Climate is a paradigm of a complex system. Analysing climate data is an
exciting challenge, which is increased by non-normal distributional
shape, serial dependence, uneven spacing and timescale uncertainties.
This book presents bootstrap resampling as a computing-intensive method
able to meet the challenge. It shows the bootstrap to perform reliably
in the most important statistical estimation techniques: regression,
spectral analysis, extreme values and correlation.
This book is written for climatologists and applied statisticians. It
explains step by step the bootstrap algorithms (including novel
adaptions) and methods for confidence interval construction. It tests
the accuracy of the algorithms by means of Monte Carlo experiments. It
analyses a large array of climate time series, giving a detailed account
on the data and the associated climatological questions.
"....comprehensive mathematical and statistical summary of time-series
analysis techniques geared towards climate applications...accessible to
readers with knowledge of college-level calculus and statistics."
(Computers and Geosciences)
"A key part of the book that separates it from other time series works
is the explicit discussion of time uncertainty...a very useful text for
those wishing to understand how to analyse climate time series."
(Journal of Time Series Analysis)
"...outstanding. One of the best books on advanced practical time
series analysis I have seen." (David J. Hand, Past-President Royal
Statistical Society)