Closed-loop neurotechnologies often need to adaptively learn an encoding model that relates the neural activity to the brain state, and is used for brain state decoding. The speed and accuracy of adaptive learning algorithms are critically affected by the learning rate, which dictates how fast model parameters are updated based on new observations. Despite the importance of the learning rate, currently an analytical approach for its selection is largely lacking and existing signal processing methods vastly tune it empirically or heuristically. Here, we develop a novel analytical calibration algorithm for optimal selection of the learning rate in adaptive Bayesian filters. We formulate the problem through a fundamental trade-off that learnin...
in the statistical properties of neural signals recorded at the brain-machine interface (BMI) pose s...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
<p>Closed-loop neural systems often need to learn an encoding model adaptively and in real time. The...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
Nervous systems tune themselves to the statistical structure of the stimuli they encounter. This sen...
DoctorIn this thesis, improving the performance of adaptive learning-rate algorithms in neural netwo...
Point process modeling has the potential to capture the specificity of neural firing where the infor...
<p>Brain-machine interfaces (BMI) are systems which connect brains directly to machines or computers...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
<p>(A) The analytically-computed and the true error covariance and convergence time of the encoding ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
<p>Figure conventions are the same as <a href="http://www.ploscompbiol.org/article/info:doi/10.1371/...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
in the statistical properties of neural signals recorded at the brain-machine interface (BMI) pose s...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...
<p>Closed-loop neural systems often need to learn an encoding model adaptively and in real time. The...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
Nervous systems tune themselves to the statistical structure of the stimuli they encounter. This sen...
DoctorIn this thesis, improving the performance of adaptive learning-rate algorithms in neural netwo...
Point process modeling has the potential to capture the specificity of neural firing where the infor...
<p>Brain-machine interfaces (BMI) are systems which connect brains directly to machines or computers...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
<p>(A) The analytically-computed and the true error covariance and convergence time of the encoding ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
<p>Figure conventions are the same as <a href="http://www.ploscompbiol.org/article/info:doi/10.1371/...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
in the statistical properties of neural signals recorded at the brain-machine interface (BMI) pose s...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
Motor learning is driven by movement errors. The speed of learning can be quantified by the learning...