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首页> 外文期刊>South African statistical journal >A WEIGHTED LEAST SQUARES PROCEDURE TO APPROXIMATE LEAST ABSOLUTE DEVIATION ESTIMATION IN TIME SERIES WITH SPECIFIC REFERENCE TO INFINITE VARIANCE UNIT ROOT PROBLEMS
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A WEIGHTED LEAST SQUARES PROCEDURE TO APPROXIMATE LEAST ABSOLUTE DEVIATION ESTIMATION IN TIME SERIES WITH SPECIFIC REFERENCE TO INFINITE VARIANCE UNIT ROOT PROBLEMS

机译:加权最小二乘程序,用于近似时间序列中的最小绝对偏差估计,具体涉及无限方差根问题

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摘要

A weighted regression procedure is proposed for regression type problems where the innovations are heavy-tailed. This method approximates the least absolute regression method in large samples, and the main advantage will be if the sample is large and for problems with many independent variables. In such problems bootstrap methods must often be utilized to test hypotheses and especially in such a case this procedure has an advantage over least absolute regression. The procedure will be illustrated on first-order autoregressive problems, including the random walk. A bootstrap procedure is used to test the unit root hypothesis and good results were found.
机译:针对创新密集型的回归类型问题,提出了加权回归程序。该方法近似于大型样本中的最小绝对回归方法,其主要优点将是样本较大且存在许多自变量的问题。在这样的问题中,通常必须使用自举法来检验假设,尤其是在这种情况下,此过程比至少绝对回归具有优势。该过程将针对一阶自回归问题(包括随机游动)进行说明。引导程序用于测试单位根假设,并获得了良好的结果。

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