GaussianMixture

class pyspark.mllib.clustering.GaussianMixture[source]

Learning algorithm for Gaussian Mixtures using the expectation-maximization algorithm.

New in version 1.3.0.

Methods

train(rdd, k[, convergenceTol, …])

Train a Gaussian Mixture clustering model.

Methods Documentation

classmethod train(rdd, k, convergenceTol=0.001, maxIterations=100, seed=None, initialModel=None)[source]

Train a Gaussian Mixture clustering model.

New in version 1.3.0.

Parameters
rdd:pyspark.RDD

Training points as an RDD of pyspark.mllib.linalg.Vector or convertible sequence types.

kint

Number of independent Gaussians in the mixture model.

convergenceTolfloat, optional

Maximum change in log-likelihood at which convergence is considered to have occurred. (default: 1e-3)

maxIterationsint, optional

Maximum number of iterations allowed. (default: 100)

seedint, optional

Random seed for initial Gaussian distribution. Set as None to generate seed based on system time. (default: None)

initialModelGaussianMixtureModel, optional

Initial GMM starting point, bypassing the random initialization. (default: None)