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Nonparametric density estimation for positive time series

机译:正时间序列的非参数密度估计

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The Gaussian kernel density estimator is known to have substantial problems for bounded random variables with high density at the boundaries. For independent and identically distributed data, several solutions have been put forward to solve this boundary problem. In this paper, we propose the gamma kernel estimator as a density estimator for positive time series data from a stationary a-mixing process. We derive the mean (integrated) squared error and asymptotic normality. In a Monte Carlo simulation, we generate data from an autoregressive conditional duration model and a stochastic volatility model. We study the local and global behavior of the estimator and we find that the gamma kernel estimator outperforms the local linear density estimator and the Gaussian kernel estimator based on log-transformed data. We also illustrate the good performance of the h-block cross-validation method as a bandwidth selection procedure. An application to data from financial transaction durations and realized volatility is provided.
机译:已知高斯核密度估计器对于边界处具有高密度的有界随机变量存在实质性问题。对于独立且分布均匀的数据,提出了几种解决此边界问题的方法。在本文中,我们提出了伽玛核估计器作为来自静态a混合过程的正时间序列数据的密度估计器。我们得出均方(综合)平方误差和渐近正态性。在蒙特卡洛模拟中,我们从自回归条件持续时间模型和随机波动率模型生成数据。我们研究了估计器的局部和全局行为,发现基于对数转换的数据,伽玛核估计器的性能优于局部线性密度估计器和高斯核估计器。我们还说明了h块交叉验证方法作为带宽选择过程的良好性能。提供了一种针对金融交易持续时间和实际波动率数据的应用程序。

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