scispace - formally typeset
Open AccessPosted Content

Applications of Distance Correlation to Time Series

Reads0
Chats0
TLDR
In this paper, Szekely and Rizzo apply the ADCF to the residuals of an autoregressive process as a test of goodness of fit, and establish the relevant asymptotic theory for the sample auto- and cross-distance correlation functions.
Abstract
The use of empirical characteristic functions for inference problems, including estimation in some special parametric settings and testing for goodness of fit, has a long history dating back to the 70s (see for example, Feuerverger and Mureika (1977), Csorgo (1981a,1981b,1981c), Feuerverger (1993)). More recently, there has been renewed interest in using empirical characteristic functions in other inference settings. The distance covariance and correlation, developed by Szekely and Rizzo (2009) for measuring dependence and testing independence between two random vectors, are perhaps the best known illustrations of this. We apply these ideas to stationary univariate and multivariate time series to measure lagged auto- and cross-dependence in a time series. Assuming strong mixing, we establish the relevant asymptotic theory for the sample auto- and cross-distance correlation functions. We also apply the auto-distance correlation function (ADCF) to the residuals of an autoregressive processes as a test of goodness of fit. Under the null that an autoregressive model is true, the limit distribution of the empirical ADCF can differ markedly from the corresponding one based on an iid sequence. We illustrate the use of the empirical auto- and cross-distance correlation functions for testing dependence and cross-dependence of time series in a variety of different contexts.

read more

Citations
More filters
Journal ArticleDOI

An Updated Literature Review of Distance Correlation and Its Applications to Time Series

TL;DR: In this article, distance covariance/correlation was introduced to characterise dependence among vectors of random variables and its applicability to time series analysis was discussed, and it was shown that the auto-distance covariance /correlation function is able to identify nonlinear relationships and can be employed for testing the i.i.d. hypothesis.
Journal ArticleDOI

Count and duration time series with equal conditional stochastic and mean orders

TL;DR: In this paper, the authors consider a positive-valued time series whose conditional distribution has a time-varying mean, which may depend on exogenous variables and provide conditions for the existence of marginal moments and for the geometric decay of the beta-mixing coefficients.
Journal ArticleDOI

Testing independence for multivariate time series via the auto-distance correlation matrix

TL;DR: The matrix multivariate auto‐distance covariance and correlation functions for time series are introduced, their interpretation and consistent estimators for practical implementation are discussed and a test of the independent and identically distributed hypothesis is developed.
References
More filters
Book

Convergence of Probability Measures

TL;DR: Weak Convergence in Metric Spaces as discussed by the authors is one of the most common modes of convergence in metric spaces, and it can be seen as a form of weak convergence in metric space.
Book

Time Series: Theory and Methods

TL;DR: In this article, the mean and autocovariance functions of ARIMA models are estimated for multivariate time series and state-space models, and the spectral representation of the spectrum of a Stationary Process is inferred.
Journal ArticleDOI

Measuring and testing dependence by correlation of distances

TL;DR: Distance correlation is a new measure of dependence between random vectors that is based on certain Euclidean distances between sample elements rather than sample moments, yet has a compact representation analogous to the classical covariance and correlation.
Related Papers (5)