A consistent deterministic regression tree for non-parametric prediction of time series
2014-05-07Unverified0· sign in to hype
Pierre Gaillard, Paul Baudin
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We study online prediction of bounded stationary ergodic processes. To do so, we consider the setting of prediction of individual sequences and build a deterministic regression tree that performs asymptotically as well as the best L-Lipschitz constant predictors. Then, we show why the obtained regret bound entails the asymptotical optimality with respect to the class of bounded stationary ergodic processes.