On Robust Testing for Trend

A. Skrobotov
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引用次数: 0

Abstract

This paper provides a simple approach for robust testing for the trend function in the time series under uncertainty over the order of integration of the error term. The proposed approach relies on the asymptotic normality of the trend coefficient estimator and utilises t-statistic approach of Ibragimov and Muler (2010) based on splitting the sample. The Monte-Carlo results demonstrate that the approach has the correct finite sample size and favorable finite sample power properties for all data generating processes considered. The proposed approach is robust to very general assumptions on the error term including various forms of non-stationary volatility and heavy tails.
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关于趋势的稳健测试
本文提供了一种简单的方法来检验在误差项的积分阶数上不确定的时间序列中趋势函数的鲁棒性。所提出的方法依赖于趋势系数估计量的渐近正态性,并利用Ibragimov和Muler(2010)基于分裂样本的t统计方法。蒙特卡罗结果表明,该方法具有正确的有限样本大小和良好的有限样本功率特性,适用于所有考虑的数据生成过程。所提出的方法对误差项的非常一般的假设具有鲁棒性,包括各种形式的非平稳波动和重尾。
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