On the closed-loop Volterra method for analyzing time series

06/12/2023
by   Maryam Movahedifar, et al.
0

The main focus of this paper is to approximate time series data based on the closed-loop Volterra series representation. Volterra series expansions are a valuable tool for representing, analyzing, and synthesizing nonlinear dynamical systems. However, a major limitation of this approach is that as the order of the expansion increases, the number of terms that need to be estimated grows exponentially, posing a considerable challenge. This paper considers a practical solution for estimating the closed-loop Volterra series in stationary nonlinear time series using the concepts of Reproducing Kernel Hilbert Spaces (RKHS) and polynomial kernels. We illustrate the applicability of the suggested Volterra representation by means of simulations and real data analysis. Furthermore, we apply the Kolmogorov-Smirnov Predictive Accuracy (KSPA) test, to determine whether there exists a statistically significant difference between the distribution of estimated errors for concurring time series models, and secondly to determine whether the estimated time series with the lower error based on some loss function also has exhibits a stochastically smaller error than estimated time series from a competing method. The obtained results indicate that the closed-loop Volterra method can outperform the ARFIMA, ETS, and Ridge regression methods in terms of both smaller error and increased interpretability.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/09/2021

Meta-Learning for Koopman Spectral Analysis with Short Time-series

Koopman spectral analysis has attracted attention for nonlinear dynamica...
research
10/20/2020

Volterra bootstrap: Resampling higher-order statistics for strictly stationary univariate time series

We are concerned with nonparametric hypothesis testing of time series fu...
research
10/31/2016

Analysis of Nonstationary Time Series Using Locally Coupled Gaussian Processes

The analysis of nonstationary time series is of great importance in many...
research
08/03/2013

Nonlinear Time Series Modeling: A Unified Perspective, Algorithm, and Application

A new comprehensive approach to nonlinear time series analysis and model...
research
08/14/2017

Computational Topology Techniques for Characterizing Time-Series Data

Topological data analysis (TDA), while abstract, allows a characterizati...
research
11/15/2018

The autoregression bootstrap for kernel estimates of smooth nonlinear functional time series

Functional times series have become an integral part of both functional ...
research
07/01/2020

Spectral methods for small sample time series: A complete periodogram approach

The periodogram is a widely used tool to analyze second order stationary...

Please sign up or login with your details

Forgot password? Click here to reset