Although statistical inference in stochastic differential equations (SDEs) driven by Wiener process has received significant attention in the literature, inference in those driven by fractional Brownian motion seem to have seen much less development in comparison, despite their importance in modeling long range dependence. In this article, we consider both classical and Bayesian inference in such fractional Brownian motion based SDEs. In particular, we consider asymptotic inference for two parameters in this regard; a multiplicative parameter associated with the drift function, and the so-called "Hurst parameter" of the fractional Brownian motion, when the time domain tends to infinity. For unknown Hurst parameter, the likelihood does not lend itself amenable to the popular Girsanov form, rendering usual asymptotic development difficult. As such, we develop increasing domain infill asymptotic theory, by discretizing the SDE. In this setup, we establish consistency and asymptotic normality of the maximum likelihood estimators, as well as consistency and asymptotic normality of the Bayesian posterior distributions. However, classical or Bayesian asymptotic normality with respect to the Hurst parameter could not be established. We supplement our theoretical investigations with simulation studies in a non-asymptotic setup, prescribing suitable methodologies for classical and Bayesian analyses of SDEs driven by fractional Brownian motion. Applications to a real, close price data, along with comparison with standard SDE driven by Wiener process, is also considered. As expected, it turned out that our Bayesian fractional SDE triumphed over the other model and methods, in both simulated and real data applications.
翻译:虽然Wiener 进程驱动的微相差异方程式(SDEs)的统计推论在文献中受到极大关注,但在由分数布朗运动驱动的分数布朗运动驱动的“超常参数”中,推论似乎没有那么大的发展,尽管在模拟长距离依赖性方面的重要性。在本篇文章中,我们认为古典和巴耶斯的推论在以SDEs为基础的这种分数布朗运动(SDEs)中具有重要性。特别是,我们认为在这方面对两个参数的推论是微不足道的;一个与漂移功能有关的倍增参数,以及所谓的布朗分数运动的“超常值参数”,而时间范围则趋于不尽。对于未知的赫斯特参数来说,这种可能性并不能让自己适应流行的Girsanov 形态,从而使得常见的轻度发展变得困难。因此,我们通过分解SDE的超常度理论,我们在这个模型中,我们建立了与最有可能的估量的比值的比值的比值的比值的比值, 以及不连贯和亚性精确的比值的比值分析, 也是我们正常的比值的比值分析的比值的比值分析。