基于数据挖掘和算法优化的智能推荐系统模型研究

Xiaoyue Jia, Fengchun Liu
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引用次数: 0

摘要

随着中国移动互联网的快速发展和5g时代的到来,各行各业的员工基本都会通过网站购买生活中需要的各种商品。众所周知,大数据已经成为各个互联网公司工作的重点方向,而推荐系统可以说是大数据最好的落地应用之一。它给互联网公司带来的好处是实实在在的。特别是对于电子商务,智能推荐系统可以直接影响电子商务企业的销售业绩[1]。如何存储这些海量数据,高效挖掘有价值的用户信息,是大数据技术面临的真正挑战[2]。本文以推荐系统建设领域知名的修改后的亚马逊中文电子商务数据集为基础,以某电商网站的真实商业数据架构为基础,构建了一个集成的电子商务推荐系统,离线推荐服务和实时推荐服务提供多种方法实现混合推荐效果。它提供了多种离线分析方法和智能准确的实时推荐模型来实现数据挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on intelligent recommendation system model supported by data mining and algorithm optimization
With the rapid development of China's mobile Internet and the advent of 5g era, employees from all walks of life will basically use websites to buy all kinds of goods needed in life. As we all know, big data has become a key direction in the work of various Internet companies and the recommendation system can be said to be one of the best landing applications of big data. The benefits it brings to Internet companies are real and visible. Especially for e-commerce, intelligent recommendation system can directly affect the sales performance of an e-commerce enterprise[1]. How to store these massive data and efficiently mine valuable user information is the real challenge of big data technology[2]. In this paper, based on the modified Chinese Amazon e-commerce data set well-known in the field of recommendation system construction, and based on the real business data architecture of an e-commerce website, the project constructs an integrated e-commerce recommendation system, offline recommendation service and real-time recommendation service provide a variety of methods to achieve mixed recommendation effect. It provides a variety of off-line analysis methods and clever and accurate real-time recommendation model to realize data mining.
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