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| Handbook of Statistics Volume 4 : Nonparametric Methods |
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Handbook of Statistics Volume 4 : Nonparametric MethodsElsevier Science & Technology Books | 1985-05-01 | ISBN: 0444868712 | 968 Pages | PDF-RAR | DF | 39.85 MB Book Description: Prominent statisticians discuss in this volume, the general methodological aspects of nonparametric methods, and applications, in a logically integrated and systematic form. The topics covered include biological assays, cancer research, categorical data analysis, clinical trials, empirical distributions, estimation procedures, life testing and reliability, linear models, meteorological applications, order statistics, robustness, sequential methods, statistical tables, and time series. |
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| Handbook of Statistics Volume 3 : Time Series in the Frequency Domain |
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Handbook of Statistics Volume 3 : Time Series in the Frequency DomainElsevier Science Pub Co | 1984-02-01 | ISBN: 0444867260 | 486 Pages | PDF-RAR | DF | 18.50MB Book Description: This volume of the Handbook is concerned particularly with the frequency side, or spectrum, approach to time series analysis. This approach involves essential use of sinusoids and bands of (angular) frequency, with Fourier transforms playing an important role. A principal activity is thinking of systems, their inputs, outputs, and behavior in sinusoidal terms. In many cases, the frequency side approach turns out to be simpler with respect to computational, mathematical, and statistical aspects. In the frequency approach, an assumption of stationarity is commonly made. However, the essential roles played by the techniques of complex demodulation and seasonal adjustment show that stationarity is far from being a necessary condition. Assumptions of Gaussianity and linearity are also commonly made and yet, as a variety of the papers illustrate, these assumptions are not necessary. |
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