Long-Term Dependence Characteristics of European Stock Indices

Kent State University Department of Finance Working Paper

40 Pages Posted: 24 Apr 2003

See all articles by Cornelis A. Los

Cornelis A. Los

University of California at Irvine - The Paul Merage School of Business; EMEPS Associates

Joanna M. Lipka

Kent State University - Department of Finance

Date Written: March 2003

Abstract

In this paper we show the degrees of persistence of the time series if eight European stock market indices are measured, after their lack of ergodicity and stationarity has been established. The proper identification of the nature of the persistence of financial time series forms a crucial step in deciding whether econometric modeling of such series might provide meaningful results. Testing for ergodicity and stationarity must be the first step in deciding whether the assumptions of numerous time series models are met. Our results indicate that ergodicity and stationarity are very difficult to establish in daily observations of these market indexes and thus various time-series models cannot be successfully identified. However, the measured degrees of persistence point to the existence of certain dependencies, most likely of a nonlinear nature, which, perhaps can be used in the identification of proper empirical econometric models of such dynamic time paths of the European stock market indexes. The paper computes and analyzes the long-term dependence of the equity index data as measured by global Hurst exponents, which are computed from wavelet multi-resolution analysis. For example, the FTSE turns out to be an ultra-efficient market with abnormally fast mean-reversion, faster than theoretically postulated by a Geometric Brownian Motion. Various methodologies appear to produce non-unique empirical measurement results and it is very difficult to obtain definite conclusions regarding the presence or absence of long term dependence phenomena like persistence or anti-persistence based on the global or homogeneous Hurst exponent. More powerful methods, such as the computation of the multifractal spectra of financial time series may be required. However, the visualization of the wavelet resonance coefficients and their power spectrograms in the form of localized scalograms and average scalegrams, forcefully assist with the detection and measurement of several nonlinear types of market price diffusion.

JEL Classification: C14, C22, C52, G14, G15

Suggested Citation

Los, Cornelis A. and Lipka, Joanna M., Long-Term Dependence Characteristics of European Stock Indices (March 2003). Kent State University Department of Finance Working Paper, Available at SSRN: https://ssrn.com/abstract=388020 or http://dx.doi.org/10.2139/ssrn.388020

Cornelis A. Los (Contact Author)

University of California at Irvine - The Paul Merage School of Business ( email )

SB1
Irvine, CA 92697-3125
United States

HOME PAGE: http://merage.uci.edu/research-faculty/faculty-directory/Cornelis-Los.html

EMEPS Associates ( email )

Escondido, CA 92029
United States
760-294-0255 (Phone)
858-635-4783 (Fax)

Joanna M. Lipka

Kent State University - Department of Finance ( email )

Kent, OH 20814
United States
330-672-1208 (Phone)

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