Wavelet as a Viable Alternative for Time Series Forecasting

Analysis of financial data is always challenging due to the non-linear and non-stationary characteristics of the time series which is further complicated by volatility clustering effect and sudden changes such as jump, steep slopes and valleys. Classical regression based analysis techniques often e...

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Main Authors: Heng Yew Lee, Woan Lin Beh, Kong Hoong Lem
Format: Article
Language:English
Published: Austrian Statistical Society 2020-02-01
Series:Austrian Journal of Statistics
Online Access:http://www.ajs.or.at/index.php/ajs/article/view/1030
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spelling doaj-62053bee2b604db898e52bf23c95a2e22021-04-22T12:31:57ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2020-02-0149310.17713/ajs.v49i3.1030Wavelet as a Viable Alternative for Time Series ForecastingHeng Yew Lee0Woan Lin Beh1Kong Hoong Lem2Universiti Tunku Abdul RahmanUniversiti Tunku Abdul RahmanUniversiti Tunku Abdul Rahman Analysis of financial data is always challenging due to the non-linear and non-stationary characteristics of the time series which is further complicated by volatility clustering effect and sudden changes such as jump, steep slopes and valleys. Classical regression based analysis techniques often entail rigorous mathematical treatments albeit with little success in exploiting the differing frequency characteristics to uncover hidden but valuable trending information. Wavelet, on the other hand provides an efficient way to represent time series with such complex dynamics by decomposing it into time-frequency space and at the same time preserve both temporal and spectral information. This property enables analysts to identify the dominant modes (spectral information) of a time series and observe how those modes vary over time (temporal information). Most importantly, wavelet transform is computationally efficient, only a small number of wavelet coefficients are needed to describe complicated signals. This paper seeks to establish cases for the use of wavelets as viable tools in time series forecasting. Two time series, Kijang Emas Daily Index and Bit Coin Daily Price with differing characteristics are used as subjects of study. Out-of-sample dynamic forecasting of 20 points is made using best-fit ARIMA and prior-point imitation follow by wavelet de-noising methods (imitate-wavelet). Comparisons made with MAPE measurements of ARIMA and imitate-wavelet methods indicated comparable forecasting performance between the simpler imitate-wavelet techniques and ARIMA model. http://www.ajs.or.at/index.php/ajs/article/view/1030
collection DOAJ
language English
format Article
sources DOAJ
author Heng Yew Lee
Woan Lin Beh
Kong Hoong Lem
spellingShingle Heng Yew Lee
Woan Lin Beh
Kong Hoong Lem
Wavelet as a Viable Alternative for Time Series Forecasting
Austrian Journal of Statistics
author_facet Heng Yew Lee
Woan Lin Beh
Kong Hoong Lem
author_sort Heng Yew Lee
title Wavelet as a Viable Alternative for Time Series Forecasting
title_short Wavelet as a Viable Alternative for Time Series Forecasting
title_full Wavelet as a Viable Alternative for Time Series Forecasting
title_fullStr Wavelet as a Viable Alternative for Time Series Forecasting
title_full_unstemmed Wavelet as a Viable Alternative for Time Series Forecasting
title_sort wavelet as a viable alternative for time series forecasting
publisher Austrian Statistical Society
series Austrian Journal of Statistics
issn 1026-597X
publishDate 2020-02-01
description Analysis of financial data is always challenging due to the non-linear and non-stationary characteristics of the time series which is further complicated by volatility clustering effect and sudden changes such as jump, steep slopes and valleys. Classical regression based analysis techniques often entail rigorous mathematical treatments albeit with little success in exploiting the differing frequency characteristics to uncover hidden but valuable trending information. Wavelet, on the other hand provides an efficient way to represent time series with such complex dynamics by decomposing it into time-frequency space and at the same time preserve both temporal and spectral information. This property enables analysts to identify the dominant modes (spectral information) of a time series and observe how those modes vary over time (temporal information). Most importantly, wavelet transform is computationally efficient, only a small number of wavelet coefficients are needed to describe complicated signals. This paper seeks to establish cases for the use of wavelets as viable tools in time series forecasting. Two time series, Kijang Emas Daily Index and Bit Coin Daily Price with differing characteristics are used as subjects of study. Out-of-sample dynamic forecasting of 20 points is made using best-fit ARIMA and prior-point imitation follow by wavelet de-noising methods (imitate-wavelet). Comparisons made with MAPE measurements of ARIMA and imitate-wavelet methods indicated comparable forecasting performance between the simpler imitate-wavelet techniques and ARIMA model.
url http://www.ajs.or.at/index.php/ajs/article/view/1030
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