一种高效智能的移动平台推荐系统

Muhammad Jabbar, Qaisar Javaid, Muhammad Arif, A. Munir, A. Javed
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引用次数: 3

摘要

推荐系统是解决大多数用户在做出购买决定时所面临的信息过载问题的重要工具。推荐系统用于在许多领域提供推荐,如电影、书籍、数字设备等。海量的在线图书给用户选择符合他们喜好的相关图书带来了巨大的挑战。用户通常会阅读几页或几篇内容来决定是否购买某本书。推荐系统提供类似用户评分、用户历史记录、用户简介等不同的增值因素,方便用户根据自己的喜好提供相关的推荐。推荐系统大致分为基于内容的推荐系统和协同过滤推荐系统。单独的基于内容或协作过滤方法不足以在各种场景下提供最准确和相关的建议。因此,还设计了混合方法,将基于内容的过滤方法和协同过滤方法的特性结合起来,以提供更相关的推荐。本文提出了一种高效的移动平台混合推荐方案,该方案融合了基于内容和协同过滤方法的特点,并结合基于上下文的方法向用户提供最新的图书推荐。采用客观和主观评价指标来计算系统的性能。实验结果很有希望,表明我们提出的混合方案在最相关和最新书籍推荐方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient and Intelligent Recommender System for Mobile Platform
Recommender Systems are valuable tools to deal with the problem of overloaded information faced by most of the users in case of making purchase decision to buy any item. Recommender systems are used to provide recommendations in many domains such as movies, books, digital equipment’s, etc. The massive collection of available books online presents a great challenge for users to select the relevant books that meet their preferences. Users usually read few pages or contents to decide whether to buy a certain book or not. Recommender systems provide different value addition factors such as similar user ratings, users past history, user profiles, etc. to facilitate the users in terms of providing relevant recommendations according to their preferences. Recommender systems are broadly categorized into content based approach and collaborative filtering approach. Content based or collaborative filtering approaches alone are not sufficient to provide most accurate and relevant recommendations under diverse scenarios. Therefore, hybrid approaches are also designed by combining the features of both the content based and collaborative filtering approaches to provide more relevant recommendations. This paper proposes an efficient hybrid recommendation scheme for mobile platform that includes the traits of content based and collaborative filtering approaches in addition of the context based approach that is included to provide the latest books recommendations to user.Objective and subjective evaluation measures are used to compute the performance of the proposed system. Experimental results are promising and signify the effectiveness of our proposed hybrid scheme in terms of most relevant and latest books recommendations.
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