index
Instructions4Authors
JournalGuidelines
Messages
Content
EditorialBoard

Hidden Markov models and learning in authentic situations
       
Léon Harvey
32-41
Keywords: learning situation , hidden markov model . Tools: Matlab.
(no sample data) (no appendix)

This paper introduces Hidden Markov Models for the analysis of authentic learning data from an applied field. For illustrative purposes, it shows how classical 2-state all-or-none models can be extended to adequately fit the competence development process of nursery apprentices in a clinical context. It also presents some of the main underlying ideas, such as model specifications, parameters estimation, model selection, the Viterbi algorithm, and goodness-of-fit issues.

Pages © TQMP;
last modified: February 29th, 2011;
page consulted on webmestre@tqmp.org