coeftest to test simple effects
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I have run fitglme with 2 categorical variables (X1, X2) and an interaction term as predictors. Each categorical variable has 2 levels - let's call the levels A and B. I would like to use coefTest to test, say, whether X1 level A vs. X1 level B are significantly different but only at X2 level B. I would also like to test whether X1 level A and X2 level A are significantly different from one another.
I understand that the columns of coefTest are the predictors but I don't really understand what's on the rows? If I make 4 rows what are the 3rd and 4th rows?
Thanks for any insight you can offer.
4 comentarios
jgg
el 22 de Jul. de 2016
I think your confusion is because it's performing the joint hypothesis test that Hb = 0; so it will only return a single p value for the F test of this hypothesis.
The key is to figure out how you can write your hypothesis as a linear combination of the coefficients in your model.
John Hartman
el 27 de Jun. de 2019
As mentioned by jgg, you must test linear combinations of the model coefficients. Sometimes though, your model may change or you may have a lot of coefficients which can make manually defining long contrast vectors tedious. People frequently use more interpretable linear combinations of the coefficients, i.e. estimated marginal (or predicted, or least squares) means. Then, these functions may be of use https://www.mathworks.com/matlabcentral/fileexchange/71970-emmeans
Respuestas (1)
Rohan Joshi
el 21 de Jul. de 2016
I am looking for an answer to the exact same question!
1 comentario
Alexis
el 7 de Jun. de 2020
Same, as are many here. I keep finding my own posts from more than a year ago asking the same questions. TMW, please either deal with the backlog of questions or improve the documentation!
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