We propose a test to discern between an ordinary autoregressive model, and a random coefficient one. To this end, we develop a full-fledged estimation theory for the variances of the idiosyncratic innovation and of the random coefficient, based on a two-stage WLS approach. Our results hold irrespective of whether the series is stationary or nonstationary, and, as an immediate result, they afford the construction of a test for " relevant " randomness. Further, building on these results, we develop a randomised test statistic for the null that the coefficient is non-random, as opposed to the alternative of a standard RCA(1) model. Monte Carlo evidence shows that the test has the correct size and very good power for all cases considered
It is an important task in the literature to check whether a fitted autoregressive moving average (A...
AbstractIn this paper we introduce a new method for the problem of testing for randomness against th...
This article proposes new tests of randomness for innovations in a large class of time series models...
We propose a procedure to decide between the null hypothesis of (strict) stationarity and the altern...
We propose a test for the null of strict stationarity in a Random Coefficient AutoRe-gression (RCAR)...
This paper studies the asymptotics of the Weighted Least Squares (WLS) estimator of the autoregressi...
This study considers tests for coefficient randomness in predictive regressions. Our focus is on how...
The class of random coe±cient autoregressive (RCA) models has been con-sidered in many areas of scie...
In this paper, we propose a test for coefficient stability of an AR(1) model against the random coef...
A random coefficient autoregressive process is deeply investigated in which the coefficients are cor...
We propose a family of CUSUM-based statistics to detect the presence of changepoints in the determin...
In this paper, we suggest and analyze a new class of specification tests for random coefficient mode...
AbstractIn a recent paper, Mokkadem (1997. Stoch. Proc. Appl. 72, 145–149) derived a simple test for...
To decide whether a given sequence is “truely ” random, or independent and identically distributed, ...
Wooldridge (1991) suggest a robust test for autocorrelations of the disturbances of regression model...
It is an important task in the literature to check whether a fitted autoregressive moving average (A...
AbstractIn this paper we introduce a new method for the problem of testing for randomness against th...
This article proposes new tests of randomness for innovations in a large class of time series models...
We propose a procedure to decide between the null hypothesis of (strict) stationarity and the altern...
We propose a test for the null of strict stationarity in a Random Coefficient AutoRe-gression (RCAR)...
This paper studies the asymptotics of the Weighted Least Squares (WLS) estimator of the autoregressi...
This study considers tests for coefficient randomness in predictive regressions. Our focus is on how...
The class of random coe±cient autoregressive (RCA) models has been con-sidered in many areas of scie...
In this paper, we propose a test for coefficient stability of an AR(1) model against the random coef...
A random coefficient autoregressive process is deeply investigated in which the coefficients are cor...
We propose a family of CUSUM-based statistics to detect the presence of changepoints in the determin...
In this paper, we suggest and analyze a new class of specification tests for random coefficient mode...
AbstractIn a recent paper, Mokkadem (1997. Stoch. Proc. Appl. 72, 145–149) derived a simple test for...
To decide whether a given sequence is “truely ” random, or independent and identically distributed, ...
Wooldridge (1991) suggest a robust test for autocorrelations of the disturbances of regression model...
It is an important task in the literature to check whether a fitted autoregressive moving average (A...
AbstractIn this paper we introduce a new method for the problem of testing for randomness against th...
This article proposes new tests of randomness for innovations in a large class of time series models...