Melody retrieval and composer attribution using sequence alignment on RISM incipits.

Jelmer van Nuss, G.J. Giezeman, F. Wiering

    Research output: Chapter in Book/Report/Conference proceedingConference contributionAcademicpeer-review

    Abstract

    The RISM A/II database contains metadata and incipits of more than a million compositions. The Monochord search engine can retrieve incipits that are similar to a query using several alignment methods based on pitch raters, weightbased raters and duration-based raters. The performance
    of all 27 search methods is evaluated using Mean Average Precision metrics and the TREC framework for retrieval performance analysis. The difference in exact pitch between melodies turns out to be the best factor to search with for musical similarity retrieval.
    All melodies have metadata such as a composer name, but a portion of the database is labelled as Anonymus. A k-Nearest Neighbours algorithm is optimised for the purpose of deanonymisation and used to classify several Anonymus songs to test the applicability of this classifier for composer
    labelling. Using a classifier as a first selection step for deanonymisation purposes turns out to be viable with human correction.
    Original languageEnglish
    Title of host publicationProceedings TENOR 2017
    Place of PublicationA Coruña
    Number of pages11
    Publication statusPublished - 2017

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