Learning a metric for music similiarity
Source:
Proceedings of the International Society of Music-Information Retrieval, Philadelphia, PA, p.313-318 (2008)
Abstract:
This paper describe five different principled ways to embed songs into a Euclidean metric space. In particular, we
learn embeddings so that the pairwise Euclidean distance
between two songs reflects semantic dissimilarity. This allows distance-based analysis, such as for example straight-forward nearest-neighbor classification, to detect and potentially suggest similar songs within a collection. Each of the
six approaches (baseline, whitening, LDA, NCA, LMNN
and RCA) rotate and scale the raw feature space with a linear transform. We tune the parameters of these models using
a song-classification task with content-based features.
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