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๐Ÿ“

Quantitative Methods of Data Analysis for the Physical Sciences and Engineering

โœ Scribed by Douglas G. Martinson


Publisher
Cambridge University Press
Year
2018
Tongue
English
Leaves
632
Edition
1
Category
Library

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โœฆ Synopsis


This book provides thorough and comprehensive coverage of most of the new and important quantitative methods of data analysis for graduate students and practitioners. In recent years, data analysis methods have exploded alongside advanced computing power, and it is critical to understand such methods to get the most out of data, and to extract signal from noise. The book excels in explaining difficult concepts through simple explanations and detailed explanatory illustrations. Most unique is the focus on confidence limits for power spectra and their proper interpretation, something rare or completely missing in other books. Likewise, there is a thorough discussion of how to assess uncertainty via use of Expectancy, and the easy to apply and understand Bootstrap method. The book is written so that descriptions of each method are as self-contained as possible. Many examples are presented to clarify interpretations, as are user tips in highlighted boxes.

โœฆ Subjects


Data Analysis; Regression; Statistics; Time Series; Probability Theory; Curve Fitting; Interpolation; Fourier Series; Fourier Transform; Fourier Sampling Theory; Spectral Analysis; Cross-Spectral Analysis; Filtering; Deconvolution; Linear Models


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