2024
DOI: 10.3934/math.2024410
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Bias correction based on AR model in spurious regression

Zhongzhe Ouyang,
Ke Liu,
Min Lu

Abstract: <abstract><p>The regression of mutually independent time series, whether stationary or non-stationary, will result in autocorrelation in the random error term. This leads to the over-rejection of the null hypothesis in the conventional t-test, causing spurious regression. We propose a new method to reduce spurious regression by applying the Cochrane-Orutt feasible generalized least squares method based on a bias-corrected method for a first-order autoregressive model in finite samples. This method … Show more

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