2023
DOI: 10.1016/j.geits.2022.100062
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Decision-making models on perceptual uncertainty with distributional reinforcement learning

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Cited by 8 publications
(1 citation statement)
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“…Robots can also learn from human-like behavior and adapt using RL [184,185]. Lastly, handling uncertainty in the environment is important and Bayesian RL helps robots make decisions while considering potential risks [186][187][188][189][190][191][192][193]. All of this has transformed how robots work in different fields, from manipulation to agile movement, making them smarter and more adaptable.…”
Section: Elevating Decision-making Processesmentioning
confidence: 99%
“…Robots can also learn from human-like behavior and adapt using RL [184,185]. Lastly, handling uncertainty in the environment is important and Bayesian RL helps robots make decisions while considering potential risks [186][187][188][189][190][191][192][193]. All of this has transformed how robots work in different fields, from manipulation to agile movement, making them smarter and more adaptable.…”
Section: Elevating Decision-making Processesmentioning
confidence: 99%