A Brief Discussion on the Practical Application of Web Data Mining Technology in Information Management

Authors

  • Fei Ma

Keywords:

Information management; Association rules; Decision tree; Cluster analysis; Web Data Mining Technology

Abstract

Traditional information management methods can no longer fully utilize data to provide decision-makers with meaningful information hidden behind the data, while existing web data mining techniques can precisely achieve this function. The role of data mining technology is to quickly extract the information we need from a vast collection of data, and to filter this information to form meaningful information. The algorithms related to data mining technology also play a crucial role in the field of information management. On the basis of the concept of data mining technology, this article focuses on analyzing the functions of related algorithms in the field of information management, and elaborates on the practical applications of the following three algorithms in the field of information management: association rules, decision tree algorithm, and clustering analysis.

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Published

2024-08-22

How to Cite

Fei Ma. (2024). A Brief Discussion on the Practical Application of Web Data Mining Technology in Information Management. Journal of Artificial Intelligence and Information, 1. Retrieved from https://woodyinternational.com/index.php/jaii/article/view/48