Time-series forecasting using manifold learning, radial basis function interpolation, and geometric harmonics.

Chaos

Dipartimento di Matematica e Applicazioni "Renato Caccioppoli" and Scuola Superiore Meridionale, Università degli Studi di Napoli Federico II, Naples 80126, Italy.

Published: August 2022

AI Article Synopsis

  • This study presents a three-tier numerical framework that uses nonlinear manifold learning to improve the forecasting of high-dimensional time series by addressing the challenges of high dimensionality during model training.
  • The process includes three steps: embedding time series into a lower-dimensional space, constructing surrogate models for forecasting within that space, and lifting the forecasts back to the original high-dimensional space.
  • The approach is tested on various problems, including synthetic time series related to EEG signals, solutions of linear and nonlinear PDEs, and a real-world dataset of foreign exchange rates from 2001 to 2020.

Article Abstract

We address a three-tier numerical framework based on nonlinear manifold learning for the forecasting of high-dimensional time series, relaxing the "curse of dimensionality" related to the training phase of surrogate/machine learning models. At the first step, we embed the high-dimensional time series into a reduced low-dimensional space using nonlinear manifold learning (local linear embedding and parsimonious diffusion maps). Then, we construct reduced-order surrogate models on the manifold (here, for our illustrations, we used multivariate autoregressive and Gaussian process regression models) to forecast the embedded dynamics. Finally, we solve the pre-image problem, thus lifting the embedded time series back to the original high-dimensional space using radial basis function interpolation and geometric harmonics. The proposed numerical data-driven scheme can also be applied as a reduced-order model procedure for the numerical solution/propagation of the (transient) dynamics of partial differential equations (PDEs). We assess the performance of the proposed scheme via three different families of problems: (a) the forecasting of synthetic time series generated by three simplistic linear and weakly nonlinear stochastic models resembling electroencephalography signals, (b) the prediction/propagation of the solution profiles of a linear parabolic PDE and the Brusselator model (a set of two nonlinear parabolic PDEs), and (c) the forecasting of a real-world data set containing daily time series of ten key foreign exchange rates spanning the time period 3 September 2001-29 October 2020.

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Source
http://dx.doi.org/10.1063/5.0094887DOI Listing

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