Visual Analysis of E-Commerce User Behavior Based on Log Mining

With the continuous development of internet economy and e-commerce, the scale of data produced by users on e-commerce platform is increasing explosively. Mining the behavior of individual users and group users from massive user behavior data and analyzing the value and law behind the data are of gre...

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Main Authors: Tingzhong Wang, Nanjie Li, Hailong Wang, Junhong Xian, Jiayi Guo
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/4291978
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author Tingzhong Wang
Nanjie Li
Hailong Wang
Junhong Xian
Jiayi Guo
author_facet Tingzhong Wang
Nanjie Li
Hailong Wang
Junhong Xian
Jiayi Guo
author_sort Tingzhong Wang
collection DOAJ
description With the continuous development of internet economy and e-commerce, the scale of data produced by users on e-commerce platform is increasing explosively. Mining the behavior of individual users and group users from massive user behavior data and analyzing the value and law behind the data are of great significance to the development of e-commerce. Taking the user behavior log data of an e-commerce website as the data source, this paper, firstly, processes and analyzes the original dataset through the data filtering and storage module, and it uses the combination of Kafka and Flume to store the user behavior log with reasonable structure and complete fields in HDFS. Secondly, a hierarchical system of data warehouse is constructed in Hive, and each layer of log data is effectively mined and multidimensionally analyzed with the help of log mining technology. Finally, based on the big data framework and Bi tools, a data warehouse system is designed and implemented, which could store and analyze massive data and visually display the results. The system uses dimensional modeling to build a data warehouse hierarchical system to mine and analyze user behavior data through log mining algorithm deeply. The K-means clustering algorithm and RFM model are used to divide the user behavior characteristics in detail, and AARRR funnel model is used to analyze the logs in a modular way. Through the effective mining and multidimensional visual analysis of user behavior data, the behavior analysis of group users and individual users, as well as the analysis of commodity sales flow and sales linkage are realized, which provides support for internal decision-making and precision marketing.
format Article
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institution Kabale University
issn 1687-5699
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Advances in Multimedia
spelling doaj-art-5de5961ff70c44e3a21f4ad997c751dd2025-02-03T05:53:50ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/4291978Visual Analysis of E-Commerce User Behavior Based on Log MiningTingzhong Wang0Nanjie Li1Hailong Wang2Junhong Xian3Jiayi Guo4School of Information TechnologySchool of Information TechnologySchool of Information TechnologySchool of Information TechnologySchool of Information TechnologyWith the continuous development of internet economy and e-commerce, the scale of data produced by users on e-commerce platform is increasing explosively. Mining the behavior of individual users and group users from massive user behavior data and analyzing the value and law behind the data are of great significance to the development of e-commerce. Taking the user behavior log data of an e-commerce website as the data source, this paper, firstly, processes and analyzes the original dataset through the data filtering and storage module, and it uses the combination of Kafka and Flume to store the user behavior log with reasonable structure and complete fields in HDFS. Secondly, a hierarchical system of data warehouse is constructed in Hive, and each layer of log data is effectively mined and multidimensionally analyzed with the help of log mining technology. Finally, based on the big data framework and Bi tools, a data warehouse system is designed and implemented, which could store and analyze massive data and visually display the results. The system uses dimensional modeling to build a data warehouse hierarchical system to mine and analyze user behavior data through log mining algorithm deeply. The K-means clustering algorithm and RFM model are used to divide the user behavior characteristics in detail, and AARRR funnel model is used to analyze the logs in a modular way. Through the effective mining and multidimensional visual analysis of user behavior data, the behavior analysis of group users and individual users, as well as the analysis of commodity sales flow and sales linkage are realized, which provides support for internal decision-making and precision marketing.http://dx.doi.org/10.1155/2022/4291978
spellingShingle Tingzhong Wang
Nanjie Li
Hailong Wang
Junhong Xian
Jiayi Guo
Visual Analysis of E-Commerce User Behavior Based on Log Mining
Advances in Multimedia
title Visual Analysis of E-Commerce User Behavior Based on Log Mining
title_full Visual Analysis of E-Commerce User Behavior Based on Log Mining
title_fullStr Visual Analysis of E-Commerce User Behavior Based on Log Mining
title_full_unstemmed Visual Analysis of E-Commerce User Behavior Based on Log Mining
title_short Visual Analysis of E-Commerce User Behavior Based on Log Mining
title_sort visual analysis of e commerce user behavior based on log mining
url http://dx.doi.org/10.1155/2022/4291978
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AT nanjieli visualanalysisofecommerceuserbehaviorbasedonlogmining
AT hailongwang visualanalysisofecommerceuserbehaviorbasedonlogmining
AT junhongxian visualanalysisofecommerceuserbehaviorbasedonlogmining
AT jiayiguo visualanalysisofecommerceuserbehaviorbasedonlogmining