Up2Europe est un accélérateur d’idées pour des projets de coopération.
La plateforme Ma Région Sud fait partie de l'écosystème de Up2Europe qui permet de booster la coopération à un niveau supérieur!
Besoin d'aide ? La Région Sud vous accompagne
Laissez-vous guider par notre équipe d'experts ! Saisissez votre mail et nous reviendrons vers vous rapidement
Theoretical and Algorithmic Foundations for Future.. (Future Proof)
Theoretical and Algorithmic Foundations for Future Proof Information and Inference Systems
(Future Proof)
Date du début: 1 janv. 2012,
Date de fin: 31 déc. 2016
PROJET
TERMINÉ
A critical technological challenge for emerging information systems is to acquire, analyze and learn from the ever-increasing high-dimensional data produced by natural and man-made phenomena. Sampling, streaming, and recoding of even the most basic applications now produce a data deluge that severely stresses the available analog-to-digital converter, digital communication and storage resources, and easily swamps the back-end processing and learning systems.Surprisingly, while the ambient data dimension is large in many problems, the relevant information therein typically resides in a much lower dimensional space. Viewed combinatorially and geometrically, natural constraints often cause data to cluster along low-dimensional structures, such as unions-of-subspaces or manifolds, having a few degrees of freedom relative to their size. This powerful notion suggests the potential for developing highly efficient methods for processing and learning by capturing and exploiting the inherent model, or data’s “information level.”To this end, we seek to revolutionize scientific and practical modi operandi of data acquisition and learning by developing a new optimization and analysis framework based on the nascent low-dimensional models with broad applications—from inverse problems to analog-to-information conversion, and from automated representation learning to statistical regression. We attack the curse of dimensionality in specific ways, not only by relying on the blessing of dimensionality via concentration-of-measures, but also by exploiting geometric topologies and the diminishing returns (i.e., submodularity) within learning objectives. We believe only an approach such as ours can provide the theoretical scaffold for a future proof processing and learning framework that scales its operation to the problem’s information level, promising substantial reductions in hardware complexity, communication, storage, and computational resources.
Accédez au prémier réseau pour la cooperation européenne
Se connecter
BATIMENT CE 3316 STATION 1
1015 LAUSANNE
(Switzerland)
Bonjour, vous êtes sur la plateforme Région Sud Provence-Alpes-Côte d’Azur dédiée aux programmes thématiques et de coopération territoriale. Une équipe d’experts vous accompagne dans vos recherches de financements.
Contactez-nous !
Contactez la Région Sud Provence-Alpes-Côte d'Azur
Vous pouvez nous écrire en Anglais, Français et Italien