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Distributed Vector Representations of Folksong Motifs
Published 20 Mar 2019 in cs.IR, cs.CL, cs.LG, cs.SD, and eess.AS | (1903.08756v1)
Abstract: This article presents a distributed vector representation model for learning folksong motifs. A skip-gram version of word2vec with negative sampling is used to represent high quality embeddings. Motifs from the Essen Folksong collection are compared based on their cosine similarity. A new evaluation method for testing the quality of the embeddings based on a melodic similarity task is presented to show how the vector space can represent complex contextual features, and how it can be utilized for the study of folksong variation.
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