Survey on Recommendation Systems

Sara Gasmi, T. Bouhadada, Abdelmadjid Benmachiche
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引用次数: 2

Abstract

In recent decade's recommendation systems (RSs) plays an essential role in many applications as World Wide Web. Also recommendation system is one of the most important research area in machine learning. Recommendation system functions as a helper to find the interest of users by making relevant suggestions to users. The RSs mainly use four filtering methods to provide personalized recommendations to users, the most popular ones are: Collaborative filtering (CF), Content-based filtering, Demographic filtering and hybrid filtering. Data mining is one of the important analysis techniques used in RSs to predict user interest in information, products and services among the vast amount of available items. The data mining techniques that are most commonly used in RSs are: classification, clustering and association rule discovery. This paper performs a survey on recommendation systems, techniques, challenges and issues and lists some research papers solve these obstacles, also data mining methods used in recommender systems.
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推荐系统调查
近十年来,推荐系统(RSs)在万维网等许多应用中起着至关重要的作用。同时,推荐系统也是机器学习中最重要的研究领域之一。推荐系统作为一个助手,通过向用户提供相关的建议来寻找用户的兴趣。RSs主要使用四种过滤方法向用户提供个性化推荐,其中最流行的是协同过滤(CF)、基于内容的过滤、人口统计过滤和混合过滤。数据挖掘是RSs中使用的重要分析技术之一,用于在大量可用项目中预测用户对信息、产品和服务的兴趣。RSs中最常用的数据挖掘技术有:分类、聚类和关联规则发现。本文对推荐系统、技术、挑战和问题进行了综述,列出了一些解决这些障碍的研究论文,以及推荐系统中使用的数据挖掘方法。
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