http://www.cnr.it/ontology/cnr/individuo/prodotto/ID232935
Some Novel Methods in Wavelet Data Analysis: Wavelet Anova, F-test Shrinkage, and ?-Minimax Wavelet Shrinkage (Contributo in volume (capitolo o saggio))
- Type
- Label
- Some Novel Methods in Wavelet Data Analysis: Wavelet Anova, F-test Shrinkage, and ?-Minimax Wavelet Shrinkage (Contributo in volume (capitolo o saggio)) (literal)
- Anno
- 2003-01-01T00:00:00+01:00 (literal)
- Alternative label
C. Angelini, B. Vidakovic (2003)
Some Novel Methods in Wavelet Data Analysis: Wavelet Anova, F-test Shrinkage, and ?-Minimax Wavelet Shrinkage
Allied Publishers, New Delhi (India) in Wavelets and Their Applications', 2003
(literal)
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#autori
- C. Angelini, B. Vidakovic (literal)
- Pagina inizio
- Pagina fine
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#titoloVolume
- Wavelets and Their Applications' (literal)
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#pagineTotali
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#affiliazioni
- IAC-CNR
Georgia Tech University (literal)
- Titolo
- Some Novel Methods in Wavelet Data Analysis: Wavelet Anova, F-test Shrinkage, and ?-Minimax Wavelet Shrinkage (literal)
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#isbn
- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#curatoriVolume
- Applications' Krisna, Radha and Thangavelu Eds (literal)
- Abstract
- It is well known that given a single time series, or image,
it might not be possible to utilize various statistical techniques that for
their implementation require more than a single observation at a fixed
point in time/space. If the researcher has repeated measurements in
form of functions/images, than wavelets can be successfully employed
in a functional-type data analysis. In the first part of this paper we
focus on wavelet based functional ANOVA procedure in which the
noise is separated from the signal for different treatments, and at the
same time the treatment responses are additionally split on the mean
response and the treatment effect, in the spirit of traditional ANOVA.
The key properties utilized are abilities of wavelets to decorrelate and
regularize the inputs. Different strategies for (multivariate) shrinkage
separation of treatment effects and significance testing in the wavelet
domain are discussed.
In the second part of this we propose a method for wavelet-filtering of
noisy images when prior information about their L
2
-energy is available but the researcher has only a single measurement. Assuming the
independence model, according to which the wavelet coefficients are
treated individually, we propose a level dependent shrinkage rule that
turns out to be the ?-minimax rule for a suitable class, say ?, of realistic priors on the wavelet coefficients.
Both methods are illustrated and evaluated on test-functions and images with controlled signal-to-noise ratios (literal)
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