Efficient Mining of Weighted Sequential Patterns in Incremental Uncertain Databases
The core message of this work is to propose a novel framework for efficiently mining weighted sequential patterns in incremental uncertain databases. The framework introduces the concept of weighted expected support, along with several tightened upper bound measures and a hierarchical index structure to maintain patterns, enabling efficient mining of both unweighted and weighted uncertain sequential patterns.