The sequential recommendation, which models sequential behavioral patterns among users for the recommendation, plays a critical role in recommender systems. However, the state-of-the-art Recurrent Neural Networks (RNN) solutions rarely consider the non-linear feature interactions and non-monotone short-term sequential patterns, which are essential for user behavior modeling in sparse sequence data. In this paper, we propose a novel Recurrent Convolutional Neural Network model (RCNN). It not only utilizes the recurrent architecture of RNN to capture complex long-term dependencies, but also leverages the convolutional operation of Convolutional Neural Network (CNN) model to extract short-term sequential patterns among recurrent hidden states. Specifically, we first generate a hidden state at each time step with the recurrent layer. Then the recent hidden states are regarded as an “image”, and RCNN searches non-linear feature interactions and non-monotone local patterns via intra-step horizontal and inter-step vertical convolutional filters, respectively. Moreover, the output of convolutional filters and the hidden state are concatenated and fed into a fully-connected layer to generate the recommendation. Finally, we evaluate the proposed model using four real-world datasets from various application scenarios. The experimental results show that our model RCNN significantly outperforms the state-of-the-art approaches on sequential recommendation. © 2019 IW3C2 (International World Wide Web Conference Committee), published under Creative Commons CC-BY 4.0 License.
Vadin James SudarsanMd Masbaul Alam Polash
Zhicheng ZhouBi LiangYujie Zhang
Qi ChenGuohui LiQuan ZhouSi ShiDeqing Zou
Jinjin ZhangChenhui MaXiaodong MuPeng ZhaoChengliang ZhongA Ruhan
Shiyu PengJiaxing SongWeidong LiuV BoginaT KuflikT DonkersB LoeppJ ZieglerK HeX ZhangS RenJ SunR HeJ McauleyB HidasiM QuadranaA KaratzoglouD TikkD JannachM LudewigS LaiL XuK LiuJ ZhaoB MobasherH DaiT LuoM NakagawaS RendleC FreudenthalerZ GantnerL Schmidt-ThiemeS RendleC FreudenthalerL Schmidt-ThiemeG ShaniD HeckermanR BrafmanJ TangK WangA VaswaniN ShazeerN ParmarJ UszkoreitL JonesA GomezKaiserI PolosukhinL ZhengV NorooziP YuA ZimdarsD ChickeringC Meek