Nonparametric Estimation and Misspecification Testing of Diffusion Models

Dennis Kristensen
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引用次数: 15

Abstract

We propose novel misspecification tests of semiparametric and fully parametric univariate diffusion models based on the estimators developed in Kristensen (Journal of Econometrics, 2010). We first demonstrate that given a preliminary estimator of either the drift or the diffusion term in a diffusion model, nonparametric kernel estimators of the remaining term can be obtained. We then propose misspecification tests of semparametric and fully parametric diffusion models that compare estimators of the transition density under the relevant null and alternative. The asymptotic distribution of the estimators and tests under the null are derived, and the power properties are analyzed by considering contiguous alternatives. Test directly comparing the drift and diffusion estimators under the relevant null and alternative are also analyzed. Markov Bootstrap versions of the test statistics are proposed to improve on the finite-sample approximations. The finite sample properties of the estimators are examined in a simulation study.
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扩散模型的非参数估计和误规范检验
我们提出了基于Kristensen (Journal of Econometrics, 2010)开发的估计量的半参数和全参数单变量扩散模型的新的错标检验。我们首先证明了给定扩散模型中漂移项或扩散项的初步估计量,可以得到剩余项的非参数核估计量。然后,我们提出了半参数和全参数扩散模型的误规范检验,比较了相关零值和替代值下转移密度的估计。导出了估计量的渐近分布和零值下的检验,并在考虑相邻备选的情况下分析了其幂性质。对漂移估计器和扩散估计器在相关零值和备选值下的直接比较试验也进行了分析。提出了马尔可夫Bootstrap版本的测试统计量,以改进有限样本近似。在仿真研究中检验了估计器的有限样本性质。
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