about
A neuroeconomics approach to inferring utility functions in sensorimotor controlAdaptive tuning functions arise from visual observation of past movement.Neural Tuning Functions Underlie Both Generalization and Interference.Learning to pronounce first words in three languages: an investigation of caregiver and infant behavior using a computational model of an infant.The effect of contextual cues on the encoding of motor memoriesGone in 0.6 seconds: the encoding of motor memories depends on recent sensorimotor states.Separate representations of dynamics in rhythmic and discrete movements: evidence from motor learningContext-dependent partitioning of motor learning in bimanual movements.A single-rate context-dependent learning process underlies rapid adaptation to familiar object dynamics.Multiple grasp-specific representations of tool dynamics mediate skillful manipulation.Enhanced crosslimb transfer of force-field learning for dynamics that are identical in extrinsic and joint-based coordinates for both limbsTask effects reveal cognitive flexibility responding to frequency and predictability: evidence from eye movements in reading and proofreadingThe value of the follow-through derives from motor learning depending on future actions.Active lead-in variability affects motor memory formation and slows motor learning.Composition and decomposition in bimanual dynamic learning.Simulating Moral Actions: An Investigation of Personal Force in Virtual Moral Dilemmas.Virtual morality in the helping professions: Simulated action and resilience.Modeling the development of pronunciation in infant speech acquisition.A modular planar robotic manipulandum with end-point torque control.Speech development: toddlers don't mind getting it wrongAsymmetry in kinematic generalization between visual and passive lead-in movements are consistent with a forward model in the sensorimotor system
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P50
description
investigador
@es
researcher
@en
wetenschapper
@nl
name
Ian S Howard
@en
Ian S Howard
@nl
type
label
Ian S Howard
@en
Ian S Howard
@nl
prefLabel
Ian S Howard
@en
Ian S Howard
@nl
P31
P496
0000-0002-6041-9669