This paper utilizes advanced methods from Fourier analysis in order to describe periodicities in financial ultrahigh frequency foreign exchange data. The Lomb-Scargle Fourier transform is used to take into account the irregularity in spacing in the time domain. It provides a natural framework for the power spectra of different inhomogeneous time-series processes to be easily and quickly estimated. Furthermore, an event-based approach in intrinsic time based on a power-law relationship is employed using different event thresholds to filter the foreign exchange tick-data. The calculated spectral density demonstrates that the price process in intrinsic time contains different periodic components for directional changes, especially in the medium-long term, implying the existence of stylized facts of ultrahigh frequency data in the frequency domain. Copyright (C) 2013 John Wiley & Sons, Ltd.
机构:
Department of Management and Finance, School of Business and Economics, California State University, HaywardDepartment of Management and Finance, School of Business and Economics, California State University, Hayward