leap and has developed into a comprehensive industry with the participation of the whole population and a high degree of industrial integration. It is in the period of building a well-off tourism power in an all-round way, and it will step into the ranks of a preliminary affluent tourism power [7]. Because the traffic demand for the tourist highway network is closely related to the value of tourist resources, the traditional highway network planning method is only partially appropriate for tourist highway network planning and there is little research on fully integrating tourist traffic into tourist highway planning.…”
Section: R E T R a C T E D R E T R A C T E D R E T R A C T E D R E T ...mentioning
confidence: 99%
“…Thus, the dimension of user feature vector equals to the dimension of N. As in [16,25], the work here also attempts aims to use just user ratings and no other additional information to gain good rating prediction performance.…”
Section: User Rating Matrix Representationmentioning
confidence: 99%
“…Now, the serial numbers of the movie which are discontinuous are processed in a such way that all rated movies hold serial number in sequence. Furthermore, since these two datasets contain explicit user feedbacks, the strategy as in [25,30] is followed to get implicit user feedback ignoring the user rating stars and retaining just the user rating signal. Also, following the same experimental setup as in [29], we divide the observed ratings using 80/20 split to create training and testing set respectively.…”
Section: Datasetsmentioning
confidence: 99%
“…So far, the problem has been investigated and assessed from different disciplines and scientific perspectives, while methodologies that rely on the use of Machine Learning (ML) techniques and the integration of the generated models in broader computational/cognitive systems continuously receives increasing attention. One of the most popular examples of the latter category of methods constitutes the so called recommender systems (that aim to predict the preferences of each individual human user) [33][34] and especially the so-called 'collaborative filtering' class [35]. However, the introduced profiles so far model relatively simple types of human behavior aspects (e.g.…”
Section: Aggregationmentioning
confidence: 99%