Provided by: mlpack-bin_3.2.2-3_amd64 bug

NAME

       mlpack_hmm_train - hidden markov model (hmm) training

SYNOPSIS

        mlpack_hmm_train -i string [-b bool] [-g int] [-m unknown] [-l string] [-s int] [-n int] [-T double] [-t string] [-V bool] [-M unknown] [-h -v]

DESCRIPTION

       This  program  allows  a Hidden Markov Model to be trained on labeled or unlabeled data. It supports four
       types of HMMs: Discrete HMMs, Gaussian HMMs, GMM HMMs, or Diagonal GMM HMMs

       Either one input sequence can be specified (with --input_file), or, a  file  containing  files  in  which
       input  sequences  can be found (when --input_file and --batch are used together). In addition, labels can
       be provided in the file  specified  by  --labels_file,  and  if  --batch  is  used,  the  file  given  to
       --labels_file  should  contain a list of files of labels corresponding to the sequences in the file given
       to --input_file.

       The HMM is trained with the Baum-Welch algorithm if no labels are provided.  The tolerance of  the  Baum-
       Welch  algorithm  can  be  set with the --tolerance option. By default, the transition matrix is randomly
       initialized and the emission distributions are initialized to fit the extent of the data.

       Optionally, a pre-created HMM model can be used as  a  guess  for  the  transition  matrix  and  emission
       probabilities; this is specifiable with --model_file.

REQUIRED INPUT OPTIONS

       --input_file (-i) [string]
              File containing input observations.

OPTIONAL INPUT OPTIONS

       --batch (-b) [bool]
              If true, input_file (and if passed, labels_file) are expected to contain a list of files to use as
              input observation sequences (and label sequences).

       --gaussians (-g) [int]
              Number of gaussians in each GMM (necessary when type is 'gmm'). Default value 0.

       --help (-h) [bool]
              Default help info.

       --info [string]
              Print help on a specific option. Default value ''.

       --input_model_file (-m) [unknown]
              Pre-existing HMM model to initialize training with.

       --labels_file (-l) [string]
              Optional file of hidden states, used for labeled training. Default value ''.

       --seed (-s) [int]
              Random seed. If 0, 'std::time(NULL)' is used.  Default value 0.

       --states (-n) [int]
              Number of hidden states in HMM (necessary, unless model_file is specified). Default value 0.

       --tolerance (-T) [double]
              Tolerance of the Baum-Welch algorithm. Default value 1e-05.

       --type (-t) [string]
              Type of HMM: discrete | gaussian | diag_gmm | gmm. Default value 'gaussian'.

       --verbose (-v) [bool]
              Display informational messages and the full list of parameters and timers at the end of execution.

       --version (-V) [bool]
              Display the version of mlpack.

OPTIONAL OUTPUT OPTIONS

       --output_model_file (-M) [unknown]
              Output for trained HMM.

ADDITIONAL INFORMATION

       For further information, including relevant papers, citations,  and  theory,  consult  the  documentation
       found at http://www.mlpack.org or included with your distribution of mlpack.