Model Selection Testing for Diffusion Processes with Applications to Interest Rate and Exchange Rate Models

Hwan-sik Choi, Minsoo Jeong, Joon Y. Park
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Abstract

A model selection test for non-nested misspecified diffusion models is developed by using a criterion based on the Kullback-Leibler information criterion in a new asymptotic framework that accounts for the relative significance of diffusion functions for high frequency data. The test examines the hypothesis that two competing models are equivalent in the criterion. Our approach differentiates the roles of diffusion and drift functions and shows the equivalence of models must be understood differently depending on the sampling frequencies; it is of primary importance for a model to have a diffusion function close to the true diffusion function for superiority when the sampling frequency is high, and we compare drift functions if the models can not be distinguished by the diffusion functions. As the sampling frequencies become higher, the diffusion functions are more important, and the informative signal for ranking the drift functions is weaker. The drift functions are useful only when we sample data for long enough. Our new asymptotics deals with the different rates of information in the diffusion and drift functions by considering both the sampling interval Δ and the sampling span T, and we show the sampling span must increase at a relative speed faster than Δ⁻² (or Δ²T→∞) to ensure sufficient information to be collected for distinguishing two models by their drift functions. The limiting distribution of the test statistic is normal, and we compare different asymptotic approximations to the sampling distribution of the test statistic using the sub-sampling, and the nonparametric block bootstrap methods, as well as the standard normal approximation for the test statistics standardized by the heteroskedasticity auto-correlation consistent variance estimators. We apply our test to the model selection problems for spot interest rate models and exchange rate models. We find that many popular models are observationally equivalent.
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扩散过程的模型选择检验及其在利率和汇率模型中的应用
在考虑高频数据扩散函数相对显著性的新渐近框架中,利用基于Kullback-Leibler信息准则的准则,提出了非嵌套错定扩散模型的模型选择检验方法。该检验检验了两个相互竞争的模型在标准中等效的假设。我们的方法区分了扩散函数和漂移函数的作用,并表明模型的等效性必须根据采样频率的不同而不同地理解;当采样频率较高时,模型的扩散函数与真实扩散函数接近是最重要的,如果不能用扩散函数来区分模型,我们比较漂移函数。采样频率越高,扩散函数越重要,对漂移函数排序的信息信号越弱。只有当我们对数据进行足够长的采样时,漂移函数才有用。我们的新渐近性通过考虑采样间隔Δ和采样跨度T来处理扩散函数和漂移函数中的不同信息速率,并且我们表明采样跨度必须以比Δ⁻²(或Δ²T→∞)更快的相对速度增加,以确保收集足够的信息以通过其漂移函数区分两个模型。检验统计量的极限分布是正态分布,我们比较了不同的渐近逼近检验统计量的抽样分布使用子抽样和非参数块bootstrap方法,以及标准正态逼近检验统计量由异方差自相关一致方差估计标准化。我们将我们的检验应用于即期利率模型和汇率模型的模型选择问题。我们发现许多流行的模型在观测上是等效的。
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