20062019
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Fingerprint Dive into the research topics where Matthew Nunes is active. These topic labels come from the works of this person. Together they form a unique fingerprint.

Wavelets Mathematics
Time series Engineering & Materials Science
Bayesian Computation Mathematics
Texture Analysis Mathematics
Long Memory Mathematics
Nonparametric Regression Mathematics
Missing Observations Mathematics
Textures Engineering & Materials Science

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Research Output 2006 2019

Book Review: Time Series: A Data Analysis Approach Using R

Nunes, M., 14 Oct 2019, In : Journal of Time Series Analysis.

Research output: Contribution to journalBook/Film/Article review

Dynamic detection of anomalous regions within distributed acoustic sensing data streams using locally stationary wavelet time series

Wilson, R., Eckley, I. A., Nunes, M. & Park, T., 15 May 2019, In : Data Mining and Knowledge Discovery. 33, 3, p. 748-772 25 p.

Research output: Contribution to journalArticle

Open Access
Time series
Acoustics
Data recording
Oil wells
Monitoring

Generalised Network Autoregressive Processes and the GNAR package

Knight, M. I., Leeming, K., Nason, G. P. & Nunes, M., 19 Sep 2019, (Accepted/In press) In : Journal of Statistical Software.

Research output: Contribution to journalArticle

Long memory estimation for complex-valued time series

Knight, M. I. & Nunes, M. A., May 2019, In : Statistics and Computing. 29, 3, p. 517-536 20 p.

Research output: Contribution to journalArticle

Open Access
Long Memory
Time series
Data storage equipment
Hurst Exponent
Irregular Sampling
2 Citations (Scopus)

Complex-Valued Wavelet Lifting and Applications

Hamilton, J., Nunes, M. A., Knight, M. I. & Fryzlewicz, P., 2 Jan 2018, In : Technometrics. 60, 1, p. 48-60 13 p.

Research output: Contribution to journalArticle

Open Access
Lifting Scheme
Wavelets
Nonparametric Regression
Sampling
Time series analysis