E-Commerce Intelligent Recommendation System Based on Deep Learning

Gang Huang
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引用次数: 4

Abstract

With the popularity of smart phones, e-commerce has developed rapidly. Intelligent recommendation is a very important task in the field of e-commerce. Researchers have proposed the use of association rules, collaborative filtering, Markov chain, recurrent neural network and other technologies for shopping basket recommendation. This paper mainly studies e-commerce intelligent recommendation system(IRS) based on deep learning. In this paper, the overall design of e-commerce recommendation system is firstly carried out, and the functional modules and system architecture of e-commerce IRS are proposed. Then, this paper discusses the recommendation algorithm in the e-commerce IRS, and optimizes the e-commerce IRS based on convolutional neural network. Finally, this paper compares and analyzes the performance of three popular recommendation algorithms on Alibaba data set. Experimental results show that the proposed convolutional neural network recommendation algorithm based on deep learning is superior to the other two algorithms and has strong practical significance and promotion value.
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基于深度学习的电子商务智能推荐系统
随着智能手机的普及,电子商务发展迅速。智能推荐是电子商务领域的一项重要任务。研究人员提出使用关联规则、协同过滤、马尔可夫链、递归神经网络等技术进行购物篮推荐。本文主要研究基于深度学习的电子商务智能推荐系统(IRS)。本文首先进行了电子商务推荐系统的总体设计,提出了电子商务IRS的功能模块和系统架构。然后,讨论了电子商务IRS中的推荐算法,并基于卷积神经网络对电子商务IRS进行了优化。最后,本文比较分析了三种流行的推荐算法在阿里巴巴数据集上的性能。实验结果表明,本文提出的基于深度学习的卷积神经网络推荐算法优于其他两种算法,具有较强的实际意义和推广价值。
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