Discovering High-utility Sequential Rules with Increasing Utility Ratio
Zhenqiang Ye, Wensheng Gan, Gengsen Huang, Tianlong Gu, Philip S. Yu

TL;DR
This paper introduces SRIU, a novel algorithm for mining high-utility sequential rules with increasing utility ratios, improving search efficiency and rule relevance through innovative expansion and pruning strategies.
Contribution
It proposes a new algorithm SRIU that effectively mines high-utility sequential rules with increasing utility ratios using novel expansion, pruning, and optimization techniques.
Findings
SRIU outperforms existing methods in efficiency and rule quality.
Experimental results confirm the effectiveness of the proposed algorithm.
SRIU enhances the relevance of mined rules using confidence and conviction metrics.
Abstract
Utility-driven mining is an essential task in data science, as it can provide deeper insight into the real world. High-utility sequential rule mining (HUSRM) aims at discovering sequential rules with high utility and high confidence. It can certainly provide reliable information for decision-making because it uses confidence as an evaluation metric, as well as some algorithms like HUSRM and US-Rule. However, in current rule-growth mining methods, the linkage between HUSRs and their generation remains ambiguous. Specifically, it is unclear whether the addition of new items affects the utility or confidence of the former rule, leading to an increase or decrease in their values. Therefore, in this paper, we formulate the problem of mining HUSRs with an increasing utility ratio. To address this, we introduce a novel algorithm called SRIU for discovering all HUSRs with an increasing utility…
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Taxonomy
TopicsData Mining Algorithms and Applications · Rough Sets and Fuzzy Logic · Software System Performance and Reliability
