Learning priors for Bayesian computations in the nervous system.
about
Learning what to expect (in visual perception)Value normalization in decision making: theory and evidenceDistributed Bayesian Computation and Self-Organized Learning in Sheets of Spiking Neurons with Local Lateral InhibitionLearning and inference using complex generative models in a spatial localization task.Characterizing the impact of category uncertainty on human auditory categorization behavior.Continuous carryover of temporal context dissociates response bias from perceptual influence for duration.Spatiotemporal movement planning and rapid adaptation for manual interaction.Combining symbolic cues with sensory input and prior experience in an iterative bayesian framework.Modulation of internal estimates of gravity during and after prolonged roll-tilts.On the origins of suboptimality in human probabilistic inferenceSeeing what you want to see: priors for one's own actions represent exaggerated expectations of success.Environmental consistency determines the rate of motor adaptation.The generalization of prior uncertainty during reaching.Bayesian models: the structure of the world, uncertainty, behavior, and the brain.People favour imperfect catching by assuming a stable world.Differential representations of prior and likelihood uncertainty in the human brain.Selective attention increases choice certainty in human decision makingGeneralization of stochastic visuomotor rotations.Internal representations of temporal statistics and feedback calibrate motor-sensory interval timing.How much to trust the senses: likelihood learning.Fast and Accurate Learning When Making Discrete Numerical Estimates.Scaling prediction errors to reward variability benefits error-driven learning in humans.Target Uncertainty Mediates Sensorimotor Error Correction.The brain uses adaptive internal models of scene statistics for sensorimotor estimation and planningShort-term memory affects color perception in context.Generalization of prior information for rapid Bayesian time estimation.Magnitude Estimation with Noisy Integrators Linked by an Adaptive Reference.Trust in haptic assistance: weighting visual and haptic cues based on error history.Initial information prior to movement onset influences kinematics of upward arm pointing movements.Inference of perceptual priors from path dynamics of passive self-motion.Using psychophysics to ask if the brain samples or maximizes.Functional correlates of likelihood and prior representations in a virtual distance task.Dichotomy in perceptual learning of interval timing: calibration of mean accuracy and precision differ in specificity and time course.Sensorimotor priors in nonstationary environments.The integration of probabilistic information during sensorimotor estimation is unimpaired in children with Cerebral Palsy.Learning Contextual Reward Expectations for Value Adaptation.Arousal-related adjustments of perceptual biases optimize perception in dynamic environments.A cerebellar mechanism for learning prior distributions of time intervals.Does the sensorimotor system minimize prediction error or select the most likely prediction during object lifting?Hitting moving targets with a continuously changing temporal window.
P2860
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P2860
Learning priors for Bayesian computations in the nervous system.
description
2010 nî lūn-bûn
@nan
2010年の論文
@ja
2010年論文
@yue
2010年論文
@zh-hant
2010年論文
@zh-hk
2010年論文
@zh-mo
2010年論文
@zh-tw
2010年论文
@wuu
2010年论文
@zh
2010年论文
@zh-cn
name
Learning priors for Bayesian computations in the nervous system.
@en
Learning priors for Bayesian computations in the nervous system.
@nl
type
label
Learning priors for Bayesian computations in the nervous system.
@en
Learning priors for Bayesian computations in the nervous system.
@nl
prefLabel
Learning priors for Bayesian computations in the nervous system.
@en
Learning priors for Bayesian computations in the nervous system.
@nl
P2860
P1433
P1476
Learning priors for Bayesian computations in the nervous system.
@en
P2093
Martin Voss
Max Berniker
P2860
P356
10.1371/JOURNAL.PONE.0012686
P407
P577
2010-09-10T00:00:00Z