[R] how to interpret coefficients for a natural spline smooth function in a GLM
Frank E Harrell Jr
f.harrell at vanderbilt.edu
Sun Jun 28 15:28:03 CEST 2009
spencerg wrote:
> I have not seen a reply to this question, so I will offer a
> comment; someone who knows more than I may correct or add to my comments.
>
> There are many different kinds of splines. Perhaps the most common
> are B-splines, which sum to 1 inside their range of definition and are 0
> outside. Natural splines are similar, but support extrapolation outside
> the (finite) range of definition. A natural cubic spline extrapolates
> as straight lines (http://en.wikipedia.org/wiki/Spline_interpolation).
The rcs function in the Design package implements this kind of natural
spline which I usually call a restricted cubic spline. The Function and
latex.Design functions in the Design package reformat the fitted
regression equation into a more interpretable form.
Frank
>
> The coefficients are weights for a B-spline basis for the natural
> spline, defined in terms of the knots.
>
> The "fda" package includes a "TaylorSpline" function to translate
> spline coefficients into the coefficients of Taylor expansions about the
> midpoints of the intervals between knots. However, I do not know if it
> will work with a natural spline.
>
> This is far from a complete answer to your question, but I hope it
> helps.
>
> Spencer Graves
>
> ltracy wrote:
>> Hello-
>>
>> I am trying to model infections counts over 120 months using a GLM in
>> R. The model is simple really including a factor variable for year (10
>> yrs in
>> total) and another variable consisting of a natural spline function
>> for time
>> in months.
>> My code for the GLM is as follows:
>> model1<-glm(ALL_COUNT~factor(FY)+ns(1:120, 10), offset=log(TOTAL_PTS),
>> family=poisson, data=TS1)
>>
>> The summary output pertaining to the smooth function consists of 10
>> coefficients for each df in the model. Here are the coefficients:
>>
>> ns(1:120, 10)1 -0.72438 0.32773 -2.210 0.027084 * ns(1:120,
>> 10)2 -1.19097 0.37492 -3.177 0.001490 ** ns(1:120, 10)3
>> -1.40250 0.42366 -3.310 0.000931 ***
>> ns(1:120, 10)4 -0.82722 0.47459 -1.743 0.081334 . ns(1:120,
>> 10)5 -0.46139 0.49657 -0.929 0.352812 ns(1:120, 10)6
>> -0.44892 0.51909 -0.865 0.387137 ns(1:120, 10)7 -0.53060
>> 0.54783 -0.969 0.332778 ns(1:120, 10)8 -0.25699 0.55582
>> -0.462 0.643814 ns(1:120, 10)9 -0.74091 0.63899 -1.160
>> 0.246249 ns(1:120, 10)10 0.41142 0.56317 0.731 0.465054
>> What is still unclear to me is what these 10 coefficients from the
>> natural
>> spline represent.
>> Thanks in advace-
>>
>>
>>
--
Frank E Harrell Jr Professor and Chair School of Medicine
Department of Biostatistics Vanderbilt University
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