Towards Sequence Utility Maximization under Utility Occupancy Measure
Gengsen Huang, Wensheng Gan, and Philip S. Yu

TL;DR
This paper introduces a new approach for mining high utility-occupancy sequential patterns, considering temporal relationships and optimizing utility and occupancy simultaneously, with an efficient algorithm and data structures.
Contribution
It defines utility occupancy for sequence data, formulates the HUOSPM problem, and proposes the SUMU algorithm with novel data structures and pruning strategies.
Findings
The SUMU algorithm effectively mines high utility-occupancy sequences.
Utility-occupancy-based measures improve pattern relevance.
Empirical results demonstrate the algorithm's efficiency and effectiveness.
Abstract
The discovery of utility-driven patterns is a useful and difficult research topic. It can extract significant and interesting information from specific and varied databases, increasing the value of the services provided. In practice, the measure of utility is often used to demonstrate the importance, profit, or risk of an object or a pattern. In the database, although utility is a flexible criterion for each pattern, it is a more absolute criterion due to the neglect of utility sharing. This leads to the derived patterns only exploring partial and local knowledge from a database. Utility occupancy is a recently proposed model that considers the problem of mining with high utility but low occupancy. However, existing studies are concentrated on itemsets that do not reveal the temporal relationship of object occurrences. Therefore, this paper towards sequence utility maximization. We…
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Taxonomy
TopicsData Mining Algorithms and Applications · Rough Sets and Fuzzy Logic · Data Management and Algorithms
MethodsPruning
