Semi-Supervised Learning under a Mixed-Missingness Mechanism in Finite Mixture Models


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Documentation for package ‘SSLfmm’ version 0.1.0

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bayesclassifier Bayes' Rule Classifier
compute_d2 Squared Discriminant Score for Two-Group LDA (Equal Covariance)
EM_FMM_SemiSupervised EM for Semi-Supervised FMM with a Mixed-Missingness Mechanism (MCAR + entropy-based MAR)
EM_FMM_SemiSupervised_Complete_Initial Complete-Data Warm-Up Initialization for Semi-Supervised FMM with a Mixed-Missingness Mechanism
EM_FMM_SemiSupervised_Initial Quick Initializer for alpha, xi, and Mixture Parameters
error_beta_classification Compute Theoretical Bayes' Error for a Binary Gaussian Mixture
get_clusterprobs Posterior Cluster Probabilities for a Gaussian Mixture
get_entropy Per-Row Entropy of Posterior Cluster Probabilities
initialestimate Initialize Parameters for a FMM from Labeled Subset
logsumexp Numerically Stable Log-Sum-Exp
neg_loglik Negative Log-Likelihood for Semi-Supervised FMM with a Mixed-Missingness Mechanism
normalise_logprob Normalise Log-Probabilities
pack_theta Pack FMM Parameters into a Vector
rmix Draw from a Gaussian Mixture Model
simulate_mixed_missingness Simulate a Gaussian Mixture Dataset with a Mixed-Missingness Mechanism (MAR + MCAR)
unpack_theta Unpack FMM Parameter Vector