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The technique, known as "wavelet bootstrapping" or "wavestrapping,"
has applications in the geophysical sciences, bioinformatics, medical
imaging, nanotechnology and other areas. It can also be useful for rapidly
obtaining information from small data sets in such applications as medical
diagnostics.
Wavelets are mathematical functions that have become increasingly important
to researchers because of their ability to analyze data sets that are
difficult to understand using traditional techniques such as Fast Fourier
Transform. For instance, signals within noisy data recorded in the time
domain can become more meaningful when analyzed in the wavelet domain.
Wavestrapping was pioneered by University of Washington researchers,
who applied wavelet transforms to an established statistical re-sampling
technique known as bootstrapping, which is used to extract additional
information from single data runs. The marriage of bootstrapping and wavelets
offers a new tool for the analysis of data sets that would otherwise be
difficult to study because of correlation and time-dependency issues.
"The new thing here is re-sampling, but not in the time domain,
which would be nearly impossible because of the strong dependence of data
or correlation of data," said Brani
Vidakovic, professor at the Georgia Institute of Technology's School
of Industrial and Systems Engineering. "By transferring the data
to the wavelet domain, applying re-sampling methods and then returning
the re-sampled data as variants in the time domain, you can then proceed
as if you had a data ensemble rather than a single run."
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Vidakovic discussed his research on validating wavelet bootstrapping
strategies and assessing their variability bounds at the annual meeting
of the American Association for the Advancement of Science (AAAS) in Seattle.
His presentation "What Does a Single Run Tell about the Ensemble?"
was part of a session "Wavelet-Based Statistical Analysis of Multiscale
Geophysical Data" held on February 16.
"Sometimes scientists have a single measurement and they are unable
to get another measurement," Vidakovic explained. "Sometimes
they would like to have an ensemble of measurements with similar boundary
conditions so the heterogeneity caused by external factors - such as different
regimes, times of day or climate conditions - are taken into account.
Wavestrapping can help make inferences from a single run."
One example might be a study of atmospheric turbulence in which an additional
flight to gather data under similar conditions could be impossible. "Atmospheric
scientists are very excited about wavelets because not only are they local
and able to efficiently describe organized structures in turbulence, but
they are also able to assess the self-similarity and scaling indices of
turbulence," Vidakovic said.
In such instances, converting the data into a wavelet domain before re-sampling
can produce information for which error bounds can be reliably assessed,
Vidakovic said. Though the bootstrapping technique is controversial, he
believes it offers important opportunities when used with appropriate
data sets.
"This is very effective when data in the time domain are not good
for bootstrapping because of dependency," he said. "It can solve
one difficult problem, and in that respect it is new and exciting."
Wavestrapping was proposed and developed by Don
Percival and other researchers at the University of Washington's Applied
Physics Lab. Vidakovic's research, sponsored by the National
Science Foundation, builds on that work in assessing the technique's
validity and where its use is appropriate.
Some examples of wavestrapping applications include:
Wavelets offer advantages over traditional statistical analysis techniques,
including:
Although the beginnings of wavelets can be traced back almost a century,
their wide use began only about 15 years ago when new wavelet bases were
discovered and their implementation was connected with fast-filtering
computational procedures.
"The interest in wavelets is their speed and locality," said
Vidakovic. "Locality is the most important, because many natural
phenomena are non-stationary and very local. Wavelets are able to economically
describe phenomena that are inhomogeneous. For some phenomena, it would
be impossible to make sense of the data without wavelets."
Wavelets also help researchers with a major problem of the computer age
- large volumes of data mixed with noise. "Their dimension reduction
and ability to deal with huge data sets are also strengths of wavelets,"
he added. "Very nasty data can be de-noised almost in real-time by
selecting a few of the important wavelet coefficients that can retain
the main trend in the signal."
Many different wavelets exist, and selecting the right ones is a vital part of developing the new technique, Vidakovic said. "Wavelets are not a miracle tool for everything," he warned. "But if the data are amenable to wavelet analysis, then they can be very helpful."
RESEARCH NEWS & PUBLICATIONS OFFICE
Georgia Institute of Technology
75 Fifth Street, N.W., Suite 100
Atlanta, Georgia 30308 USA
MEDIA RELATIONS CONTACTS:
John Toon (404-894-6986);
E-mail: (john.toon@edi.gatech.edu);
Fax: (404-894-4545) or Jane Sanders (404-894-2214); E-mail: (jane.sanders@edi.gatech.edu).
TECHNICAL CONTACT: Brani Vidakovic (404-894-3935); E-mail: (brani@isye.gatech.edu)
WRITER: John Toon