new MCMC algorithm for Bayesian variable selection

Flight from Bristol to Amsterdam, April 03, 2011Unfortunately, I will miss the incoming Bayes in Paris seminar next Thursday (27th February), as I will be flying to Montréal and then Québec at the time (despite having omitted to book a flight till now!). Indeed Amandine Shreck will give a talk at 2pm in room 18 of ENSAE, Malakoff, on A shrinkage-thresholding Metropolis adjusted Langevin algorithm for Bayesian variable selection, a work written jointly with Gersende Fort, Sylvain Le Corff, and Eric Moulines, and arXived at the end of 2013 (which may explain why I missed it!). Here is the abstract:

This paper introduces a new Markov Chain Monte Carlo method to perform Bayesian variable selection in high dimensional settings. The algorithm is a Hastings-Metropolis sampler with a proposal mechanism which combines (i) a Metropolis adjusted Langevin step to propose local moves associated with the differentiable part of the target density with (ii) a shrinkage-thresholding step based on the non-differentiable part of the target density which provides sparse solutions such that small components are shrunk toward zero. This allows to sample from distributions on spaces with different dimensions by actually setting some components to zero. The performances of this new procedure are illustrated with both simulated and real data sets. The geometric ergodicity of this new transdimensional Markov Chain Monte Carlo sampler is also established.

(I will definitely get a look at the paper over the coming days!)

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