[R] compositional data: percent values sum up to 1
Spencer Graves
spencer.graves at pdf.com
Mon Jun 2 15:33:00 CEST 2003
"glm" will do multinomial logistic regression. However, if J is large,
I doubt if that will do what you want. If it were my problem, I might
feel a need to read the code for "glm" and modify it to do what I want.
Perhaps someone else can suggest something better.
hth. spencer graves
Christoph Lehmann wrote:
> I want to do a logistic regression analysis, and to compare with, a
> discriminant analysis. The mentioned power maps are my exogenous data,
> the dependent variable (not mentioned so far) is a diagnosis
> (ill/healthy)
>
> thanks for the interest and the help
>
> Christoph
>
> On Sun, 2003-06-01 at 21:01, Spencer Graves wrote:
>
>>What are you trying to do? What I would do with this depends on many
>>factors.
>>
>>spencer graves
>>
>>Christoph Lehmann wrote:
>>
>>>again, under another subject:
>>>sorry, maybe an all too trivial question. But we have power data from J
>>>frequency spectra and to have the same range for the data of all our
>>>subjects, we just transformed them into % values, pseudo-code:
>>>
>>>power[i,j]=power[i,j]/sum(power[i,1:J])
>>>
>>>of course, now we have a perfect linear relationship in our x design-matrix,
>>>since all power-values for each subject sum up to 1.
>>>
>>>How shall we solve this problem: just eliminate one column of x, or
>>>introduce a restriction which says exactly that our power data sum up to
>>>1 for each subject?
>>>
>>>Thanks a lot
>>>
>>>Christoph
>>
>>______________________________________________
>>R-help at stat.math.ethz.ch mailing list
>>https://www.stat.math.ethz.ch/mailman/listinfo/r-help
>
More information about the R-help
mailing list