Hello everyone,
I apologize in advance if this has been asked already in the list, since I figure it would, but I have not been able to find anything on it online. Many estimation commands estimate the variance or the standard deviation in logarithmic form when using maximum likelihood so that the estimate doesn't break any boundary issue of the parameter being estimated. The command then presents a test of the natural log coefficient being different than zero, and an estimate of the variance or standard deviation with a confidence interval, 95% being the default. My question is if there is any information anywhere that shows how we can test that the actual estimate of the variance, or the standard deviation for that matter, is different than zero. Accessing the natural log estimate is perfectly explained by Buis (2011), and working with correlations is perfectly explained by Cox (2008). However, I can't find anything on this topic and it is killing me, because the test that the natural log of the standard deviation is different from zero is a test that the standard deviation is different from one, but that doesn't mean that the standard deviation is different from zero. Also, the natural logarithm of zero is indeterminate, so one cannot test on the actual logarithm provided. Finally, I'm weary of using -nlcom- using the exponential of the actual value provided because this is a test on the boundary of the variable, and the test presented in -nlcom- assumes normality.
I'd appreciate any help provided in this, and I apologize again if this was already discussed and I was unable to find it.
Alfonso Sanchez-Penalver, PhD
References: Buis, Maarten L., “Stata Tip 97: Getting at ρs and σs,” The Stata Journal, 2011, 11 (2), 1–3.
Cox, Nicholas J., “Speaking Stata: Correlation with Confidence, or Fisher’s z Revisited,” The Stata Journal, 2008, 8 (3), 413–439.
I apologize in advance if this has been asked already in the list, since I figure it would, but I have not been able to find anything on it online. Many estimation commands estimate the variance or the standard deviation in logarithmic form when using maximum likelihood so that the estimate doesn't break any boundary issue of the parameter being estimated. The command then presents a test of the natural log coefficient being different than zero, and an estimate of the variance or standard deviation with a confidence interval, 95% being the default. My question is if there is any information anywhere that shows how we can test that the actual estimate of the variance, or the standard deviation for that matter, is different than zero. Accessing the natural log estimate is perfectly explained by Buis (2011), and working with correlations is perfectly explained by Cox (2008). However, I can't find anything on this topic and it is killing me, because the test that the natural log of the standard deviation is different from zero is a test that the standard deviation is different from one, but that doesn't mean that the standard deviation is different from zero. Also, the natural logarithm of zero is indeterminate, so one cannot test on the actual logarithm provided. Finally, I'm weary of using -nlcom- using the exponential of the actual value provided because this is a test on the boundary of the variable, and the test presented in -nlcom- assumes normality.
I'd appreciate any help provided in this, and I apologize again if this was already discussed and I was unable to find it.
Alfonso Sanchez-Penalver, PhD
References: Buis, Maarten L., “Stata Tip 97: Getting at ρs and σs,” The Stata Journal, 2011, 11 (2), 1–3.
Cox, Nicholas J., “Speaking Stata: Correlation with Confidence, or Fisher’s z Revisited,” The Stata Journal, 2008, 8 (3), 413–439.
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