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In this work, we present a technique that learns discriminative audio
features for Music Information Retrieval (MIR). The novelty of the proposed
technique is to design auto-encoders that make use of data structures to
learn enhanced sparse data representations. The data structure is borrowed
from the Manifold Learning field, that is data are supposed to be sampled
from smooth manifolds, which are here represented by graphs of proximities of
the input data. As a consequence, the proposed auto-encoders finds sparse
data representations that are quite robust w.r.t. perturbations. The model is
formulated as a non-convex optimization problem. However, it can be
decomposed into iterative sub-optimization problems that are convex and for
which well-posed iterative schemes are provided in the context of the Fast
Iterative Shrinkage-Thresholding (FISTA) framework. Our numerical experiments
show two main results. Firstly, our graph-based auto-encoders improve the
classification accuracy by 2% over the auto-encoders without graph structure
for the popular GTZAN music dataset. Secondly, our model is significantly
more robust as it is 8% more accurate than the standard model in the presence
of 10% of perturbations.
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This repository contains the code developed during my master thesis.