Cognition is a complex and dynamic process. It is an essential goal to
estimate latent attentional states based on behavioral measures in many
sequences of behavioral tasks. Here, we propose a probabilistic modeling
and inference framework for estimating the attentional state using simultaneous binary and continuous behavioral measures. The proposed model
extends the standard hidden Markov model (HMM) by explicitly modeling the state duration distribution, which yields a special example of
the hidden semi-Markov model (HSMM). We validate our methods using
computer simulations and experimental data. In computer simulations,
we systematically investigate the impacts of model mismatch and the latency distribution. For the experimental data collected from a rodent visual detection task, we validate the results with predictive log-likelihood. Our work is useful for many behavioral neuroscience experiments, where
the common goal is to infer the discrete (binary or multinomial) state
sequences from multiple behavioral measures
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