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JOURNALS // Computer Research and Modeling // Archive

Computer Research and Modeling, 2017 Volume 9, Issue 4, Pages 639–655 (Mi crm88)

This article is cited in 2 papers

MODELS OF ECONOMIC AND SOCIAL SYSTEMS

Synchronous components of financial time series

A. A. Lyubushina, Yu. A. Farkovb

a Institute of Physics of the Earth of the Russian Academy of Sciences, Bolshaya Gruzinskaya st. 10-1, Moscow, 123242, Russia
b The Russian Presidential Academy of National Economy and Public Administration, Vernadskogo pr. 82, Moscow, 119571, Russia

Abstract: The article proposes a method of joint analysis of multidimensional financial time series based on the evaluation of the set of properties of stock quotes in a sliding time window and the subsequent averaging of property values for all analyzed companies. The main purpose of the analysis is to construct measures of joint behaviour of time series reacting to the occurrence of a synchronous or coherent component. The coherence of the behaviour of the characteristics of a complex system is an important feature that makes it possible to evaluate the approach of the system to sharp changes in its state. The basis for the search for precursors of sharp changes is the general idea of increasing the correlation of random fluctuations of the system parameters as it approaches the critical state. The increments in time series of stock values have a pronounced chaotic character and have a large amplitude of individual noises, against which a weak common signal can be detected only on the basis of its correlation in different scalar components of a multidimensional time series. It is known that classical methods of analysis based on the use of correlations between neighboring samples are ineffective in the processing of financial time series, since from the point of view of the correlation theory of random processes, increments in the value of shares formally have all the attributes of white noise (in particular, the “flat spectrum” and “delta-shaped” autocorrelation function). In connection with this, it is proposed to go from analyzing the initial signals to examining the sequences of their nonlinear properties calculated in time fragments of small length. As such properties, the entropy of the wavelet coefficients is used in the decomposition into the Daubechies basis, the multifractal parameters and the autoregressive measure of signal nonstationarity. Measures of synchronous behaviour of time series properties in a sliding time window are constructed using the principal component method, moduli values of all pairwise correlation coefficients, and a multiple spectral coherence measure that is a generalization of the quadratic coherence spectrum between two signals. The shares of 16 large Russian companies from the beginning of 2010 to the end of 2016 were studied. Using the proposed method, two synchronization time intervals of the Russian stock market were identified: from mid-December 2013 to mid-March 2014 and from mid-October 2014 to mid-January 2016.

Keywords: financial time series, wavelets, entropy, multi-fractals, predictability, synchronization.

UDC: 519.254

Received: 07.02.2017
Revised: 08.06.2017
Accepted: 23.06.2017

DOI: 10.20537/2076-7633-2017-9-4-639-655



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