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IEEEMSP
2002
IEEE

Musical query-by-description as a multiclass learning problem

13 years 9 months ago
Musical query-by-description as a multiclass learning problem
Abstract—We present the query-by-description (QBD) component of “Kandem,” a time-aware music retrieval system. The QBD system we describe learns a relation between descriptive text concerning a musical artist and their actual acoustic output, making such queries as “Play me something loud with an electronic beat” possible by merely analyzing the audio content of a database. We show a novel machine learning technique based on Regularized Least-Squares Classification (RLSC) that can quickly and efficiently learn the non-linear relation between descriptive language and audio features by treating the problem as a large number of possible output classes linked to the same set of input features. We show how the RLSC training can easily eliminate irrelevant labels.
Brian Whitman, Ryan M. Rifkin
Added 15 Jul 2010
Updated 15 Jul 2010
Type Conference
Year 2002
Where IEEEMSP
Authors Brian Whitman, Ryan M. Rifkin
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