Abstract

High-utility itemset mining (HUIM), which is the detection of high-utility itemsets (HUIs) in a transactional database, provides the decision maker with greater flexibility to exploit item utilities, such as quantity and profits, to extract remarkable and efficient database patterns. However, most prevailing empirical articles have focused on HUIs. Nevertheless, in many practical situations, low-utility itemsets (LUIs) maintain a high level of significance and usage (e.g., in security systems and the low-utility itemsets represent the security system vulnerabilities that need monitoring). Hence, this paper proposes a new association rule mining (ARM) framework named low-utility itemset mining (LUIM) that extracts LUIs. Enhancing the performance of LUIM, the researchers here propose innovative HUI generators, determining the generators based on the itemset transaction weight utility (TWU) rather than the support values used in HUG-Miner and GHUI-Miner. Moreover, this paper offers two efficient algorithms called LUG-Miner and LUIMA. The LUG-Miner extracts high and low-utility generators while LUIMA extracts low-utility itemsets using low-utility generators (LUGs). The experimental results on both dense and sparse datasets illuminated the recommended framework, and the algorithms are efficiently operational.

Highlights

  • Data mining identifies hidden valuable knowledge from large database schemas

  • We reviewed the key High-utility itemset mining (HUIM) definitions, such as those given in previous studies [6], [7], [13], and introduced the definitions used in this article

  • The results reveal that the runtimes for the Chess and Mushroom datasets are the lowest, and low-utility generators (LUGs)-Miner performs poorer than FHM, generator of high utility itemsets (GHUIs)-Miner and high utility generators (HUGs)-Miner

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Summary

INTRODUCTION

Data mining identifies hidden valuable knowledge from large database schemas. Association rule mining (ARM) depicts a significant data-mining task. Frequent itemsets mining (FIM) has failed to consider the relative significance of individual items To solve this problem [2]–[4], weighted association rule mining has incorporated the item weight, the item unit profit in the transaction database; this framework can extract. The external utility (profit) is not assigned for each item separately, as the interest of the element is calculated according to the following equation [38]–[40]: GAIN (Y ) = In this way, the sum of the profit values of all products (transactions) that contain it In this case, profit value of an item may be high as it presences in many products while its absolute profit value is very low. In the medical field, identifying the medicines or the treatments methods causing inefficiency is highly important in formulating healthcare decisions.In the subsection, we will provide many examples to illustrate the importance of low utility itemset mining

MOTIVATION
PROPOSED FRAMEWORK
PERFORMANCE EVALUATION
Findings
CONCLUSION
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