Analysing Accelerometer Data Using Hidden Markov Models


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Documentation for package ‘HMMpa’ version 1.0.1

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HMMpa-package Analysing Accelerometer Data Using Hidden Markov Models
AIC_HMM AIC and BIC Value for a Discrete Time Hidden Markov Model
Baum_Welch_algorithm Estimation Using the Baum-Welch Algorithm
BIC_HMM AIC and BIC Value for a Discrete Time Hidden Markov Model
cut_off_point_method Cut-Off Point Method for Assigning Physical Activity Patterns
dgenpois The Generalized Poisson Distribution
direct_numerical_maximization Estimation by Directly Maximizing the log-Likelihood
forward_backward_algorithm Calculating Forward and Backward Probabilities and Likelihood
HMMpa Analysing Accelerometer Data Using Hidden Markov Models
HMM_based_method Hidden Markov Method for Predicting Physical Activity Patterns
HMM_decoding Algorithm for Decoding Hidden Markov Models (local or global)
HMM_simulation Generating Realizations of a Hidden Markov Model
HMM_training Training of Hidden Markov Models
initial_parameter_training Algorithm to Find Plausible Starting Values for Parameter Estimation
local_decoding_algorithm Algorithm for Decoding Hidden Markov Models (local)
pgenpois The Generalized Poisson Distribution
rgenpois The Generalized Poisson Distribution
Viterbi_algorithm Algorithm for Decoding Hidden Markov Models (global)