This paper presents a model of brain systems underlying reaching in monkeys based on the idea that complex behaviors are built on the basis of a repertoire of motor primitives organized around specific goals (in this case, arm's postures). The architecture of the system is based on an actor-critic reinforcement-learning model, enhanced with an accumulator model for action selection, capable of selecting sensorimotor primitives so as to accomplish a discrimination reaching task that has been used in physiological studies of monkeys' premotor cortex. The results show that the proposed architecture is a first important step towards the construction of a biologically plausible integrated motor-primitive based model of the hierarchical organization of mammals' sensorimotor systems.
Ognibene, D., Mannella, F., Pezzulo, G., Baldassarre, G. (2006). Integrating reinforcement-learning, accumulator models, and motor-primitives to study action selection and reaching in monkeys. In Proceedings of the 7th International Conference on Cognitive Modelling-ICCM06 (pp.360-365). Springer.
Integrating reinforcement-learning, accumulator models, and motor-primitives to study action selection and reaching in monkeys
Ognibene D
Primo
;
2006
Abstract
This paper presents a model of brain systems underlying reaching in monkeys based on the idea that complex behaviors are built on the basis of a repertoire of motor primitives organized around specific goals (in this case, arm's postures). The architecture of the system is based on an actor-critic reinforcement-learning model, enhanced with an accumulator model for action selection, capable of selecting sensorimotor primitives so as to accomplish a discrimination reaching task that has been used in physiological studies of monkeys' premotor cortex. The results show that the proposed architecture is a first important step towards the construction of a biologically plausible integrated motor-primitive based model of the hierarchical organization of mammals' sensorimotor systems.File | Dimensione | Formato | |
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Integrating_Reinforcement-Learning_Accumulator_Mod.pdf
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Integrating_Reinforcement-Learning_Accumulator_Mod.pdf
accesso aperto
Tipologia di allegato:
Submitted Version (Pre-print)
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409.22 kB
Formato
Adobe PDF
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409.22 kB | Adobe PDF | Visualizza/Apri |
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