Collaborative filtering-based recommender system: Approaches and research challenges

Ritu Sharma, D. Gopalani, Y. Meena
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引用次数: 33

Abstract

Due to information explosion, huge number of items are present over web which makes it difficult for user to find appropriate item from available set of options. Recommender System (RS) overcomes the problem of information overload and suggests items that interest to a user. It has gained a lot of popularity in past decades and huge amount of work has been done in this field. Collaborative Filtering (CF) is the most popular and widely used approach for RS which tries to analyze the user's interest over the target item on the basis of views expressed by other like-minded users. This paper gives a brief idea of various approaches used for Recommender System and provides an insight of Collaborative Filtering technique. Here, we also discuss well-known methods for CF i.e. Memory-based, Model-based, and hybrid approaches and at last we focus on research challenges that need to be addressed.
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基于协同过滤的推荐系统:方法与研究挑战
由于信息爆炸,网络上出现了大量的项目,这使得用户很难从可用的选项中找到合适的项目。推荐系统(RS)克服了信息过载的问题,向用户推荐感兴趣的项目。在过去的几十年里,它得到了很多的普及,在这个领域已经做了大量的工作。协同过滤(CF)是RS中最流行和使用最广泛的方法,它试图根据其他志同道合的用户所表达的观点来分析用户对目标项目的兴趣。本文简要介绍了推荐系统中使用的各种方法,并对协同过滤技术进行了深入的研究。在这里,我们还讨论了众所周知的CF方法,即基于内存的方法,基于模型的方法和混合方法,最后我们重点讨论了需要解决的研究挑战。
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