2004 | OriginalPaper | Buchkapitel
Summarizing Time Series: Learning Patterns in ‘Volatile’ Series
verfasst von : Saif Ahmad, Tugba Taskaya-Temizel, Khurshid Ahmad
Erschienen in: Intelligent Data Engineering and Automated Learning – IDEAL 2004
Verlag: Springer Berlin Heidelberg
Enthalten in: Professional Book Archive
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Most financial time series processes are nonstationary and their frequency characteristics are time-dependant. In this paper we present a time series summarization and prediction framework to analyse nonstationary, volatile and high-frequency time series data. Multiscale wavelet analysis is used to separate out the trend, cyclical fluctuations and autocorrelational effects. The framework can generate verbal signals to describe each effect. The summary output is used to reason about the future behaviour of the time series and to give a prediction. Experiments on the intra-day European currency spot exchange rates are described. The results are compared with a neural network prediction framework.