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Machine Learning Algorithms for building Recommender Systems

机译:用于构建推荐系统的机器学习算法

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Over the years, Recommender systems have emerged as a means to provide relevant content to the users, be it in the field of entertainment, social- network, health, education, travel, food or tourism. Till date several recommendation approaches have been introduced, the most popular being Content-based filtering, Collaborative filtering, Hybrid and Knowledge based systems. Hybrid systems combine multiple recommendation techniques to enhance the performance of a single recommendation approach and to do so, they follow several hybrid models. This article presents an overview of the state-of-the-art Recommender systems with the prime focus on hybrid recommender systems. Further, different categories of hybridization models are studied, and the existing work is classified categorically based on the hybrid model they follow, and the Machine learning algorithm used.
机译:多年来,无论是在娱乐,社交网络,健康,教育,旅行,食品还是旅游领域,推荐系统都已成为向用户提供相关内容的一种手段。迄今为止,已经引入了几种推荐方法,其中最流行的是基于内容的过滤,协作过滤,混合和基于知识的系统。混合系统结合了多种推荐技术,以增强单个推荐方法的性能,为此,它们遵循几种混合模型。本文概述了最新的推荐系统,重点是混合推荐系统。此外,研究了不同类别的混合模型,并根据它们遵循的混合模型以及所使用的机器学习算法对现有工作进行了分类。

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