A new representation for binary or categorical-valued time series data in the frequency domain
The classical Fourier analysis of time series data can be used to detect periodic trends that are of sinusoidal shape. However, this analysis can be misleading when time series trends are not sinusoidal. When the time series process of interest is binary or categorical-valued data, it might be more...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-385662021-04-24T05:40:13Z A new representation for binary or categorical-valued time series data in the frequency domain Lee, Hoonja Statistics LD5655.V856 1994.L437 Periodic functions Time-series analysis The classical Fourier analysis of time series data can be used to detect periodic trends that are of sinusoidal shape. However, this analysis can be misleading when time series trends are not sinusoidal. When the time series process of interest is binary or categorical-valued data, it might be more reasonable that the time process be represented by a square or rectangular form of functions instead of sinusoidal functions. The WalshFourier analysis takes this approach using a square form of functions. The Walsh-Fourier analysis is based on the Walsh functions. The Walsh functions are a square form of functions that take on only two values + 1 and -1. But, unlike sinusoidals, the Walsh functions are not periodic. Harmuth (1969) introduced the term sequency to describe generalized frequency to identify functions that are not periodic, such as Walsh functions. The term sequency is interpreted as the nun1ber of zero crossings or sign changes per unit time. While the Walsh-Fourier analysis is reasonable in theory for binary or categorical-valued time series data, the interpretation of sequency is often difficult. In this dissertation, using a sequence of periodic functions, we develop the theory and method that can be applied to binary or categorical-valued data where patterns more naturally follow a rectangular shape. The theory parallels the Fourier theory and leads to a "Fourier-like" data transform that is specifically suited to the identification of rectangular trends. Ph. D. 2014-03-14T21:14:53Z 2014-03-14T21:14:53Z 1994-11-29 2006-06-07 2006-06-07 2006-06-07 Dissertation Text etd-06072006-124217 http://hdl.handle.net/10919/38566 http://scholar.lib.vt.edu/theses/available/etd-06072006-124217/ en OCLC# 32841842 LD5655.V856_1994.L437.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ ix, 106 leaves BTD application/pdf application/pdf Virginia Tech |
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LD5655.V856 1994.L437 Periodic functions Time-series analysis |
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LD5655.V856 1994.L437 Periodic functions Time-series analysis Lee, Hoonja A new representation for binary or categorical-valued time series data in the frequency domain |
description |
The classical Fourier analysis of time series data can be used to detect periodic trends that are of sinusoidal shape. However, this analysis can be misleading when time series trends are not sinusoidal. When the time series process of interest is binary or categorical-valued data, it might be more reasonable that the time process be represented by a square or rectangular form of functions instead of sinusoidal functions. The WalshFourier analysis takes this approach using a square form of functions.
The Walsh-Fourier analysis is based on the Walsh functions. The Walsh functions are a square form of functions that take on only two values + 1 and -1. But, unlike sinusoidals, the Walsh functions are not periodic. Harmuth (1969) introduced the term sequency to describe generalized frequency to identify functions that are not periodic, such as Walsh functions. The term sequency is interpreted as the nun1ber of zero crossings or sign changes per unit time. While the Walsh-Fourier analysis is reasonable in theory for binary or categorical-valued time series data, the interpretation of sequency is often difficult.
In this dissertation, using a sequence of periodic functions, we develop the theory and method that can be applied to binary or categorical-valued data where patterns more naturally follow a rectangular shape. The theory parallels the Fourier theory and leads to a "Fourier-like" data transform that is specifically suited to the identification of rectangular trends. === Ph. D. |
author2 |
Statistics |
author_facet |
Statistics Lee, Hoonja |
author |
Lee, Hoonja |
author_sort |
Lee, Hoonja |
title |
A new representation for binary or categorical-valued time series data in the frequency domain |
title_short |
A new representation for binary or categorical-valued time series data in the frequency domain |
title_full |
A new representation for binary or categorical-valued time series data in the frequency domain |
title_fullStr |
A new representation for binary or categorical-valued time series data in the frequency domain |
title_full_unstemmed |
A new representation for binary or categorical-valued time series data in the frequency domain |
title_sort |
new representation for binary or categorical-valued time series data in the frequency domain |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/38566 http://scholar.lib.vt.edu/theses/available/etd-06072006-124217/ |
work_keys_str_mv |
AT leehoonja anewrepresentationforbinaryorcategoricalvaluedtimeseriesdatainthefrequencydomain AT leehoonja newrepresentationforbinaryorcategoricalvaluedtimeseriesdatainthefrequencydomain |
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1719399043816226816 |