Testing significance of variables in regression analysis when there is non-normality or heteroskedasticity. : The wild bootstrap and the generalised lambda distribution

Pavlidis, E. and Paya, I. and Peel, D. A. (2008) Testing significance of variables in regression analysis when there is non-normality or heteroskedasticity. : The wild bootstrap and the generalised lambda distribution. In: Advances In Doctoral Research In Management (Volume 2) :. World Scientific Publishing Co., pp. 151-174. ISBN 9789812778666

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Abstract

Statistical inference on the parameters of regression models requires special precautions when the error term is heteroskedastic and/or non-normal. In this case, although conventional test statistics do not follow t and F distributions, simulation methods can be used to draw inferences. We discuss two methods: the wild bootstrap and the generalised lambda distribution. By employing both artificial and real-world data from the National Footbal League, we show that these methods may prove particularly useful in hypothesis testing.

Item Type:
Contribution in Book/Report/Proceedings
Additional Information:
Publisher Copyright: © 2008 by World Scientific Publishing Co. Pte. Ltd.
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/2000/2000
Subjects:
?? generalised lambda distributionheteroskedasticmonte carlo simulationsnon-normalitywild bootstrapgeneral economics,econometrics and financegeneral business,management and accounting ??
ID Code:
225177
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Deposited On:
21 Oct 2024 11:25
Refereed?:
No
Published?:
Published
Last Modified:
21 Oct 2024 11:25