Gaussian Process Conditional Copulas with Applications to Financial Time Series

The estimation of dependencies between multiple variables is a central problem in the analysis of financial time series. A common approach is to express these dependencies in terms of a copula function. Typically the copula function is assumed to be constant but this may be inaccurate when there are covariates that could have a large influence on the dependence structure of the data. To account for this, a Bayesian framework for the estimation of conditional copulas is proposed. In this framework the parameters of a copula are non-linearly related to some arbitrary conditioning variables. We evaluate the ability of our method to predict time-varying dependencies on several equities and currencies and observe consistent performance gains compared to static copula models and other time-varying copula methods.

READ FULL TEXT
research
02/11/2020

Gaussian process imputation of multiple financial series

In Financial Signal Processing, multiple time series such as financial i...
research
10/07/2019

High-Dimensional Multivariate Forecasting with Low-Rank Gaussian Copula Processes

Predicting the dependencies between observations from multiple time seri...
research
02/16/2013

Gaussian Process Vine Copulas for Multivariate Dependence

Copulas allow to learn marginal distributions separately from the multiv...
research
01/20/2018

Bayesian Distributed Lag Models

Distributed lag models (DLMs) express the cumulative and delayed depende...
research
10/28/2019

Correlated functional models with derivative information for modeling MFS data on rock art paintings

Microfading Spectrometry (MFS) is a method for assessing light sensitivi...
research
02/23/2022

Neural Generalised AutoRegressive Conditional Heteroskedasticity

We propose Neural GARCH, a class of methods to model conditional heteros...
research
04/19/2019

An Alternative Data-Driven Prediction Approach Based on Real Option Theories

This paper presents a new prediction model for time series data by integ...

Please sign up or login with your details

Forgot password? Click here to reset