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  1.  50
    Common Bayesian Models for Common Cognitive Issues.Francis Colas, Julien Diard & Pierre Bessière - 2010 - Acta Biotheoretica 58 (2-3):191-216.
    How can an incomplete and uncertain model of the environment be used to perceive, infer, decide and act efficiently? This is the challenge that both living and artificial cognitive systems have to face. Symbolic logic is, by its nature, unable to deal with this question. The subjectivist approach to probability is an extension to logic that is designed specifically to face this challenge. In this paper, we review a number of frequently encountered cognitive issues and cast them into a common (...)
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  2.  24
    The complementary roles of auditory and motor information evaluated in a Bayesian perceptuo-motor model of speech perception.Raphaël Laurent, Marie-Lou Barnaud, Jean-Luc Schwartz, Pierre Bessière & Julien Diard - 2017 - Psychological Review 124 (5):572-602.
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  3.  41
    Integrate, yes, but what and how? A computational approach of sensorimotor fusion in speech.Raphaël Laurent, Clément Moulin-Frier, Pierre Bessière, Jean-Luc Schwartz & Julien Diard - 2013 - Behavioral and Brain Sciences 36 (4):364 - 365.
    We consider a computational model comparing the possible roles of and in phonetic decoding, demonstrating that these two routes can contain similar information in some communication situations and highlighting situations where their decoding performance differs. We conclude that optimal decoding should involve some sort of fusion of association and simulation in the human brain.
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    Modeling Sensory Preference in Speech Motor Planning: A Bayesian Modeling Framework.Jean-François Patri, Julien Diard & Pascal Perrier - 2019 - Frontiers in Psychology 10.
    Experimental studies of speech production involving compensations for auditory and somatosensory perturbations and adaptation after training suggest that both types of sensory information are considered to plan and monitor speech production. Interestingly, individual sensory preferences have been observed in this context: subjects who compensate less for somatosensory perturbations compensate more for auditory perturbations, and \textit{vice versa}. We propose to integrate this sensory preference phenomenon in a model of speech motor planning using a probabilistic model in which speech units are characterized (...)
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