基于图的资源推荐系统

P. Pabitha, G. Amirthavalli, C. Vasuki, J. Mridhula
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引用次数: 0

摘要

随着技术的日益进步,交流和浏览变得非常容易。然而,互联网上每时每刻都充斥着大量的信息,因此用户在选择什么或做出决定时感到困惑。为了帮助用户确定自己的兴趣并提供建议,推荐系统应运而生。这些系统从大量数据中过滤必要的内容,为用户预测资源。用于实现推荐系统的常用技术是基于内容的方法或协作方法。然而,也存在一些限制,比如新用户无法获得数据,资源评级非常稀疏。提出了一种基于图的推荐系统,该系统利用可用的重要内容进行有用的推荐。利用聚类技术识别当前用户的邻域,从而推荐相关资源。使用基于权重的方法来计算资源的评级。采用这种方法使系统不容易出现数据稀疏性问题。该系统是一个基于web的客户端应用程序,通过构建用户资源图进行推荐,并采用类似于搜索算法的新方法对资源进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph based resource recommender system
As technology improves day by day communication and browsing has become very much easier. However lots of information floods over the internet every moment thereby confusing the user as to select what or make decisions. To assist the user in identifying their interests and provide suggestions, recommendation systems came into existence. These systems filter the necessary content from large volumes of data to predict resources to the user. Common techniques used to implement recommender systems are content based approach or collaborative approach. However there are few limitations like data not being available for new users, ratings very sparse for resources. A graph based recommender system is proposed that makes useful recommendations by exploiting the significant content available. Clustering technique is used to identify the neighbourhood of the current user so that relevant resources are suggested. A weight based approach is used to calculate the ratings for the resources. This method is adopted to make the system less prone to data sparsity problem. This system is a web based client side application which makes recommendations by constructing user-resource graph and ranking the resources by a new method designed similar to that of search algorithms.
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