Guided-Gated Recurrent Unit for Deep Learning-Based Recommendation System

I. Ardiyanto
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引用次数: 0

Abstract

Discovering and drawing out the relationship between users and items in a service-based companies or organizations are the essence of a recommendation system. It attracts many researches trying to solve such problems. Here we address a novel approach for the recommendation system, incorporating the means of collaborative aspect between the users internal hidden patterns and the items or goods to be recommended. Unlike the existing methods, our algorithm introduces a guiding factor between the user hidden state and the choice over the item set, such that it gives additional degree of freedom for the recommendation system to opt on which factor is more prominent. Experimental results suggest the advantages of the proposed algorithm over the existing state-of-the-art algorithms for the recommendation system.
基于深度学习的推荐系统引导门控循环单元
在以服务为基础的公司或组织中,发现和绘制用户和项目之间的关系是推荐系统的本质。它吸引了许多研究试图解决这类问题。在这里,我们提出了一种新的推荐系统方法,将用户内部隐藏模式与要推荐的物品或商品之间的协作方式结合起来。与现有的方法不同,我们的算法在用户隐藏状态和对项目集的选择之间引入了一个引导因素,这样它就给了推荐系统额外的自由度来选择哪个因素更突出。实验结果表明,该算法相对于现有推荐系统的先进算法具有优势。
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