Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for multivariate oscillatory data often encountered in neuroscience. The global coherence provides a summary of coherent behavior in high-dimensional multivariate data by quantifying the concentration of variance in the first mode of an eigenvalue decomposition of the cross-spectral matrix. Practical application of this useful method is sensitive to noise, and can confound coherent activity in disparate neural populations or spatial locations that have a similar frequency structure. In this paper we describe two methodological enhancements to the global coherence procedure that increase robustness of the technique to noise, and that allow characte...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
Partial coherence measures the linear relationship between two signals after the influence of a thir...
The functional integration between the different parts of the brain is usually quanti¿ed through a m...
Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for m...
Time-frequency coherence has been widely used to quantify statistical dependencies in bivariate data...
Time and frequency domain analyses of scalp EEG recordings are widely used to track changes in brain...
Characterizing brain connectivity between neural signals is key to understanding brain function. Cur...
The study of complex systems consisting of many interacting subsystems requires the use of analytica...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
It is believed that neural activity evoked by cognitive tasks is spatially correlated in certain fre...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
A method of single-trial coherence analysis is presented, through the application of continuous muld...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
<p>The most left graphs (A,E,I) depict the coherence spectra within the 15–35 Hz frequency range for...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
Partial coherence measures the linear relationship between two signals after the influence of a thir...
The functional integration between the different parts of the brain is usually quanti¿ed through a m...
Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for m...
Time-frequency coherence has been widely used to quantify statistical dependencies in bivariate data...
Time and frequency domain analyses of scalp EEG recordings are widely used to track changes in brain...
Characterizing brain connectivity between neural signals is key to understanding brain function. Cur...
The study of complex systems consisting of many interacting subsystems requires the use of analytica...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
It is believed that neural activity evoked by cognitive tasks is spatially correlated in certain fre...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
A method of single-trial coherence analysis is presented, through the application of continuous muld...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
<p>The most left graphs (A,E,I) depict the coherence spectra within the 15–35 Hz frequency range for...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
Partial coherence measures the linear relationship between two signals after the influence of a thir...
The functional integration between the different parts of the brain is usually quanti¿ed through a m...