Neural Networks in Recommender Systems with an Optimization to the Neural Attentive Recommender Model

Suraj K C, S. R
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引用次数: 0

Abstract

The impact of recommender systems on e– commerce, marketing, and user entertainment has long been established. To combat the problem of information overload on the internet, they seek to improve customer-company interactions and provide customers with individualized online product or service recommendations. There are several types of recommender systems, and two of the most common are– Content based & Collaborative filtering-based recommender systems and they are examined in this paper. With the rapid rise in processing efficiency and as the capacity to process deeper neural networks became increasingly feasible, the application of deep learning to recommender systems was inevitable. In this study, we hope to guide the reader through the implementation of Neural networks (a fast deep learning algorithm) to create highly reliable recommender systems using the two aforementioned methodologies. The importance of a "Hybridized" system of recommendation is also illustrated. Finally, we propose a statistical optimization strategy on the Neural Attentive Recommender Model and examine the assumptions, advantages & results in the form of an experimental methodology.
神经网络在推荐系统中的应用及其对神经关注推荐模型的优化
推荐系统对电子商务、市场营销和用户娱乐的影响早已确立。为了解决互联网上信息过载的问题,他们寻求改善客户与公司的互动,并为客户提供个性化的在线产品或服务推荐。推荐系统有几种类型,其中最常见的两种是基于内容的推荐系统和基于协同过滤的推荐系统,本文对它们进行了研究。随着处理效率的快速提高和处理深度神经网络的能力越来越可行,深度学习在推荐系统中的应用是不可避免的。在本研究中,我们希望通过神经网络(一种快速深度学习算法)的实现来指导读者使用上述两种方法创建高度可靠的推荐系统。本文还说明了“混合”推荐系统的重要性。最后,我们提出了一种基于神经关注推荐模型的统计优化策略,并以实验方法的形式检验了假设、优势和结果。
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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