Asymptotic Optimality of Estimating Function Estimator for CHARN Model
نویسنده
چکیده
CHARN model is a famous and important model in the finance, which includes many financial time series models and can be assumed as the return processes of assets. One of the most fundamental estimators for financial time series models is the conditional least squares CL estimator. However, recently, it was shown that the optimal estimating function estimator G estimator is better than CL estimator for some time series models in the sense of efficiency. In this paper, we examine efficiencies of CL and G estimators for CHARN model and derive the condition that G estimator is asymptotically optimal.
منابع مشابه
Estimating Function Approach for CHARN Models
Godambe (1960, 1985) and Hansen (1982) proposed the method of estimating function which makes a bridge between least squares estimator and maximum likelihood estimator. In this paper we apply the estimating function approach to CHARN models which include many well-known nonlinear time series models as special cases. The innovation density is permitted to be skew-symmetric. Since the estimation ...
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ورودعنوان ژورنال:
- ADS
دوره 2012 شماره
صفحات -
تاریخ انتشار 2012