Litcius/Paper detail

A Multi-Core Approach to Efficiently Mining High-Utility Itemsets in Dynamic Profit Databases

Bay Vo, Loan T. T. Nguyen, Trinh D. D. Nguyen, Philippe Fournier‐Viger, Unil Yun

2020IEEE Access31 citationsDOIOpen Access PDF

Abstract

Analyzing customer transactions to discover high-utility itemsets is a popular task, which consists of finding the sets of items that are purchased together and yield a high profit. However, many studies assume that transactional data is static while in real-life, it changes over time. For example, the unit profits of items may vary from one week to another because sale prices and production costs may change. Many algorithms for mining high-utility itemsets (HUI) ignore this important property and thus are inapplicable or generate inaccurate results on real data. To address this issue, this paper proposes a novel algorithm named Multi-Core HUI Miner (MCH-Miner). It adapts techniques introduced in the iMEFIM algorithm to run on a parallel multi-core architecture to efficiently mine HUIs in dynamic transaction databases. An empirical evaluation shows that in most cases, MCH-Miner is significantly faster than iMEFIM, and that the cost of database scans is reduced.

Topics & Concepts

Computer scienceDatabase transactionData miningProfit (economics)DatabaseCore (optical fiber)Transaction dataTransaction processingMicroeconomicsEconomicsTelecommunicationsData Mining Algorithms and ApplicationsRough Sets and Fuzzy LogicImbalanced Data Classification Techniques