Summary:
Commonly used standard statistical procedures for means and variances (such as the t–test for means or the F–test for variances and related confidence procedures) require observations from independent and identically normally distributed variables. These procedures are often routinely applied to financial data, such as asset or currency returns, which do not share these properties. Instead, they are nonnormal and show conditional heteroskedasticity, hence they are dependent. We investigate the effect of conditional heteroskedasticity (as modelled by GARCH(1,1)) on the level of these tests and the coverage probability of the related confidence procedures. It can be seen that conditional heteroskedasticity has no effect on procedures for means (at least in large samples). There is, however, a strong effect of conditional heteroskedasticity on procedures for variances. These procedures should therefore not be used if conditional heteroskedasticity is prevalent in the data.
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*We are grateful to the referees for their useful and constructive comments.
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Kläver, H., Schmid*, F. The effect of conditional heteroskedasticity on common statistical procedures for means and variances. Allgemeines Statistisches Arch 88, 397–407 (2004). https://doi.org/10.1007/s101820400179
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DOI: https://doi.org/10.1007/s101820400179