Specifying which category is the reference level for glmfit
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the cyclist
el 28 de Jul. de 2014
Comentada: the cyclist
el 30 de Jul. de 2014
When using glmfit() with categorical predictor variables, how is reference level determined? Is there a way to specify which category should be the reference level instead of the default?
The equivalent in R is the relevel() command.
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Tom Lane
el 29 de Jul. de 2014
There is not currently a way to specify the reference category for categorical predictors in functions like fitglm. The glmfit function doesn't directly support categorical predictors, so you have some control there in the sense that you could use dummyvar and omit any category you want. Of course you could do the same thing with fitglm, and bypass the categorical support.
But you can accomplish this by making your categorical predictor ordinal, and changing the order. First start with the default order:
>> load fisheriris
>> t = array2table(meas);
>> t.species = ordinal(species);
>> fitlm(t,'meas1~meas2+species')
...
Estimate SE tStat pValue
________ _______ ______ __________
(Intercept) 2.2514 0.36975 6.0889 9.5681e-09
meas2 0.80356 0.10634 7.5566 4.1873e-12
species_versicolor 1.4587 0.11211 13.012 3.4782e-26
species_virginica 1.9468 0.10001 19.465 2.0945e-42
Now change the order to make 'virginica' first and fit again:
>> t.species = reordercats(t.species,{'virginica' 'versicolor' 'setosa'});
>> fitlm(t,'meas1~meas2+species')
...
Estimate SE tStat pValue
________ ________ _______ __________
(Intercept) 4.1982 0.32226 13.027 3.1675e-26
meas2 0.80356 0.10634 7.5566 4.1873e-12
species_versicolor -0.48807 0.090238 -5.4088 2.5354e-07
species_setosa -1.9468 0.10001 -19.465 2.0945e-42
You can see that the omitted category changed. As a check, let's verify that the fitted value for the versicolor category at meas2=0 is the same in both fits:
>> 2.2514+1.4587
ans =
3.7101
>> 4.1982-.48807
ans =
3.7101
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