Model Based Functional Data Analysis


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Documentation for package ‘MFDA’ version 1.1-1

Help Pages

check.start Check starting point
compute.center Update parameters for cluster k in M-step for functional mixture models.
compute.M.all M-step in the EM algorithm for functional mixture models.
compute.M.pk Compute the cluster proportion.
compute.reject The rejection controlled EM.
compute.weight Compute the weight for the penalized likelihood in M-step.
em.bic BIC for Functional Mixture Gaussian Models
em.clust Model-Based Clustering for a single Markov chain
Estep.tik Compute the conditional probability of subject i in cluster k in E-step for functional mixture models.
Estep.tk Compute the cluster proportion in E-step for functional mixture models.
MFclust Model-Based Functional Data Clustering
MFclust.compute Computational Component in Model-Based Functional Data Clustering
mkrandom Generating Random Effects for cluster model
testdata Time course simulated data