Hello all,
New Stata user here. I am having some trouble modelling a variable that is key to answering my research question for my master's thesis. I am looking to create a multivariable linear regression model, where my dependent variable is a summed score of depression symptoms.
The problem is that my dependent variable does not appear to be normally distributed (Skewness=0.801527; Kurtosis= 3.196693). The distribution has a positive skew, and this is expected, as we assume that very high depression scores are not common in the general population.
My question is in regards to the best way to transform this variable so that I can use it in a linear regression model. I have tried most common transformations that I can think of (log, ln, e) and these actually make it all worse. I would appreciate any help on this issue!
Thanks so much,
Jen
New Stata user here. I am having some trouble modelling a variable that is key to answering my research question for my master's thesis. I am looking to create a multivariable linear regression model, where my dependent variable is a summed score of depression symptoms.
The problem is that my dependent variable does not appear to be normally distributed (Skewness=0.801527; Kurtosis= 3.196693). The distribution has a positive skew, and this is expected, as we assume that very high depression scores are not common in the general population.
My question is in regards to the best way to transform this variable so that I can use it in a linear regression model. I have tried most common transformations that I can think of (log, ln, e) and these actually make it all worse. I would appreciate any help on this issue!
Thanks so much,
Jen
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