We propose a statistical mechanical framework for the modeling of discrete time series. Maximum likelihood estimation is done via Boltzmann learning in one-dimensional networks with tied weights. We call these networks Boltzmann chains and show that they contain hidden Markov models (HMMs) as a special case. Our framework also motivates new architectures that address partic-ular shortcomings of HMMs. We look at two such architectures: parallel chains that model feature sets with disparate time scales, and looped networks that model long-term dependencies between hidden states. For these networks, we show how to implement the Boltzmann learning rule exactly, in polynomial time, without resort to simulated or mean-field annealing. The necessa...
We present products of hidden Markov models (PoHMM's), a way of combining HMM's to form a ...
We describe discrete restricted Boltzmann machines: probabilistic graphical models with bipartite in...
By using hidden nodes, Boltzmann machines can be employed to approximate probability distributions, ...
We propose a statistical mechanical framework for the modeling of discrete time series. Maximum like...
Several authors have studied the relationship between hidden Markov models and "Boltzmann chain...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference princ...
We present a new learning algorithm for Boltzmann Machines that contain many layers of hidden variab...
In this thesis we develop a class of nonlinear generative models for high-dimensional time series. T...
We present a new algorithm for discovering patterns in time series and other sequential data. We exh...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
Hidden Markov models (HMMs) are a rich family of probabilistic time series models with a long and su...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
This article addresses the estimation of hidden semi-Markov chains from non stationary discrete sequ...
We present products of hidden Markov models (PoHMM's), a way of combining HMM's to form a ...
We describe discrete restricted Boltzmann machines: probabilistic graphical models with bipartite in...
By using hidden nodes, Boltzmann machines can be employed to approximate probability distributions, ...
We propose a statistical mechanical framework for the modeling of discrete time series. Maximum like...
Several authors have studied the relationship between hidden Markov models and "Boltzmann chain...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference princ...
We present a new learning algorithm for Boltzmann Machines that contain many layers of hidden variab...
In this thesis we develop a class of nonlinear generative models for high-dimensional time series. T...
We present a new algorithm for discovering patterns in time series and other sequential data. We exh...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
Hidden Markov models (HMMs) are a rich family of probabilistic time series models with a long and su...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
This article addresses the estimation of hidden semi-Markov chains from non stationary discrete sequ...
We present products of hidden Markov models (PoHMM's), a way of combining HMM's to form a ...
We describe discrete restricted Boltzmann machines: probabilistic graphical models with bipartite in...
By using hidden nodes, Boltzmann machines can be employed to approximate probability distributions, ...