Litcius/Paper detail

Sequential pattern detection: similarities and differences across various fields

Ioannis Mavroudopoulos, Kostas Tsichlas, Anastasios Gounaris

2025Data Mining and Knowledge Discovery5 citationsDOIOpen Access PDF

Abstract

Abstract Detecting pattern matches underpins key operations across fields, such as complex event processing (CEP), sequential pattern mining (SPM), string pattern matching, pattern mining from a large sequence, and business process mining. These fields employ various notations and definitions for the detected patterns, posing challenges in recognizing their shared underlying concepts. This work aims to bridge these gaps by proposing a unified notation and terminology and then cataloging various pattern queries and constraints identified in different fields into a comprehensive framework. Our analysis reveals substantial similarities among the various pattern types, suggesting a promising avenue for the transfer of techniques between disciplines. This approach paves the way to leverage existing knowledge efficiently and circumvent the redundancy of “reinventing the wheel”.

Topics & Concepts

Computer sciencePattern matchingNotationRedundancy (engineering)TerminologyData miningLeverage (statistics)String searching algorithmInformation retrievalArtificial intelligencePhilosophyLinguisticsMathematicsOperating systemArithmeticData Mining Algorithms and ApplicationsData Quality and ManagementAdvanced Database Systems and Queries