SOTAVerified

Infinite Factorial Dynamical Model

2015-12-01NeurIPS 2015Code Available0· sign in to hype

Isabel Valera, Francisco Ruiz, Lennart Svensson, Fernando Perez-Cruz

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We propose the infinite factorial dynamic model (iFDM), a general Bayesian nonparametric model for source separation. Our model builds on the Markov Indian buffet process to consider a potentially unbounded number of hidden Markov chains (sources) that evolve independently according to some dynamics, in which the state space can be either discrete or continuous. For posterior inference, we develop an algorithm based on particle Gibbs with ancestor sampling that can be efficiently applied to a wide range of source separation problems. We evaluate the performance of our iFDM on four well-known applications: multitarget tracking, cocktail party, power disaggregation, and multiuser detection. Our experimental results show that our approach for source separation does not only outperform previous approaches, but it can also handle problems that were computationally intractable for existing approaches.

Tasks

Reproductions