Nonlinear Granger Causality using Kernel Ridge Regression

09/10/2023
by   Wojciech "Victor" Fulmyk, et al.
0

I introduce a novel algorithm and accompanying Python library, named mlcausality, designed for the identification of nonlinear Granger causal relationships. This novel algorithm uses a flexible plug-in architecture that enables researchers to employ any nonlinear regressor as the base prediction model. Subsequently, I conduct a comprehensive performance analysis of mlcausality when the prediction regressor is the kernel ridge regressor with the radial basis function kernel. The results demonstrate that mlcausality employing kernel ridge regression achieves competitive AUC scores across a diverse set of simulated data. Furthermore, mlcausality with kernel ridge regression yields more finely calibrated p-values in comparison to rival algorithms. This enhancement enables mlcausality to attain superior accuracy scores when using intuitive p-value-based thresholding criteria. Finally, mlcausality with the kernel ridge regression exhibits significantly reduced computation times compared to existing nonlinear Granger causality algorithms. In fact, in numerous instances, this innovative approach achieves superior solutions within computational timeframes that are an order of magnitude shorter than those required by competing algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/12/2023

On the Optimality of Misspecified Kernel Ridge Regression

In the misspecified kernel ridge regression problem, researchers usually...
research
05/22/2013

Divide and Conquer Kernel Ridge Regression: A Distributed Algorithm with Minimax Optimal Rates

We establish optimal convergence rates for a decomposition-based scalabl...
research
05/04/2020

Reduced Rank Multivariate Kernel Ridge Regression

In the multivariate regression, also referred to as multi-task learning ...
research
04/19/2019

Risk Convergence of Centered Kernel Ridge Regression with Large Dimensional Data

This paper carries out a large dimensional analysis of a variation of ke...
research
03/27/2020

Distributed Kernel Ridge Regression with Communications

This paper focuses on generalization performance analysis for distribute...
research
10/11/2017

Efficient Data-Driven Geologic Feature Detection from Pre-stack Seismic Measurements using Randomized Machine-Learning Algorithm

Conventional seismic techniques for detecting the subsurface geologic fe...
research
09/08/2023

Adaptive Distributed Kernel Ridge Regression: A Feasible Distributed Learning Scheme for Data Silos

Data silos, mainly caused by privacy and interoperability, significantly...

Please sign up or login with your details

Forgot password? Click here to reset