Statistical Fourier Analysis: Clarifications and Interpretations
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Stephen D.S.G. Pollock
This paper expounds some of the results of Fourier theory that are essential to the statistical analysis of time series. It employs the algebra of circulant matrices to expose the structure of the discrete Fourier transform and to elucidate the filtering operations that may be applied to finite data sequences.An ideal filter with a gain of unity throughout the pass band and a gain of zero throughout the stop band is commonly regarded as incapable of being realised in finite samples. It is shown here that, to the contrary, such a filter can be realised both in the time domain and in the frequency domain.The algebra of circulant matrices is also helpful in revealing the nature of statistical processes that are band limited in the frequency domain. In order to apply the conventional techniques of autoregressive moving-average modelling, the data generated by such processes must be subjected to anti-aliasing filtering and sub sampling. These techniques are also described.It is argued that band-limited processes are more prevalent in statistical and econometric time series than is commonly recognised.
©2011 Walter de Gruyter GmbH & Co. KG, Berlin/Boston
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Articles in the same Issue
- Article
- Statistical Fourier Analysis: Clarifications and Interpretations
- Asymptotics of the QMLE for Non-Linear ARCH Models
- Price Level Convergence, Purchasing Power Parity and Multiple Structural Breaks in Panel Data Analysis: An Application to U.S. Cities
- Selecting Instrumental Variables in a Data Rich Environment
- The KPSS Test Using Fixed-b Critical Values: Size and Power in Highly Autocorrelated Time Series