Support Vector Regression, Smooth Splines, and Time Series Prediction

10/31/2015
by   Raymundo Navarrete, et al.
0

Prediction of dynamical time series with additive noise using support vector machines or kernel based regression has been proved to be consistent for certain classes of discrete dynamical systems. Consistency implies that these methods are effective at computing the expected value of a point at a future time given the present coordinates. However, the present coordinates themselves are noisy, and therefore, these methods are not necessarily effective at removing noise. In this article, we consider denoising and prediction as separate problems for flows, as opposed to discrete time dynamical systems, and show that the use of smooth splines is more effective at removing noise. Combination of smooth splines and kernel based regression yields predictors that are more accurate on benchmarks typically by a factor of 2 or more. We prove that kernel based regression in combination with smooth splines converges to the exact predictor for time series extracted from any compact invariant set of any sufficiently smooth flow. As a consequence of convergence, one can find examples where the combination of kernel based regression with smooth splines is superior by even a factor of 100. The predictors that we compute operate on delay coordinate data and not the full state vector, which is typically not observable.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/29/2013

On the Consistency of the Bootstrap Approach for Support Vector Machines and Related Kernel Based Methods

It is shown that bootstrap approximations of support vector machines (SV...
research
11/19/2018

Reconstruction and prediction of random dynamical systems under borrowing of strength

We propose a Bayesian nonparametric model based on Markov Chain Monte Ca...
research
07/08/2020

Kernel-based Prediction of Non-Markovian Time Series

A nonparametric method to predict non-Markovian time series of partially...
research
11/25/2021

Learning dynamical systems from data: A simple cross-validation perspective, part III: Irregularly-Sampled Time Series

A simple and interpretable way to learn a dynamical system from data is ...
research
12/15/2005

Evolino for recurrent support vector machines

Traditional Support Vector Machines (SVMs) need pre-wired finite time wi...
research
01/29/2018

Smooth, Efficient, and Interruptible Zooming and Panning

This paper introduces a novel technique for smooth and efficient zooming...
research
01/11/2014

Multi-Step-Ahead Time Series Prediction using Multiple-Output Support Vector Regression

Accurate time series prediction over long future horizons is challenging...

Please sign up or login with your details

Forgot password? Click here to reset