Design a personalized recommendation system using deep learning and reinforcement learning
- 한국컴퓨터게임학회
- 한국컴퓨터게임학회논문지
- 제38권 1호
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2025.0345 - 56 (12 pages)
- 27
As the E-commerce market grows, the importance of personalized recommendation systems is increasing. Existing collaborative filtering and content-based filtering methods have shown a certain level of performance, but they have limitations such as cold start, data sparseness, and lack of long-term pattern learning. In this study, we design a matching system that combines a hybrid recommendation system and hyper-personalization technology and propose an efficient recommendation system. The core of the study is to develop a recommendation model that can improve recommendation accuracy and increase user satisfaction compared to existing systems. The proposed elements are as follows. First, the hybrid-hyper-personalization matching system provides recommendation accuracy compared to existing methods. Second, we propose an optimal product matching model that reflects user context using real-time data. Third, we optimize Personalized Recommendation System using deep learning and reinforcement learning. Fourth, we present a method to objectively evaluate recommendation performance through A/B testing.
1. Introduction
2. Matching System Design
3. Matching System Architecture
4. Analyze the case implementation
5. Conclusion and Future Research Directions
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