Litcius/Paper detail

Mining Maximal High Utility Itemsets on Dynamic Profit Databases

Loan T. T. Nguyen, Dinh-Bao Vu, Trinh D. D. Nguyen, Bay Vo

2020Cybernetics & Systems18 citationsDOI

Abstract

To overcome the limitation of high-utility itemset mining, more compact, lossless, and concise representations of high utility itemsets (HUIs) have been proposed in previous works, such as closed HUIs (CHUIs) or maximal HUIs (MHUIs). Focusing into MHUI mining, in this article, we present efficient approaches to directly mine MHUIs from transactional databases without generating any candidates. The proposed algorithms, which all execute in one phase, utilize many efficient data structures and pruning techniques such as EUCP combined with EUCS, CUIP combined with FUCS, and the P-set structure to significantly reduce the search space and remove nonpromising itemsets, thus, increase the performance of the MHUI mining process. Furthermore, while previous works assumed that the unit profit of items is fixed, which is not practical in many real-world applications, our work resolved this issue by applying a new utility calculation into the mining process to reflect the true nature of real-world databases, thus, generating more accurate results.

Topics & Concepts

Computer scienceData miningPruningLossless compressionDatabaseProfit (economics)Process (computing)Set (abstract data type)AlgorithmData compressionEconomicsBiologyMicroeconomicsProgramming languageOperating systemAgronomyData Mining Algorithms and ApplicationsRough Sets and Fuzzy LogicCustomer churn and segmentation