How to standardize unstandardized beta coefficients

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Hi, I read once that unstandardized beta coefficients (from regress function) can be standardized by just dividing them by the std of the respective variable. However, some simulations in Matlab tell me this is wrong. The only way I know of getting standardized betas is just to use zscored variables in the regress function, but I was wondering if there is another was to turn unstandardized betas into standardized ones. Thank you.
  4 Commenti
Nuchto
Nuchto il 27 Nov 2017
Modificato: Nuchto il 27 Nov 2017
This is what I mean:
% create IVs x1 and x2 and DV y as unstandardized variables
x1=rand(100,1)*30;
x2=rand(100,1)*2;
y=rand(100,1)*10;
% create column of ones
X=[ones(size(x1)) x1 x2];
% perform regression on these
beta1=regress(y,X)
% standardize variables and perform regression again
X=[ones(size(x1)) zscore(x1) zscore(x2)]; % attach ones
beta2=regress(zscore(y),X)
% beta2 should be equal to beta1(2)/std(x1) but it isn't
beta1(2)/std(x1)
beta2(2)

Accedi per commentare.

Risposte (3)

David Goodmanson
David Goodmanson il 30 Nov 2017
Hi Nuchto
You forgot that you need to regress against the same y, otherwise it's apples and oranges. So the second regression should be
beta2=regress(y,X)
and in addition the comparison is
beta1(2)*std(x1)
beta2(2)
which does seem counterintuitive at first.

muqdad aljuboori
muqdad aljuboori il 4 Giu 2018
Modificato: muqdad aljuboori il 4 Giu 2018
% create IVs x1 and x2 and DV y as unstandardized variables
x1=rand(100,1)*30;
x2=rand(100,1)*2;
y=rand(100,1)*10;
% create column of ones X=[ones(size(x1)) x1 x2];
% perform regression on these
beta1=regress(y,X)
% standardize variables and perform regression again
Z=[ones(size(x1)) zscore(x1) zscore(x2)]; % attach ones
beta2=regress(y,Z)
% beta2 should be equal to beta1(2)/std(x1) but it isn't
beta1(2)*std(x1)
beta2(2)
beta1(3)*std(x2)
beta2(3)
it is working now

muqdad aljuboori
muqdad aljuboori il 4 Giu 2018
% create IVs x1 and x2 and DV y as unstandardized variables x1=rand(100,1)*30;
x2=rand(100,1)*100;
x3=rand(100,1)*521;
x4=rand(100,1)*7;
y=rand(100,1)*10; % create column of ones
X=[ones(size(x1)) x1 x2 x3 x4];
% perform regression on these
beta1=regress(y,X)
% standardize variables and perform regression again
Z=[ones(size(x1)) zscore(x1) zscore(x2) zscore(x3) zscore(x4)]; % attach ones
beta2=regress(zscore(y),Z)
% beta2 should be equal to beta1(2)/std(x1) but it isn't
beta1(2)*std(x1)/std(y)
beta2(2)
beta1(3)*std(x2)/std(y)
beta2(3)
beta1(4)*std(x3)/std(y)
beta2(4)
beta1(5)*std(x4)/std(y)
beta2(5)
this for zscore(y)

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