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Statistical Spectral Analysis: A Non-Probabilistic Theory

Large book cover: Statistical Spectral Analysis: A Non-Probabilistic Theory

Statistical Spectral Analysis: A Non-Probabilistic Theory
by

Publisher: Prentice Hall
ISBN/ASIN: 0138445729
ISBN-13: 9780138445720
Number of pages: 591

Description:
This book is intended to serve as both a graduate-level textbook and a technical reference. The focus is on fundamental concepts, analytical techniques, and basic empirical methods. The only prerequisite is an introductory course on Fourier analysis.

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