Recurrent Neural Networks for Recommender Systems

Ankit Rath, S. Sahu
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Abstract

The Internet is becoming one of the biggest sources of information in recent years, keeping people updated about everyday events. The information available on it is also growing, with the increase in the use of the Internet. Due to this, it takes a great deal of time and effort to locate relavent knowledge that the user wants. Recommender systems are software mechanisms that automatically suggest relavent user-needed information. Recurrent Neural Networks has lately gained importance in the field of recommender systems, since they give improved results in building deep learning models with sequential data. Unlike conventional recommendation models, RNN models more easily capture irregular and complex user-item relations. This paper provides a thorough analysis of the research content of recommendation systems based on RNN models. Keyword : Recommender systems, Recurrent Neural Networks, Recommendations, Gated Recurrent Unit, Long Short Term Memory.
推荐系统的递归神经网络
近年来,互联网正在成为最大的信息来源之一,让人们了解日常事件的最新信息。随着互联网使用的增加,网站上的信息也在不断增加。因此,需要花费大量的时间和精力来定位用户想要的相关知识。推荐系统是一种软件机制,可以自动推荐用户需要的相关信息。递归神经网络最近在推荐系统领域变得越来越重要,因为它们在使用顺序数据构建深度学习模型方面提供了改进的结果。与传统的推荐模型不同,RNN模型更容易捕获不规则和复杂的用户-项目关系。本文对基于RNN模型的推荐系统的研究内容进行了深入的分析。关键词:推荐系统,循环神经网络,推荐,门控循环单元,长短期记忆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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