ORBIT: Hybrid movie recommendation engine

D. Pathak, S. Matharia, C. Murthy
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引用次数: 17

Abstract

Today, users will get so many movie recommendations websites, which suggest users best movies according to their interests. All these websites have implemented one of the conventional content, context and collaborative recommendations algorithms. Alone, these algorithms are failed to recommend best and efficient recommendations to user. So, there is a need to evolve a unique algorithm which combines the features of conventional algorithm along with its new features. This paper describes the ORBIT, which is a movie recommendation engine, based on a unique Hybrid recommendation algorithm, satisfies a user by providing best and efficient books recommendations. Comparative case study of conventional recommendation algorithms to ORBIT's Hybrid movie recommendation algorithm has also been studied and presented in this paper. This case study is based on evaluating criteria of recommendation algorithm i.e. accuracy, precision, recall, F-measure etc. Results of this case study are represented in the form of tables and graphs to clearly specify the need of ORBIT.
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ORBIT:混合电影推荐引擎
今天,用户会得到很多电影推荐网站,这些网站会根据用户的兴趣向他们推荐最好的电影。所有这些网站都实现了一种传统的内容、上下文和协同推荐算法。单独使用这些算法,无法为用户提供最优、最有效的推荐。因此,有必要发展一种独特的算法,将传统算法的特点与它的新特点相结合。ORBIT是一个电影推荐引擎,它基于一种独特的混合推荐算法,通过提供最佳和高效的图书推荐来满足用户的需求。本文还对传统推荐算法与ORBIT的混合电影推荐算法进行了案例对比研究。本案例研究基于推荐算法的评价标准,即准确率、精密度、召回率、F-measure等。本案例研究的结果以表格和图表的形式表示,以清楚地说明轨道的需要。
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