secretaire-inma@uclouvain.be +32 10 47 80 36
Home > Publications > When compressive learning fails: blame the decode...
2020 • Conference Paper

When compressive learning fails: blame the decoder or the sketch?

Authors:
Schellekens, Vincent, Jacques, Laurent
Published in:
iTWIST'20

In compressive learning, a mixture model (a set of centroids or a Gaussian mixture) is learned from a sketch vector, that serves as a highly compressed representation of the dataset. This requires solving a non-convex optimization problem, hence in practice approximate heuristics (such as CLOMPR) are used. In this work we explore, by numerical simulations, properties of this non-convex optimization landscape and those heuristics.

Related Resources