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Version
  • GMMDetector
  • GMMDetector
GitHub

GMMDetector

GMMDetector(n_components=1,
               covariance_type="full",
               tol=0.001,
               reg_covar=1e-06,
               max_iter=100,
               n_init=1,
               init_params="kmeans",
               weights_init=None,
               means_init=None,
               precisions_init=None,
               random_state=None,
               warm_start=False)

https://pyod.readthedocs.io/en/latest/pyod.models.html#module-pyod.models.gmm

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