Using hidden Markov models (HMMs) and traditional behavior analysis, we have examined the effect of metacognitive prompting
on students’ learning in the context of our computer-based learning-by-teaching environment. This paper discusses our analysis
techniques, and presents evidence that HMMs can be used to effectively determine students’ pattern of activities. The results
indicate clear differences between different interventions, and links between students learning performance and their interactions
with the system.
Keywords Learning by Teaching environments - Metacognition - Behavior Analysis - hidden Markov modeling