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arxiv: 0707.0322 · v2 · submitted 2007-07-02 · 📊 stat.ME · math.DS· math.ST· stat.TH

Consistency of support vector machines for forecasting the evolution of an unknown ergodic dynamical system from observations with unknown noise

classification 📊 stat.ME math.DSmath.STstat.TH
keywords unknowndynamicalergodicmixingresultsystemalphaconsistency
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We consider the problem of forecasting the next (observable) state of an unknown ergodic dynamical system from a noisy observation of the present state. Our main result shows, for example, that support vector machines (SVMs) using Gaussian RBF kernels can learn the best forecaster from a sequence of noisy observations if (a) the unknown observational noise process is bounded and has a summable $\alpha$-mixing rate and (b) the unknown ergodic dynamical system is defined by a Lipschitz continuous function on some compact subset of $\mathbb{R}^d$ and has a summable decay of correlations for Lipschitz continuous functions. In order to prove this result we first establish a general consistency result for SVMs and all stochastic processes that satisfy a mixing notion that is substantially weaker than $\alpha$-mixing.

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