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hmmlearn 0.3.2 documentation

  • Tutorial
  • Examples
  • API Reference
  • hmmlearn Changelog
  • GitHub
  • Tutorial
  • Examples
  • API Reference
  • hmmlearn Changelog
  • GitHub

hmmlearn#

Unsupervised learning and inference of Hidden Markov Models:

  • Simple algorithms and models to learn HMMs (Hidden Markov Models) in Python,

  • Follows scikit-learn API as close as possible, but adapted to sequence data,

  • Built on scikit-learn, NumPy, SciPy, and Matplotlib,

  • Open source, commercially usable — BSD license.

User guide: table of contents#

  • Tutorial
    • Available models
    • Building HMM and generating samples
    • Fixing parameters
    • Training HMM parameters and inferring the hidden states
    • Monitoring convergence
    • Working with multiple sequences
    • Saving and loading HMM
    • Implementing HMMs with custom emission probabilities
  • Examples
  • API Reference
    • hmmlearn.base
    • hmmlearn.hmm
    • hmmlearn.vhmm
  • hmmlearn Changelog
    • Version 0.3.2
    • Version 0.3.1
    • Version 0.3.0
    • Version 0.2.8
    • Version 0.2.7
    • Version 0.2.6
    • Version 0.2.5
    • Version 0.2.4
    • Version 0.2.3
    • Version 0.2.2
    • Version 0.2.1
    • Version 0.2.0
    • Version 0.1.1

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