Journal
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
Volume 22, Issue 7, Pages 4696-4705Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2020.2990214
Keywords
Multi-aspect; self-attention; session-based recommendation; intelligent transportation services
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Funding
- China National Natural Science Foundation [61702553]
- Russian Science Foundation [14-29-00142] Funding Source: Russian Science Foundation
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This paper introduces a Multi-aspect Aware Session-based Recommendation (MASR) model for intelligent transportation services that comprehensively considers the user's personalized behavior and uses a transformer-style self-attention mechanism for analyzing session sequence information to accurately grasp user intentions. Experimental results show that MASR can improve user satisfaction with more accurate and rapid recommendations while reducing the number of user operations and decreasing safety risks in transportation services.
In the intelligent transportation system, the session data usually represents the users' demand. However, the traditional approaches only focus on the sequence information or the last item clicked by the user, which cannot fully represent user preferences. To address this issue, this paper proposes an Multi-aspect Aware Session-based Recommendation (MASR) model for intelligent transportation services, which comprehensively considers the user's personalized behavior from multiple aspects. In addition, it developed a concise and efficient transformer-style self-attention to analyze the sequence information of the current session, for accurately grasping the user's intention. Finally, the experimental results show that MASR is available to improve user satisfaction with more accurate and rapid recommendations, and reduce the number of user operations to decrease the safety risk during the transportation service.
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