Author:
Chen Jing,Yang Shengyi,Ding Weiping,Li Peng,Liu Aijun,Zhang Hongjun,Li Tian
Abstract
AbstractThe High Average Utility Itemset Mining (HAUIM) technique, a variation of High Utility Itemset Mining (HUIM), uses the average utility of the itemsets. Historically, most HAUIM algorithms were designed for static databases. However, practical applications like market basket analysis and business decision-making necessitate regular updates of the database with new transactions. As a result, researchers have developed incremental HAUIM (iHAUIM) algorithms to identify HAUIs in a dynamically updated database. Contrary to conventional methods that begin from scratch, the iHAUIM algorithm facilitates incremental changes and outputs, thereby reducing the cost of discovery. This paper provides a comprehensive review of the state-of-the-art iHAUIM algorithms, analyzing their unique characteristics and advantages. First, we explain the concept of iHAUIM, providing formulas and real-world examples for a more in-depth understanding. Subsequently, we categorize and discuss the key technologies used by varying types of iHAUIM algorithms, encompassing Apriori-based, Tree-based, and Utility-list-based techniques. Moreover, we conduct a critical analysis of each mining method's advantages and disadvantages. In conclusion, we explore potential future directions, research opportunities, and various extensions of the iHAUIM algorithm.
Funder
Natural Science Foundation of Inner Mongolia Autonomous Region of China
Scientific Research Project of Baotou Teachers' College
Natural Science Research Project of Department of Education of Guizhou Province
National Natural Science Foundation of P. R. China
Inner Mongolia Autonomous Region Higher Education Institutions Science and Technology Research Project
Publisher
Springer Science and Business Media LLC