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JOURNALS // Computer Research and Modeling // Archive

Computer Research and Modeling, 2017 Volume 9, Issue 4, Pages 657–669 (Mi crm89)

This article is cited in 1 paper

MODELS OF ECONOMIC AND SOCIAL SYSTEMS

On some properties of short-wave statistics of FOREX time series

E. A. Beloborodovaa, M. V. Tammb

a National Research University “Higher School of Economics”, Tikhonov Moscow Institute of Electronics and Mathematics, Tallinskaya st. 34, Moscow, 123458, Russia
b Lomonosov Moscow State University, Physics department, Leninskie gory 1-2, Moscow, GSP-1, 119991, Russia

Abstract: Financial mathematics is one of the most natural applications for the statistical analysis of time series. Financial time series reflect simultaneous activity of a large number of different economic agents. Consequently, one expects that methods of statistical physics and the theory of random processes can be applied to them. In this paper, we provide a statistical analysis of time series of the FOREX currency market. Of particular interest is the comparison of the time series behaviour depending on the way time is measured: physical time versus trading time measured in the number of elementary price changes (ticks). The experimentally observed statistics of the time series under consideration (euro – dollar for the first half of 2007 and for 2009 and British pound – dollar for 2007) radically differs depending on the choice of the method of time measurement. When measuring time in ticks, the distribution of price increments can be well described by the normal distribution already on a scale of the order of ten ticks. At the same time, when price increments are measured in real physical time, the distribution of increments continues to differ radically from the normal up to scales of the order of minutes and even hours. To explain this phenomenon, we investigate the statistical properties of elementary increments in price and time. In particular, we show that the distribution of time between ticks for all three time series has a long (1–2 orders of magnitude) power-law tails with exponential cutoff at large times. We obtained approximate expressions for the distributions of waiting times for all three cases. Other statistical characteristics of the time series (the distribution of elementary price changes, pair correlation functions for price increments and for waiting times) demonstrate fairly simple behaviour. Thus, it is the anomalously wide distribution of the waiting times that plays the most important role in the deviation of the distribution of increments from the normal. As a result, we discuss the possibility of applying a continuous time random walk (CTRW) model to describe the FOREX time series.

Keywords: FOREX time series, waiting time distribution, heavy-tailed probability distribution, correlation analyses of time series, continuous time random walk.

UDC: 519.246.8

Received: 02.05.2017
Revised: 31.07.2017
Accepted: 04.08.2017

DOI: 10.20537/2076-7633-2017-9-4-657-669



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