A crucial part of developing mathematical models of information processing in the brain is the quantification of their success. One of the most widely-used metrics yields the percentage of the variance in the data that is explained by the model. Unfortunately, this metric is biased due to the intrinsic variability in the data. We derive a simple analytical modification of the traditional formula that signifi-cantly improves its accuracy (as measured by bias) with similar or better precision (as measured by mean-square error) in estimating the true underlying Variance Explained by the model class. Our estimator advances on previous work by a) accounting for overfitting due to free model parameters mitigating the need for a separate validatio...
There is growing interest in applying statistical estimation methods to dynamical systems arising in...
Tuning curves are the functions that relate the responses of sensory neurons to various values withi...
Statistical parametric mapping (SPM) locates significant clusters based on a ratio of signal to nois...
A crucial part of developing mathematical models of information processing in the brain is the quant...
A convenient and often used summary measure to quantify the firing variability in neurons is the coe...
Tuning curves are the functions that relate the responses of sensory neurons to various val-ues with...
In computational neuroscience, it is important to estimate well the proportion of signal variance in...
Identifying the features of population responses that are relevant to the amount of information enco...
Many studies have explored the impact of response variability on the quality of sensory codes. The s...
(A) Tuning curves of individual neurons in macaque V1 in an attended (red) and unattended (gray) con...
An important issue in the neurosciences is a quantitative description of the relation between sensor...
International audienceTuning curves are the functions that relate the responses of sensory neurons t...
A rate code assumes that a neuron's response is completely characterized by its time-varying mean fi...
International audienceWe do not claim that the brain is completely deterministic, and we agree that ...
There are now numerous demonstrations that different sources of sensory information contribute to a ...
There is growing interest in applying statistical estimation methods to dynamical systems arising in...
Tuning curves are the functions that relate the responses of sensory neurons to various values withi...
Statistical parametric mapping (SPM) locates significant clusters based on a ratio of signal to nois...
A crucial part of developing mathematical models of information processing in the brain is the quant...
A convenient and often used summary measure to quantify the firing variability in neurons is the coe...
Tuning curves are the functions that relate the responses of sensory neurons to various val-ues with...
In computational neuroscience, it is important to estimate well the proportion of signal variance in...
Identifying the features of population responses that are relevant to the amount of information enco...
Many studies have explored the impact of response variability on the quality of sensory codes. The s...
(A) Tuning curves of individual neurons in macaque V1 in an attended (red) and unattended (gray) con...
An important issue in the neurosciences is a quantitative description of the relation between sensor...
International audienceTuning curves are the functions that relate the responses of sensory neurons t...
A rate code assumes that a neuron's response is completely characterized by its time-varying mean fi...
International audienceWe do not claim that the brain is completely deterministic, and we agree that ...
There are now numerous demonstrations that different sources of sensory information contribute to a ...
There is growing interest in applying statistical estimation methods to dynamical systems arising in...
Tuning curves are the functions that relate the responses of sensory neurons to various values withi...
Statistical parametric mapping (SPM) locates significant clusters based on a ratio of signal to nois...