This paper presents algorithms for parallelization of inference in hidden Markov models (HMMs). In particular, we propose parallel backward-forward type of filtering and smoothing algorithm as well as parallel Viterbi-type maximum-a-posteriori (MAP) algorithm. We define associative elements and operators to pose these inference problems as parallel-prefix-sum computations in sum-product and max-product algorithms and parallelize them using parallel-scan algorithms. The advantage of the proposed algorithms is that they are computationally efficient in HMM inference problems with long time horizons. We empirically compare the performance of the proposed methods to classical methods on a highly parallel graphical processing unit (GPU)
Bayesian computations with Hidden Markov Models (HMMs) are often avoided in prac-tice. Instead, due ...
International audienceFirst order Markov Random Fields (MRFs) have become a predominant tool in Comp...
We introduce a new embarrassingly parallel parameter learning algorithm for Markov random fields whi...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
In this paper, we present a novel algorithm for the maximum a posteriori decoding (MAPD) of time-hom...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
In this thesis, we introduce a new class of embarrassingly parallel parameter learning algorithms fo...
This thesis considers the problem of performing inference on undirected graphical models with contin...
This paper describes the parallel implementation of a Hidden Markov Model (HMM) for spoken language ...
http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=1323262International audienceThe hidden Mark...
Hidden Markov Models are probabilistic functions of finite state Markov chains. At each state of a M...
This paper presents a programmable system-on-chip implementation to be used for acceleration of comp...
Real world data is likely to contain an inherent structure. Those structures may be represented wit...
Bayesian computations with Hidden Markov Models (HMMs) are often avoided in prac-tice. Instead, due ...
International audienceFirst order Markov Random Fields (MRFs) have become a predominant tool in Comp...
We introduce a new embarrassingly parallel parameter learning algorithm for Markov random fields whi...
Funding Information: Manuscript received February 10, 2021; revised June 4, 2021 and July 26, 2021; ...
[[abstract]]© 1992 Elsevier-Presents parallel implementations of several hidden Markov model (HMM) a...
In this paper, we present a novel algorithm for the maximum a posteriori decoding (MAPD) of time-hom...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
International audienceHMMER is a widely used tool in bioinformatics, based on Profile Hidden Markov ...
In this thesis, we introduce a new class of embarrassingly parallel parameter learning algorithms fo...
This thesis considers the problem of performing inference on undirected graphical models with contin...
This paper describes the parallel implementation of a Hidden Markov Model (HMM) for spoken language ...
http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=1323262International audienceThe hidden Mark...
Hidden Markov Models are probabilistic functions of finite state Markov chains. At each state of a M...
This paper presents a programmable system-on-chip implementation to be used for acceleration of comp...
Real world data is likely to contain an inherent structure. Those structures may be represented wit...
Bayesian computations with Hidden Markov Models (HMMs) are often avoided in prac-tice. Instead, due ...
International audienceFirst order Markov Random Fields (MRFs) have become a predominant tool in Comp...
We introduce a new embarrassingly parallel parameter learning algorithm for Markov random fields whi...