The aim of the paper is to try to measure, through a Monte Carlo experiment, nonlinearity in time series generated by a strictly stationary and uniformly ergodic state-dependent autoregressive process. The model under study is intrinsically nonlinear but the choice of parameters strongly impacts on the type of serial dependence making its identification complicated. For this reason, the paper exploits two statistical tests of independence and linearity in order to select the parameter values which ensure the joint rejection of both hypothesis. After that, our study uses two measures of nonlinear dependence in time series recently introduced in the literature, the auto-distance correlation function and the autodependence function, in o...
The aim of the paper is to examine some of the key issues in nonlinear time series analysis. Tools a...
We discuss the problem of generating time sequences that fulfil given constraints but are random oth...
We describe an approach for evaluating the statistical significance of evidence for nonlinearity in ...
The aim of the paper is to try to measure, through a Monte Carlo experiment, nonlinearity in time se...
none3In this paper we propose a novel test for the identification of nonlinear dependence in time se...
We propose two methods to measure all (linear and nonlinear) statistical dependences in a stationary...
The aim of the paper is to propose a novel test for the identification of nonlinear dependence in ti...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
In this work we propose a nonparametric test for the identification of nonlinear dependence in time ...
When studying a real-life time series, it is frequently reasonable to assume, possibly after a suita...
This paper studies some temporal dependence properties and addresses the issue of parametric estimat...
International audienceInterest is growing in methods for predicting and detecting regime shifts—chan...
Autocorrelation function (C1) or autoregressive model parameters are often estimated for temporal an...
This article analyses the use of model selection criteria for detecting non linearity in the residua...
In this chapter, we review the problem of testing for nonlinearity in time series. First, we discuss...
The aim of the paper is to examine some of the key issues in nonlinear time series analysis. Tools a...
We discuss the problem of generating time sequences that fulfil given constraints but are random oth...
We describe an approach for evaluating the statistical significance of evidence for nonlinearity in ...
The aim of the paper is to try to measure, through a Monte Carlo experiment, nonlinearity in time se...
none3In this paper we propose a novel test for the identification of nonlinear dependence in time se...
We propose two methods to measure all (linear and nonlinear) statistical dependences in a stationary...
The aim of the paper is to propose a novel test for the identification of nonlinear dependence in ti...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
In this work we propose a nonparametric test for the identification of nonlinear dependence in time ...
When studying a real-life time series, it is frequently reasonable to assume, possibly after a suita...
This paper studies some temporal dependence properties and addresses the issue of parametric estimat...
International audienceInterest is growing in methods for predicting and detecting regime shifts—chan...
Autocorrelation function (C1) or autoregressive model parameters are often estimated for temporal an...
This article analyses the use of model selection criteria for detecting non linearity in the residua...
In this chapter, we review the problem of testing for nonlinearity in time series. First, we discuss...
The aim of the paper is to examine some of the key issues in nonlinear time series analysis. Tools a...
We discuss the problem of generating time sequences that fulfil given constraints but are random oth...
We describe an approach for evaluating the statistical significance of evidence for nonlinearity in ...