International audienceA stochastic algorithm is proposed, finding the set of generalized means associated to a probability measure on a compact Riemannian manifold M and a continuous cost function on the product of M by itself. Generalized means include p-means for p>0, computed with any continuous distance function, not necessarily the Riemannian distance. They also include means for lengths computed from Finsler metrics, or for divergences. The algorithm is fed sequentially with independent random variables Y_n distributed according to the probability measure on the manifold and this is the only knowledge of this measure required. It evolves like a Brownian motion between the times it jumps in direction of the Y_n. Its principle is based ...
A family of kernels for statistical learning is introduced that exploits the geometric struc-ture of...
AbstractWe derive an upper bound on the large-time exponential behavior of the solution to a stochas...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
A stochastic algorithm is proposed, finding the set of generalized means associated to a probability...
International audienceA stochastic algorithm is proposed, finding the set of generalized means assoc...
A stochastic algorithm is proposed, finding the set of intrinsic $p$-mean(s) associated to a probabi...
A stochastic algorithm is proposed, finding the set of intrinsic $p$-mean(s) associated to a probabi...
International audienceConsider a probability measure supported by a regular geodesic ball in a manif...
Abstract—This primer explains how continuous-time stochastic processes (precisely, Brownian motion a...
Some stochastic filtering problems are formulated and solved where the observations are described by...
We will discuss several problems related to stochastic analysis on manifolds, especially analysis on...
AbstractThe gradient and divergence operators of stochastic analysis on Riemannian manifolds are exp...
Computing sample means on Riemannian manifolds is typically computationally costly, as exemplified b...
We propose a method for developing the flows of stochastic dynamical systems, posed as Ito's stochas...
The combination of adaptive network algorithms and stochastic geometric dynamics has the potential t...
A family of kernels for statistical learning is introduced that exploits the geometric struc-ture of...
AbstractWe derive an upper bound on the large-time exponential behavior of the solution to a stochas...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
A stochastic algorithm is proposed, finding the set of generalized means associated to a probability...
International audienceA stochastic algorithm is proposed, finding the set of generalized means assoc...
A stochastic algorithm is proposed, finding the set of intrinsic $p$-mean(s) associated to a probabi...
A stochastic algorithm is proposed, finding the set of intrinsic $p$-mean(s) associated to a probabi...
International audienceConsider a probability measure supported by a regular geodesic ball in a manif...
Abstract—This primer explains how continuous-time stochastic processes (precisely, Brownian motion a...
Some stochastic filtering problems are formulated and solved where the observations are described by...
We will discuss several problems related to stochastic analysis on manifolds, especially analysis on...
AbstractThe gradient and divergence operators of stochastic analysis on Riemannian manifolds are exp...
Computing sample means on Riemannian manifolds is typically computationally costly, as exemplified b...
We propose a method for developing the flows of stochastic dynamical systems, posed as Ito's stochas...
The combination of adaptive network algorithms and stochastic geometric dynamics has the potential t...
A family of kernels for statistical learning is introduced that exploits the geometric struc-ture of...
AbstractWe derive an upper bound on the large-time exponential behavior of the solution to a stochas...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...