Schlumberger workshop - Computational and statistical trade-offs in learning

Collection Schlumberger workshop - Computational and statistical trade-offs in learning

Organisateur(s)
Date(s) 16/05/2024
00:00:00 / 00:00:00
9 10

Projections, Learning, and Sparsity for Efficient Data Processing

De Remi Gribonval, Renaud Dessalles

The talk will discuss recent generalizations of sparse recovery guarantees and compressive sensing to the context of machine learning. Assuming some "low-dimensional model" on the probability distribution of the data, we will see that in certain scenarios it is indeed (empirically) possible to compress a large data-collection into a reduced representation, of size driven by the complexity of the learning task, while preserving the essential information necessary to process it. Two case studies will be given: compressive clustering, and compressive Gaussian Mixture Model estimation, with an illustration on large-scale model-based speaker verification. Time allowing, some recent results on compressive spectral clustering will also be discussed.

Informations sur la vidéo

  • Date de captation 23/03/2016
  • Date de publication 28/03/2016
  • Institut IHES
  • Format MP4

Domaine(s)

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