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Properties of a simple bilinear stochastic model: Estimation and predictability
Authors:D Sornette  VF Pisarenko
Institution:a ETH Zurich, Department of Management, Technology and Economics, CH-8032 Zurich, Switzerland
b International Institute of Earthquake Prediction Theory and Mathematical Geophysics, Russian Ac. Sci., Warshavskoye sh., 79, kor. 2, Moscow 113556, Russia
Abstract:We analyze the properties of arguably the simplest bilinear stochastic multiplicative process, proposed as a model of financial returns and of other complex systems combining both nonlinearity and multiplicative noise. By construction, it has no linear predictability (zero two-point correlation) but a certain nonlinear predictability (non-zero three-point correlation). It can thus be considered as a paradigm for testing the existence of a possible nonlinear predictability in a given time series. We present a rather exhaustive study of the process, including its ability to produce fat-tailed distributions from Gaussian innovations, the unstable characteristics of the inversion of the key nonlinear parameters and of the two initial conditions necessary for the implementation of a prediction scheme and an analysis of the associated super-exponential sensitivity of the inversion of the innovations in the presence of a large impulse. Our study emphasizes the conditions under which a degree of predictability can be achieved and describe a number of different attempts, which overall illuminates the properties of the process. In conclusion, notwithstanding its remarkable simplicity, the bilinear stochastic process exhibits remarkably rich and complex behavior, which makes it a serious candidate for the modeling of financial time series among others.
Keywords:Bilinear  Multiplicative noise  Estimation  Prediction  Nonlinear dependence  Fat-tail distributions  Sensitive dependence on initial conditions  Volterra discrete series
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