Title :
Detecting non-linear dynamics in financial time series
Author :
Schittenkopf, Christian ; Deco, Gustavo
Author_Institution :
Corp. Res. & Dev., Siemens AG, Munich, Germany
Abstract :
Characterizes a given dynamical system in the sense that the order of the Markov process which approximates its statistical dependencies appropriately, is determined. Our method measures the information flow of the dynamics indirectly via higher-order cumulants, considering linear and nonlinear correlations. The main point of the iterative procedure is that the raw data are tested against a hierarchy of nonlinear Markov processes, which correspond to the hypotheses in the surrogate mechanism. We extend the method of surrogate data in two ways to study the information flow in dynamical systems. First, we test the observable dynamics against a hierarchy of null hypotheses corresponding to nonlinear Markov processes of increasing order, the probability density function of which is estimated by neural networks. Second, the discriminating statistic is not a single number but a function of the look-ahead r. More precisely, we calculate a measure based on higher-order cumulants which quantifies the independence between the past values of the time series and the point r steps ahead. This procedure is iterative in the sense that whenever a null hypothesis is rejected new data sets can be generated corresponding to better approximations of the original process in terms of memory. We define cumulant-based measures of statistical independence which characterize the loss of information with the look-ahead. The iterative procedure for testing against nonlinear Markov processes is explained and our experiments with a DAX-time series are described
Keywords :
Markov processes; correlation methods; finance; iterative methods; nonlinear dynamical systems; time series; DAX-time series; Markov process order; discriminating statistic; financial time series; higher-order cumulants; information flow; iterative procedure; linear correlations; look-ahead; neural networks; nonlinear Markov process hierarchy; nonlinear correlations; nonlinear dynamics; null hypotheses; observable dynamics; probability density function estimation; statistical dependencies; surrogate data; Fluid flow measurement; Information analysis; Information theory; Loss measurement; Markov processes; Nonlinear dynamical systems; Phase estimation; Research and development; System testing; Time measurement;
Conference_Titel :
Computational Intelligence for Financial Engineering (CIFEr), 1997., Proceedings of the IEEE/IAFE 1997
Conference_Location :
New York City, NY
Print_ISBN :
0-7803-4133-3
DOI :
10.1109/CIFER.1997.618950