Unsupervised Multi-Task and Transfer Learning on Gaussian Mixture Models


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Documentation for package ‘mtlgmm’ version 0.1.0

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alignment Align the initializations.
alignment_swap Complete the alignment of initializations based on the output of function 'alignment_swap'.
data_generation Generate data for simulations.
estimation_error Caluclate the estimation error of GMM parameters under the MTL setting (the worst performance among all tasks).
initialize Initialize the estimators of GMM parameters on each task.
misclustering_error Calculate the misclustering error given the predicted cluster labels.
mtlgmm Fit binary Gaussian mixture models (GMMs) on multiple data sets under a multi-task learning (MTL) setting.
predict_gmm Clustering new observations based on fitted GMM estimators.
tlgmm Fit the binary Gaussian mixture model (GMM) on target data set by leveraging multiple source data sets under a transfer learning (TL) setting.