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Multiplex Behavioral Relation Learning for Recommendation via Memory Augmented Transformer Network

Published: 25 July 2020 Publication History
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  • Abstract

    Capturing users' precise preferences is of great importance in various recommender systems (e.g., e-commerce platforms and online advertising sites), which is the basis of how to present personalized interesting product lists to individual users. In spite of significant progress has been made to consider relations between users and items, most of existing recommendation techniques solely focus on singular type of user-item interactions. However, user-item interactive behavior is often exhibited with multi-type (e.g., page view, add-to-favorite and purchase) and inter-dependent in nature. The overlook of multiplex behavior relations can hardly recognize the multi-modal contextual signals across different types of interactions, which limit the feasibility of current recommendation methods. To tackle the above challenge, this work proposes a Memory-Augmented Transformer Networks (MATN), to enable the recommendation with multiplex behavioral relational information, and joint modeling of type-specific behavioral context and type-wise behavior inter-dependencies, in a fully automatic manner. In our MATN framework, we first develop a transformer-based multi-behavior relation encoder, to make the learned interaction representations be reflective of the cross-type behavior relations. Furthermore, a memory attention network is proposed to supercharge MATN capturing the contextual signals of different types of behavior into the category-specific latent embedding space. Finally, a cross-behavior aggregation component is introduced to promote the comprehensive collaboration across type-aware interaction behavior representations, and discriminate their inherent contributions in assisting recommendations. Extensive experiments on two benchmark datasets and a real-world e-commence user behavior data demonstrate significant improvements obtained by MATN over baselines. Codes are available at: https://github.com/akaxlh/MATN.

    Supplementary Material

    MP4 File (3397271.3401445.mp4)
    Collaborative filtering has been a key technology for various recommender systems. Many efforts have been done to empower the collaborative filtering with more advanced models, but most of the existing methods are based on singular behavior types, which does not accord with the real recommendation scenarios where users interact with items in multiple behavior types. In this video, we introduce the memory-augmented transformer network (MATN) proposed to make recommendation using multi-behavioral user-item interactions. MATN first employs the transformer to model the inter-dependencies among multiple behavior types, and then utilize the memory-augmented attention to learn the behavior-specific context, and is finally applied with the gating mechanism to aggregate the multi-behavioral information, to generate unified user embeddings. In experiments on three large-scale real-world data, the model showed superior performance over state-of-the-art methods using both singular-behavioral and multi-behavioral data.

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      cover image ACM Conferences
      SIGIR '20: Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval
      July 2020
      2548 pages
      ISBN:9781450380164
      DOI:10.1145/3397271
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      Published: 25 July 2020

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      Author Tags

      1. collaborative filtering
      2. deep neural networks
      3. multi-behavior learning
      4. recommendation
      5. transformer network

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      • National Nature Science Foundation of China
      • Fundamental Research Funds for the Central Universities
      • Natural Science Foundation of Guangdong Province
      • Major Project of National Social Science Foundation of China
      • Science and Technology Program of Guangdong Province

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      • (2024)Behavior-Contextualized Item Preference Modeling for Multi-Behavior RecommendationProceedings of the 47th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3626772.3657696(946-955)Online publication date: 10-Jul-2024
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