面向方面推荐系统中的偏好学习

Punam Bedi, Sumit Agarwal
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引用次数: 10

摘要

推荐系统是采用信息过滤(IF)技术的智能应用程序,通过提供个性化的产品推荐来帮助用户。IF技术通常基于存储在用户配置文件中的信息逐步消除不相关的内容,推荐算法以显式(例如,让用户表达他们对物品的意见)或隐式(例如,观察某些行为特征)的方式获取有关用户偏好的信息,并最终利用这些数据生成推荐物品列表。尽管所有的过滤方法都有自己的优缺点,但偏好学习是每个推荐系统设计中的核心问题之一:因为这些系统的目标是以个性化的方式引导用户从大量可能的选项中推荐项目。面向方面推荐系统(AORS)是利用面向方面编程(AOP)的概念提出的一种用于构建学习方面的多智能体系统(MAS)。使用传统的面向智能体的方法,在推荐系统中实现偏好学习会产生代码分散和代码纠缠的问题。本文提出了学习方面对学习横切关注点的分离,从而提高了系统的可重用性、可维护性,消除了推荐系统中的分散和缠结问题。AORS的原型是为书籍推荐而设计和开发的。
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Preference Learning in Aspect-Oriented Recommender System
Recommender systems are intelligent applications employ Information Filtering (IF) techniques to assist users by giving personalized product recommendations. IF techniques generally perform a progressive elimination of irrelevant content based on the information stored in a user profile, recommendation algorithms acquire information about user preferences - in an explicit (e.g., letting users express their opinion about items) or implicit (e.g., observing some behavioral features) way - and finally make use of these data to generate a list of recommended items. Although all filtering methods have their own weaknesses and strengths, preference learning is one of the core issues in the design of each recommender system: because these systems aim to guide users in a personalized way to recommend items from the overwhelming set of possible options. Aspect Oriented Recommender System (AORS) is a proposed multi agent system (MAS) for building learning aspect using the concept of Aspect Oriented Programming (AOP). Using conventional agent-oriented approach, implementation of preference learning in recommender system creates the problem of code scattering and code tangling. This paper presents the learning aspect for the separation of learning crosscutting concern, which in turn improves the system reusability, maintainability and removes the scattering and tangling problems in the recommender system. The prototype of AORS has been designed and developed for book recommendations.
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