Wavelet methods for time series analysis by Andrew T. Walden, Donald B. Percival

Wavelet methods for time series analysis



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Wavelet methods for time series analysis Andrew T. Walden, Donald B. Percival ebook
Format: djvu
Publisher: Cambridge University Press
ISBN: 0521685087, 9780521685085
Page: 611






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