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Machine learning / Information retrieval / Information science / Learning / Dimensionality reduction / Learning to rank / K-nearest neighbors algorithm / T-distributed stochastic neighbor embedding
Date: 2015-07-31 19:02:40
Machine learning
Information retrieval
Information science
Learning
Dimensionality reduction
Learning to rank
K-nearest neighbors algorithm
T-distributed stochastic neighbor embedding

UNIVERSITY OF CALIFORNIA, SAN DIEGO More like this: machine learning approaches to music similarity A dissertation submitted in partial satisfaction of the requirements for the degree Doctor of Philosophy in

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