Authors
Fajie Yuan, Alexandros Karatzoglou, Ioannis Arapakis, Joemon M Jose, Xiangnan He
Publication date
2019/1/30
Book
Proceedings of the twelfth ACM international conference on web search and data mining
Pages
582-590
Description
Convolutional Neural Networks (CNNs) have been recently introduced in the domain of session-based next item recommendation. An ordered collection of past items the user has interacted with in a session (or sequence) are embedded into a 2-dimensional latent matrix, and treated as an image. The convolution and pooling operations are then applied to the mapped item embeddings. In this paper, we first examine the typical session-based CNN recommender and show that both the generative model and network architecture are suboptimal when modeling long-range dependencies in the item sequence. To address the issues, we introduce a simple, but very effective generative model that is capable of learning high-level representation from both short- and long-range item dependencies. The network architecture of the proposed model is formed of a stack of holed convolutional layers, which can efficiently …
Total citations
20192020202120222023202425538811317287
Scholar articles
F Yuan, A Karatzoglou, I Arapakis, JM Jose, X He - Proceedings of the twelfth ACM international …, 2019