Recherche de motifs pour l'étude critique de partitions musicales
Abstract
Music score analysis is an ongoing issue for musicologists. Discovering
frequent musical motifs with variants is needed in order to make critical
study of music scores and investigate compositions styles. We introduce a mining
algorithm, called CSMA for Constrained StringMining Algorithm), to meet
this need considering symbol-based representation of music scores. This algorithm,
through motif length and maximal gap constraints, is able to find identical
motifs present in a single string or a set of strings. It is embedded into a complete
data mining process aiming at finding variants of musical motif. Experiments,
carried out on several datasets, showed that CSMA is efficient as string mining
algorithm applied on one string or a set of strings.