Application of Computer Big Data and Cloud Computing Technology in the Promotion of E-commerce Advertising

Jingcheng Zhang
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Abstract

This article aims to solve the information overload problem faced by large-scale e-commerce systems in the context of big data applications. The scheme of building a distributed e-commerce advertising fixed-point promotion system based on Hadoop is studied. The algorithm based on MapReduce model has high scalability and performance, and can perform offline data analysis efficiently. This paper proposes a decomposition personalized Markov chain (FPMC) model, which combines the MC model with the MF model. The final experimental results verify that the average absolute error (MAE) of the personalized Markov chain (FPMC) model based on content and collaborative filtering is reduced by 15% and 6% compared with traditional content-based or collaborative filtering algorithms. The model can accurately match user information and product information, and match them to complete e-commerce advertising fixed-point push.
计算机大数据与云计算技术在电子商务广告推广中的应用
本文旨在解决大数据应用背景下大型电子商务系统所面临的信息过载问题。研究了基于Hadoop的分布式电子商务广告定点推广系统的构建方案。基于MapReduce模型的算法具有较高的可扩展性和性能,可以高效地进行离线数据分析。本文提出了一种分解个性化马尔可夫链(FPMC)模型,该模型将MC模型与MF模型相结合。最后的实验结果验证了基于内容和协同过滤的个性化马尔可夫链(FPMC)模型的平均绝对误差(MAE)比传统的基于内容或协同过滤算法分别降低了15%和6%。该模型可以准确匹配用户信息和产品信息,并进行匹配完成电子商务广告的定点推送。
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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