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Estimating multiresolution dependency graphs within the stationary wavelet framework

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Estimating multiresolution dependency graphs within the stationary wavelet framework. / Gibberd, A. J.; Nelson, J. D. B.
2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP). IEEE, 2015. p. 547-551.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Harvard

Gibberd, AJ & Nelson, JDB 2015, Estimating multiresolution dependency graphs within the stationary wavelet framework. in 2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP). IEEE, pp. 547-551. https://doi.org/10.1109/GlobalSIP.2015.7418255

APA

Gibberd, A. J., & Nelson, J. D. B. (2015). Estimating multiresolution dependency graphs within the stationary wavelet framework. In 2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP) (pp. 547-551). IEEE. https://doi.org/10.1109/GlobalSIP.2015.7418255

Vancouver

Gibberd AJ, Nelson JDB. Estimating multiresolution dependency graphs within the stationary wavelet framework. In 2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP). IEEE. 2015. p. 547-551 doi: 10.1109/GlobalSIP.2015.7418255

Author

Gibberd, A. J. ; Nelson, J. D. B. / Estimating multiresolution dependency graphs within the stationary wavelet framework. 2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP). IEEE, 2015. pp. 547-551

Bibtex

@inproceedings{6e9e0b1848454d80ac6bba1fbe9ea68c,
title = "Estimating multiresolution dependency graphs within the stationary wavelet framework",
abstract = "Very recently, the locally stationary wavelet framework has provided a means to describe the dependencies of co-varying time-series over a range of multiple scale levels. However, describing the many interactions between data-streams at different scale levels with only finite data poses some serious statistical estimation challenges. We illustrate that existing approaches suffer from large variance and are sometimes difficult to interpret. We here propose a sparsity-aware estimator which furnishes a set of multiresolution, dynamic graphs that describe how the dependency structure of the variables evolves through time and over multiple levels of scale. We show that the regulariser mitigates the variance and that, since the inference is performed using convex optimisation, it converges quickly to a global optima and scales well with respect to samples and nodes. Basic properties of the new method are established on simulated data. The method is applied to inferring dependency structure in multivariate EEG data-sets during epileptic seizures where it reveals evidence of band-limited dependency structure.",
author = "Gibberd, {A. J.} and Nelson, {J. D. B.}",
year = "2015",
month = dec,
day = "1",
doi = "10.1109/GlobalSIP.2015.7418255",
language = "English",
pages = "547--551",
booktitle = "2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP)",
publisher = "IEEE",

}

RIS

TY - GEN

T1 - Estimating multiresolution dependency graphs within the stationary wavelet framework

AU - Gibberd, A. J.

AU - Nelson, J. D. B.

PY - 2015/12/1

Y1 - 2015/12/1

N2 - Very recently, the locally stationary wavelet framework has provided a means to describe the dependencies of co-varying time-series over a range of multiple scale levels. However, describing the many interactions between data-streams at different scale levels with only finite data poses some serious statistical estimation challenges. We illustrate that existing approaches suffer from large variance and are sometimes difficult to interpret. We here propose a sparsity-aware estimator which furnishes a set of multiresolution, dynamic graphs that describe how the dependency structure of the variables evolves through time and over multiple levels of scale. We show that the regulariser mitigates the variance and that, since the inference is performed using convex optimisation, it converges quickly to a global optima and scales well with respect to samples and nodes. Basic properties of the new method are established on simulated data. The method is applied to inferring dependency structure in multivariate EEG data-sets during epileptic seizures where it reveals evidence of band-limited dependency structure.

AB - Very recently, the locally stationary wavelet framework has provided a means to describe the dependencies of co-varying time-series over a range of multiple scale levels. However, describing the many interactions between data-streams at different scale levels with only finite data poses some serious statistical estimation challenges. We illustrate that existing approaches suffer from large variance and are sometimes difficult to interpret. We here propose a sparsity-aware estimator which furnishes a set of multiresolution, dynamic graphs that describe how the dependency structure of the variables evolves through time and over multiple levels of scale. We show that the regulariser mitigates the variance and that, since the inference is performed using convex optimisation, it converges quickly to a global optima and scales well with respect to samples and nodes. Basic properties of the new method are established on simulated data. The method is applied to inferring dependency structure in multivariate EEG data-sets during epileptic seizures where it reveals evidence of band-limited dependency structure.

U2 - 10.1109/GlobalSIP.2015.7418255

DO - 10.1109/GlobalSIP.2015.7418255

M3 - Conference contribution/Paper

SP - 547

EP - 551

BT - 2015 IEEE Global Conference on Signal and Information Processing (GlobalSIP)

PB - IEEE

ER -