推荐系统——当前流媒体时代精神的生命线

Gautham Sathish Nambissan, Prateek Mahajan, Shivam Sharma, P. Nagrath, Rachna Jain
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引用次数: 0

摘要

现代是一种奇特的反常现象,内容正以惊人的速度被贪婪地消费。Netflix、亚马逊Prime和一长串的流媒体服务都主动与电影公司达成独家协议,为它们不断增长的娱乐库增添新的内容。但这些平台惊人的观看时间背后的真正秘密是推荐系统,它有效地建议用户看什么。在描述它们时,我想到了三个竞争者,基于人气的过滤系统,基于内容的过滤系统和基于协作的过滤系统。作者设计了一种基于相似度的方法,通过余弦相似度(用于基于内容的协同过滤)和Pearson相关性方法(用于协同过滤)来判断两个电影或项目之间的相似度得分,或者更确切地说是分数矩阵。我们将对这些方法进行深入的研究,并以此对聚类和欧氏距离相似度进行比较,并将结果显示出来。还讨论了两种过滤类型组合使用的场景。
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Recommender Systems -The Lifeline Of The Current Streaming Zeitgeist
The modern age is a peculiar anomaly wherein content is being so voraciously consumed at an astonishing pace. Netflix, Amazon Prime and the litany of streaming services have taken it upon themselves to secure exclusive deals with studios to add to their ever-growing entertainment library. But the real secret sauce behind the outrageous watching times of these platforms are recommender systems which efficiently advise the user to watch what to watch. Three contenders come into mind while describing them, Popularity based filtering system, Content Based filtering system, and collaborative based filtering system. The authors have devised a similarity-based approach which adjudges a similarity score or rather a matrix of scores between two movies or items with the help of cosine similarity (for content based as well as collaborative filtering) and the Pearson Correlation method (for collaborative filtering). These methods will be studied in depth and furthermore, there will be comparison between clustering and Euclidean distance similarity with this and the results will be displayed. Also discussed is the scenario when both types of filtering are combined.
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