Motor learning is optimally tuned to the properties of motor noise.
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Rewarding imperfect motor performance reduces adaptive changes.Movement variability near goal equivalent manifolds: fluctuations, control, and model-based analysisCompetition between movement plans increases motor variability: evidence of a shared resource for movement planning.A Bayesian Account of Vocal Adaptation to Pitch-Shifted Auditory Feedback.The effect of contextual cues on the encoding of motor memoriesAuditory cortex processes variation in our own speech.Sonification and haptic feedback in addition to visual feedback enhances complex motor task learningTerminal Feedback Outperforms Concurrent Visual, Auditory, and Haptic Feedback in Learning a Complex Rowing-Type TaskProbing the independence of formant control using altered auditory feedback.Augmented visual, auditory, haptic, and multimodal feedback in motor learning: A reviewHow does our motor system determine its learning rate?What autocorrelation tells us about motor variability: insights from dart throwing.Similarities in error processing establish a link between saccade prediction at baseline and adaptation performance.A computational model of limb impedance control based on principles of internal model uncertaintySeeing what you want to see: priors for one's own actions represent exaggerated expectations of success.Learning from sensory and reward prediction errors during motor adaptation.Neuromotor noise, error tolerance and velocity-dependent costs in skilled performance.Motor variability arises from a slow random walk in neural state.Maximization of learning speed in the motor cortex due to neuronal redundancy.Bayesian models: the structure of the world, uncertainty, behavior, and the brain.Dynamic reconfiguration of human brain networks during learningMotor output variability, deafferentation, and putative deficits in kinesthetic reafference in Parkinson's diseaseGeneralization of stochastic visuomotor rotations.The nervous system uses nonspecific motor learning in response to random perturbations of varying natureEffects of local and widespread muscle fatigue on movement timing.Testing whether humans have an accurate model of their own motor uncertainty in a speeded reaching task.Trial-to-trial reoptimization of motor behavior due to changes in task demands is limitedImmediate tool incorporation processes determine human motor planning with tools.Knowing each random error of our ways, but hardly correcting for it: an instance of optimal performanceProspective errors determine motor learning.Visuomotor adaptation: how forgetting keeps us conservative.Identifying stride-to-stride control strategies in human treadmill walking.Do Cost Functions for Tracking Error Generalize across Tasks with Different Noise Levels?A memory of errors in sensorimotor learning.Rapid Visuomotor Corrective Responses during Transport of Hand-Held Objects Incorporate Novel Object Dynamics.Correcting for Visuo-Haptic Biases in 3D Haptic Guidance.Noise Induces Biased Estimation of the Correction Gain.Neuromotor Noise Is Malleable by Amplifying Perceived Errors.Visuomotor feedback gains upregulate during the learning of novel dynamics.The Statistical Determinants of the Speed of Motor Learning.
P2860
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P2860
Motor learning is optimally tuned to the properties of motor noise.
description
2009 nî lūn-bûn
@nan
2009年の論文
@ja
2009年学术文章
@wuu
2009年学术文章
@zh-cn
2009年学术文章
@zh-hans
2009年学术文章
@zh-my
2009年学术文章
@zh-sg
2009年學術文章
@yue
2009年學術文章
@zh
2009年學術文章
@zh-hant
name
Motor learning is optimally tuned to the properties of motor noise.
@en
Motor learning is optimally tuned to the properties of motor noise.
@nl
type
label
Motor learning is optimally tuned to the properties of motor noise.
@en
Motor learning is optimally tuned to the properties of motor noise.
@nl
prefLabel
Motor learning is optimally tuned to the properties of motor noise.
@en
Motor learning is optimally tuned to the properties of motor noise.
@nl
P1433
P1476
Motor learning is optimally tuned to the properties of motor noise
@en
P2093
Robert J van Beers
P304
P356
10.1016/J.NEURON.2009.06.025
P407
P577
2009-08-01T00:00:00Z