We present a fast algorithm for learning the parameters of the abstract hidden Markov model, a type of hierarchical activity recognition model. Learning using exact inference scales poorly as the number of levels in the hierarchy increases; therefore, an approximation is required for large models. We demonstrate that variational inference is well suited to solve this problem. Not only does this technique scale, but it also offers a natural way to leverage the context specific independence properties inherent in the model via the fixed point equations. Experiments confirm that the variational approximation significantly reduces the time necessary for learning while estimating parameter values that can be used to make reliable predictions
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
Human activity recognition (HAR) has become an interesting topic in healthcare. This application is ...
Hidden Markov models assume that obser-vations in time series data stem from some hidden process tha...
We present a fast algorithm for learning the parameters of the abstract hidden Markov model, a type ...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
Hidden Markov Models (HMMs) comprise a powerful generative approach for modeling sequential data and...
We present a learning algorithm for hidden Markov models with continuous state and observation space...
Variational inference algorithms have proven successful for Bayesian analysis in large data settings...
This paper establishes a duality between the calculus of variations, an increasingly common method f...
Bayesian nonparametric hidden Markov models are typically learned via fixed truncations of the infin...
Hidden Markov models (HMMs) have proven to be one of the most widely used tools for learning probabi...
The learning problem for Factorial Hidden Markov Models with discrete and multi-variate latent varia...
The hidden Markov model (HMM) is a widely-used generative model that copes with sequential data, ass...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
Human activity recognition (HAR) has become an interesting topic in healthcare. This application is ...
Hidden Markov models assume that obser-vations in time series data stem from some hidden process tha...
We present a fast algorithm for learning the parameters of the abstract hidden Markov model, a type ...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
Hidden Markov Models (HMMs) comprise a powerful generative approach for modeling sequential data and...
We present a learning algorithm for hidden Markov models with continuous state and observation space...
Variational inference algorithms have proven successful for Bayesian analysis in large data settings...
This paper establishes a duality between the calculus of variations, an increasingly common method f...
Bayesian nonparametric hidden Markov models are typically learned via fixed truncations of the infin...
Hidden Markov models (HMMs) have proven to be one of the most widely used tools for learning probabi...
The learning problem for Factorial Hidden Markov Models with discrete and multi-variate latent varia...
The hidden Markov model (HMM) is a widely-used generative model that copes with sequential data, ass...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
Human activity recognition (HAR) has become an interesting topic in healthcare. This application is ...
Hidden Markov models assume that obser-vations in time series data stem from some hidden process tha...