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Bootstrapping the likelihood ratio cointegration test in error correction models with unknown lag order

机译:在滞后阶数未知的纠错模型中自举似然比协整检验

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摘要

The finite-sample size and power properties of bootstrapped likelihood ratio system cointegration tests are investigated via Monte Carlo simulations when the true lag order of the data generating process is unknown. Recursive bootstrap schemes are employed which differ in the way in which the lag order is chosen. The order is estimated by minimizing different information criteria and by combining the corresponding order estimates. It is found that, in comparison to the standard asymptotic likelihood ratio test based on an estimated lag order, bootstrapping can lead to improvements in small samples even when the true lag order is unknown, while the power loss is moderate.
机译:当数据生成过程的真正滞后阶数未知时,通过蒙特卡洛模拟研究自举似然比系统协整测试的有限样本大小和幂性质。采用了递归自举方案,该方案在选择滞后顺序方面有所不同。通过最小化不同的信息标准并通过组合相应的订单估算来估算订单。已发现,与基于估计滞后阶的标准渐近似然比测试相比,即使在真正的滞后阶未知的情况下,自举也可以导致小样本样本的改善,而功率损耗则是中等的。

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