基于粒子群优化的混合推荐系统

R. Behera, S. Dash
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引用次数: 2

摘要

由于快速的数字爆炸,用户在做出任何决定之前,对寻找有关特定主题的建议表现出兴趣。目前,电影推荐系统是一个基于用户资料推荐电影的新兴领域。许多研究人员致力于基于监督或半监督集成的机器学习方法,以匹配更合适的档案并推荐相关电影。本文提出了一种基于协同过滤和基于内容过滤的混合推荐系统,设计了一种配置文件匹配算法。采用自然启发的粒子游优化技术,通过初始随机猜测分配给多个智能体或粒子,对轮廓匹配算法进行微调。通过与遗传算法的比较来判断模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Particle Swarm Optimization based Hybrid Recommendation System
Due to rapid digital explosion user shows interest towards finding suggestions regarding a particular topic before taking any decision. Nowadays, a movie recommendation system is an upcoming area which suggests movies based on user profile. Many researchers working on supervised or semi-supervised ensemble based machine learning approach for matching more appropriate profiles and suggest related movies. In this paper a hybrid recommendation system is proposed which includes both collaborative and content based filtering to design a profile matching algorithm. A nature inspired Particle Swam Optimization technique is applied to fine tune the profile matching algorithm by assigning to multiple agents or particle with some initial random guess. The accuracy of the model will be judged comparing with Genetic algorithm.
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