Dynamic Item Block and Prediction Enhancing Block for Sequential Recommendation

Author:

Guo Guibing1,Ouyang Shichang1,He Xiaodong2,Yuan Fajie3,Liu Xiaohua2

Affiliation:

1. Northeastern University, China

2. JD AI Research, Beijing, China

3. Tencent, Shenzhen, China

Abstract

Sequential recommendation systems have become a research hotpot recently to suggest users with the next item of interest (to interact with). However, existing approaches suffer from two limitations: (1) The representation of an item is relatively static and fixed for all users. We argue that even a same item should be represented distinctively with respect to different users and time steps. (2) The generation of a prediction for a user over an item is computed in a single scale (e.g., by their inner product), ignoring the nature of multi-scale user preferences. To resolve these issues, in this paper we propose two enhancing building blocks for sequential recommendation. Specifically, we devise a Dynamic Item Block (DIB) to learn dynamic item representation by aggregating the embeddings of those who rated the same item before that time step. Then, we come up with a Prediction Enhancing Block (PEB) to project user representation into multiple scales, based on which many predictions can be made and attentively aggregated for enhanced learning. Each prediction is generated by a softmax over a sampled itemset rather than the whole item space for efficiency. We conduct a series of experiments on four real datasets, and show that even a basic model can be greatly enhanced with the involvement of DIB and PEB in terms of ranking accuracy. The code and datasets can be obtained from https://github.com/ouououououou/DIB-PEB-Sequential-RS

Publisher

International Joint Conferences on Artificial Intelligence Organization

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1. Deep User and Item Inter-matching Network for CTR Prediction;Database Systems for Advanced Applications;2023

2. A review of deep learning-based recommender system in e-learning environments;Artificial Intelligence Review;2022-05-27

3. Parameter-Efficient Transfer from Sequential Behaviors for User Modeling and Recommendation;Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval;2020-07-25

4. A Generic Network Compression Framework for Sequential Recommender Systems;Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval;2020-07-25

5. LOCATE: Locally Anomalous Behavior Change Detection in Behavior Information Sequence;Web and Big Data;2020

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