ARRN:利用人口统计学语境改进混合推荐系统中的语义个性化

Harshali Bhuwad, Dr.Jagdish.W.Bakal
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引用次数: 0

摘要

本文提出了一种新颖的推荐系统模型--注意递归推荐网络(ARRN),以解决将人口信息纳入推荐的难题。ARRN 利用用户与项目的交互数据以及数据集中的年龄信息,提供专门针对不同年龄组的个性化推荐。该方法利用嵌入技术和语义分析来捕捉与年龄相关的用户偏好和行为。注意力机制会根据用户年龄组对相关特征进行优先排序,从而使 ARRN 能够为交互历史有限的用户动态调整推荐。本文对 ARRN 的性能进行了全面评估,并与现有的最先进推荐算法进行了比较。结果表明,ARRN 通过有效缓解年龄敏感产品领域的冷启动问题,其性能优于现有方法,尤其是针对互动历史有限的用户。
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ARRN: Leveraging Demographic Context for Improved Semantic Personalization in Hybrid Recommendation Systems
This paper proposes a novel recommendation system model, the Attentive Recurrent Recommender Network (ARRN), that addresses the challenge of incorporating demographic information into recommendations. ARRN leverages user-item interaction data along with age information from the data set to deliver personalized recommendations specifically tailored to different age groups. The approach utilizes embedding techniques and semantic analysis to capture user preferences and behaviors associated with their age. An attention mechanism prioritizes relevant features based on user age groups, enabling ARRN to dynamically adapt recommendations for users with limited interaction history. The paper presents a comprehensive evaluation of ARRN’s performance compared to existing state-of-the-art recommendation algorithms. The results demonstrate that ARRN outperforms existing approaches, particularly for users with limited interaction history, by effectively mitigating the cold-start problem in age-sensitive product domains.
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