Toward affective recommendation: A contextual association approach for eliciting user preference

Xiaohui Li, T. Murata
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引用次数: 3

Abstract

The explosive growth of recommender systems has resulted in realization of individualized service as commercial patterns and research prototypes. However, the traditional recommendation approaches are overemphasized the similarity between user preference and items feature. They are completely ignored affectivity that was a crucial factor. Our study focuses on exploring a new affective recommendation approach of semantic associated extension by integrating the Spreading Activation model with knowledge of cognitive psychology for the real-time preference-aware. This paper presents an affectivity-based recommendation approach to eliciting a characteristic sequence consisted of color nodes mapping the relationships between user preference with his mood and items feature. Predominance of our proposal was illustrated through an instantiation of movie recommender system that was developed based on the proposed approach. The testing results of performance show that our affectivity-based recommendation approach outperformed the traditional collaborative filtering approach in terms of the accuracy. This paper also presents a novel insight into exploitation of rich repository of domain-specific knowledge to provide real-time recommendation for user.
走向情感推荐:一种情境关联方法来引出用户偏好
推荐系统的爆炸式增长导致个性化服务作为商业模式和研究原型的实现。然而,传统的推荐方法过分强调用户偏好和商品特征之间的相似性。他们完全忽略了情感这一至关重要的因素。本研究将扩展激活模型与认知心理学知识相结合,探索一种基于语义关联扩展的情感推荐方法。本文提出了一种基于情感的推荐方法来引出一个特征序列,该序列由颜色节点组成,映射用户偏好与他的情绪和物品特征之间的关系。通过基于所提出的方法开发的电影推荐系统实例说明了我们建议的优势。性能测试结果表明,基于情感的推荐方法在准确率方面优于传统的协同过滤方法。本文还提出了利用丰富的领域知识库为用户提供实时推荐的新思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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