Variational inference algorithms have proven successful for Bayesian analysis in large data settings, with recent advances using stochastic variational infer-ence (SVI). However, such methods have largely been studied in independent or exchangeable data settings. We develop an SVI algorithm to learn the parameters of hidden Markov models (HMMs) in a time-dependent data setting. The chal-lenge in applying stochastic optimization in this setting arises from dependencies in the chain, which must be broken to consider minibatches of observations. We propose an algorithm that harnesses the memory decay of the chain to adaptively bound errors arising from edge effects. We demonstrate the effectiveness of our algorithm on synthetic experiments and...
We present a learning algorithm for hidden Markov models with continuous state and observation space...
Background: Hidden Markov models are widely employed by numerous bioinformatics pro...
International audienceIssues involving missing data are typical settings where exact inference is no...
Bayesian models provide powerful tools for an-alyzing complex time series data, but perform-ing infe...
Stochastic variational inference for collapsed models has recently been successfully applied to larg...
Stochastic variational inference (SVI) uses stochastic optimization to scale up Bayesian computation...
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...
Stochastic variational inference for collapsed models has recently been successfully applied to larg...
Estimating hidden processes from non-linear noisy observations is particularly difficult when the pa...
The Student’s-t hidden Markov model (SHMM) has been recently proposed as a robust to outliers form o...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
<p>Stochastic variational inference finds good posterior approximations of probabilistic models with...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
We present a learning algorithm for hidden Markov models with continuous state and observation space...
Background: Hidden Markov models are widely employed by numerous bioinformatics pro...
International audienceIssues involving missing data are typical settings where exact inference is no...
Bayesian models provide powerful tools for an-alyzing complex time series data, but perform-ing infe...
Stochastic variational inference for collapsed models has recently been successfully applied to larg...
Stochastic variational inference (SVI) uses stochastic optimization to scale up Bayesian computation...
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...
Stochastic variational inference for collapsed models has recently been successfully applied to larg...
Estimating hidden processes from non-linear noisy observations is particularly difficult when the pa...
The Student’s-t hidden Markov model (SHMM) has been recently proposed as a robust to outliers form o...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
<p>Stochastic variational inference finds good posterior approximations of probabilistic models with...
We present a learning algorithm for hidden Markov models with continuous state and observa-tion spac...
We present a learning algorithm for hidden Markov models with continuous state and observation space...
Background: Hidden Markov models are widely employed by numerous bioinformatics pro...
International audienceIssues involving missing data are typical settings where exact inference is no...