vertTIRP: Robust and efficient vertical frequent time interval-related pattern mining

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Abstract

Time-interval-related pattern (TIRP) mining algorithms find patterns such as “A starts B” or “A overlaps B”. The discovery of TIRPs is computationally highly demanding. In this work, we introduce a new efficient algorithm for mining TIRPs, called vertTIRP which combines an efficient representation of these patterns, using their temporal transitivity properties to manage them, with a pairing strategy that sorts the temporal relations to be tested, in order to speed up the mining process. Moreover, this work presents a robust definition of the temporal relations that eliminates the ambiguities with other relations when taking into account the uncertainty in the start and end time of the events (epsilon-based approach), and includes two constraints that enable the user to better express the types of TIRPs to be learnt. An experimental evaluation of the method was performed with both synthetic and real datasets, and the results show that vertTIRP requires significantly less computation time than other state-of-the-art algorithms, and is an effective approach.

Original languageEnglish
Article number114276
JournalExpert Systems with Applications
Volume168
DOIs
Publication statusPublished - 15 Apr 2021

Keywords

  • Sequential pattern mining
  • Temporal data mining
  • Temporal relations
  • Time Interval Related Patterns

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