Weak convergence of some marked empirical processes: Application to testing heteroscedasticity
Author:
Joseph Ngatchou-Wandji a
| Affiliation: | a D partement de math matiques, Universit de Caen, Campus II, Bd du Mar chal Juin, 14032 Caen, France.. |
DOI:
10.1080/10485250212377
Publication Frequency:
8 issues per year
Subjects:
Mathematical Economics;
Mathematical Finance;
Medical Statistics;
Statistical Theory & Methods;
Statistics;
Statistics for the Biological Sciences;
Stochastic Models & Processes;
Number of References: 13
Formats available:
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Abstract
We present a procedure for testing the goodness-of-fit of the conditional variance function of a Markov model of order 1, under stationarity and ergodicity. The autoregressive parameter, the distribution of the noise and the stationary distribution of the observations are assumed to be unknown. Under the null hypothesis H 0 that the conditional variance function belongs to a class of parametric functions, we define an estimator
\tilde \theta![]() _ n of θ0 , the assumed true parameter, and we establish its consistency and asymptotic normality. We define a marked empirical process A n (·), for which we state and prove a functional limit theorem under H 0 . The asymptotic behavior of this process is studied under fixed alternatives H 1 . Based on the process A n (·), a chi-squared test is derived. Simulation experiments show that the test is powerful against some heteroscedastic time series models.
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| Keywords: Markov Models; Goodness-of-fit; Heteroscedastic Models; Martingales; Nonparametric Methods |
| view references (13) |

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