biofam3c | Three-channel biofam data |
bootstrap | Bootstrap Sampling of NHMM Coefficients |
build_hmm | Build a Hidden Markov Model |
build_lcm | Build a Latent Class Model |
build_mhmm | Build a Mixture Hidden Markov Model |
build_mm | Build a Markov Model |
build_mmm | Build a Mixture Markov Model |
cluster_names | Get Cluster Names from Mixture HMMs |
cluster_names-set | Set Cluster Names for Mixture Models |
cluster_probs | Extract the Prior Cluster Probabilities of MHMM or MNHMM |
coef | Get the Estimated Regression Coefficients of Non-Homogeneous... |
colorpalette | Color palettes |
data_to_stslist | Transform TraMineR's state sequence object to data.table and... |
emission_probs | Extract the Emission Probabilities of Hidden Markov Model |
estimate_mnhmm | Estimate a Mixture Non-homogeneous Hidden Markov Model |
estimate_nhmm | Estimate a Non-homogeneous Hidden Markov Model |
fanhmm_leaves | A feedback-augmented non-homogeneuous hidden Markov Model for... |
fit_model | Estimate Parameters of (Mixture) Hidden Markov Models and... |
forward_backward | Forward and Backward Probabilities for Hidden Markov Model |
get_marginals | Compute the Marginal Probabilities from NHMMs |
gridplot | Plot Multidimensional Sequence Plots in a Grid |
hidden_paths | Most Probable Paths of Hidden States |
hmm_biofam | Hidden Markov model for the biofam data |
hmm_mvad | Hidden Markov model for the mvad data |
initial_probs | Extract the Initial State Probabilities of Hidden Markov... |
leaves | Synthetic data on fathers' parental leaves in Finland |
logLik_hmm | Log-likelihood of a Hidden Markov Model |
logLik_nhmm | Log-likelihood of a Non-homogeneous Hidden Markov Model |
mc_to_sc | Transform a Multichannel Hidden Markov Model into a Single... |
mc_to_sc_data | Merge Multiple Sequence Objects into One (from Multichannel... |
mhmm_biofam | Mixture hidden Markov model for the biofam data |
mhmm_mvad | Mixture hidden Markov model for the mvad data |
most_probable_cluster | Extract Most Probable Cluster for Each Sequence |
mssplot | Interactive Stacked Plots of Multichannel Sequences and/or... |
nobs | Number of Observations in Hidden Markov Model |
plot_colors | Plot Colorpalettes |
plot.hmm | Plot hidden Markov models |
plot.mhmm | Interactive Plotting for Mixed Hidden Markov Model (mhmm) |
plot.ssp | Stack Multichannel Sequence Plots and/or Most Probable Paths... |
posterior_cluster_probabilities | Extract Posterior Cluster Probabilities |
posterior_probs | Posterior Probabilities for Hidden Markov Models |
predict | Predictions from Non-homogeneous Hidden Markov Models |
Print Method for a Hidden Markov Model | |
reexports | Objects exported from other packages |
return_msg | Convert return code from estimate_nhmm and estimate_mnhmm to... |
separate_mhmm | Reorganize a mixture hidden Markov model to a list of... |
seqHMM-deprecated | Deprecated function(s) in the seqHMM package |
seqHMM-package | The seqHMM package |
simulate_hmm | Simulate hidden Markov models |
simulate_mhmm | Simulate Mixture Hidden Markov Models |
simulate_mnhmm | Simulate Mixture Non-homogeneous Hidden Markov Models |
simulate_nhmm | Simulate Non-homogeneous Hidden Markov Models |
simulate_pars | Simulate Parameters of Hidden Markov Models |
sort_sequences | Sort sequences in a sequence object |
ssp | Define Arguments for Plotting Multichannel Sequences and/or... |
ssplot | Stacked Plots of Multichannel Sequences and/or Most Probable... |
stacked_sequence_plot | Stacked Sequence Plots of Multichannel Sequences and/or Most... |
state_names | Get State Names of Hidden Markov Model |
summary.mhmm | Summary method for mixture hidden Markov models |
summary.mnhmm | Summary method for mixture non-homogenous hidden Markov... |
transition_probs | Extract the State Transition Probabilities of Hidden Markov... |
trim_model | Trim Small Probabilities of Hidden Markov Model |
update_nhmm | Update Covariate Values of NHMM |
vcov.mhmm | Variance-Covariance Matrix for Coefficients of Covariates of... |
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