Nonparametric forecasting of multivariate probability density functions

03/19/2018
by   Dominque Guégan, et al.
0

The study of dependence between random variables is the core of theoretical and applied statistics. Static and dynamic copula models are useful for describing the dependence structure, which is fully encrypted in the copula probability density function. However, these models are not always able to describe the temporal change of the dependence patterns, which is a key characteristic of financial data. We propose a novel nonparametric framework for modelling a time series of copula probability density functions, which allows to forecast the entire function without the need of post-processing procedures to grant positiveness and unit integral. We exploit a suitable isometry that allows to transfer the analysis in a subset of the space of square integrable functions, where we build on nonparametric functional data analysis techniques to perform the analysis. The framework does not assume the densities to belong to any parametric family and it can be successfully applied also to general multivariate probability density functions with bounded or unbounded support. Finally, a noteworthy field of application pertains the study of time varying networks represented through vine copula models. We apply the proposed methodology for estimating and forecasting the time varying dependence structure between the S&P500 and NASDAQ indices.

READ FULL TEXT
research
11/05/2017

Multivariate Bayesian Predictive Synthesis in Macroeconomic Forecasting

We develop the methodology and a detailed case study in use of a class o...
research
07/17/2020

Estimation of time-varying kernel densities and chronology of the impact of COVID-19 on financial markets

The time-varying kernel density estimation relies on two free parameters...
research
05/12/2023

Nonparametric data segmentation in multivariate time series via joint characteristic functions

Modern time series data often exhibit complex dependence and structural ...
research
07/31/2019

Kernel Density Estimation for Undirected Dyadic Data

We study nonparametric estimation of density functions for undirected dy...
research
10/14/2022

Bayesian estimation of the autocovariance of a model error in time series

Autocovariance of the error term in a time series model plays a key role...
research
09/14/2022

On Language Clustering: A Non-parametric Statistical Approach

Any approach aimed at pasteurizing and quantifying a particular phenomen...
research
12/23/2020

Bivariate Densities in Bayes Spaces: Orthogonal Decomposition and Spline Representation

A new orthogonal decomposition for bivariate probability densities embed...

Please sign up or login with your details

Forgot password? Click here to reset