The detection of an error in the motor output and the correction in the next movement are critical components of any form of motor learning. Accordingly, a variety of iterative learning models have assumed that a fraction of the error is adjusted in the next trial. This critical fraction, the correction gain, learning rate, or feedback gain, has been frequently estimated via least-square regression of the obtained data set. Such data contain not only the inevitable noise from motor execution, but also noise from measurement. It is generally assumed that this noise averages out with large data sets and does not affect the parameter estimation. This study demonstrates that this is not the case and that in the presence of noise the conventiona...
In this paper a system identification method is described for the case of measurement errors on inpu...
Abstract Adaptive filtering algorithms are widespread today owing to their flexibility and simplicit...
In this contribution we shall describe a rather unified way of expressing bias and variance in predi...
In motor learning, our brain uses movement errors to adjust planning of future movements. This proce...
SummaryIn motor learning, our brain uses movement errors to adjust planning of future movements. Thi...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
Motor errors can have both bias and noise components. Bias can be compensated for by adaptation and,...
Abstract Motor control is the study of how organisms make accurate goaldirected movements. Here we c...
<p>A) Error estimation model. The random errors are Gaussian distributed. For any given error as in...
Humans recalibrate the mapping between their visual and motor systems when they perceive systematic ...
Exploration in reward-based motor learning is observable in experimental data as increased variabili...
Motor learning studies face the challenge of differentiating between real changes in performance and...
Exploration in reward-based motor learning is observable in experimental data as increased variabili...
This paper considers the problem of identifying linear systems, where the input is observed in white...
In this paper a system identification method is described for the case of measurement errors on inpu...
Abstract Adaptive filtering algorithms are widespread today owing to their flexibility and simplicit...
In this contribution we shall describe a rather unified way of expressing bias and variance in predi...
In motor learning, our brain uses movement errors to adjust planning of future movements. This proce...
SummaryIn motor learning, our brain uses movement errors to adjust planning of future movements. Thi...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
Motor errors can have both bias and noise components. Bias can be compensated for by adaptation and,...
Abstract Motor control is the study of how organisms make accurate goaldirected movements. Here we c...
<p>A) Error estimation model. The random errors are Gaussian distributed. For any given error as in...
Humans recalibrate the mapping between their visual and motor systems when they perceive systematic ...
Exploration in reward-based motor learning is observable in experimental data as increased variabili...
Motor learning studies face the challenge of differentiating between real changes in performance and...
Exploration in reward-based motor learning is observable in experimental data as increased variabili...
This paper considers the problem of identifying linear systems, where the input is observed in white...
In this paper a system identification method is described for the case of measurement errors on inpu...
Abstract Adaptive filtering algorithms are widespread today owing to their flexibility and simplicit...
In this contribution we shall describe a rather unified way of expressing bias and variance in predi...