# How to apply fit line for different lines that have different trends including linear and cubic in one scatter plot graph in SPSS?

I have got a scatter plot with three treatments and would like to apply the best fit line for each treatments. Is there any way in SPSS to apply fit lines in one treatment without affecting others at one figure. Any advice is greatly appreciated

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I just answered a very similar question over at the NABBLE SPSS group that may be of interest. –  Andy W Jul 30 '12 at 12:58

## migrated from stats.stackexchange.comSep 29 '12 at 20:49

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Here is verbatim what I posted on the NABBLE SPSS list-serve to a synonymous question:

Here is the best solution I could come up with. In a nutshell it makes two grouping variables and then maps the one group to a 100% transparent element. Then it just has two element calls in the GPL (in this example one for linear and one for quadratic).

Of course the most flexible solution would be to actually fit the models for each group and put the predicted values as a new variable in the dataset, but this didn't work out too badly (the legend didn't even turn out that badly).

``````**********************************************.
set seed = 10.
input program.
loop #i = 1 to 100.
if #i <= 50 group = 0.
if #i > 50 group = 1.
end case.
end loop.
end file.
end input program.
dataset name sim.
execute.

compute x = RV.NORM(0,1).
if group = 0 outcome =  x + RV.NORM(0,0.1).
if group = 1 outcome =  x**2 + RV.NORM(0,0.1).

compute group_square = (group = 1).
compute group_linear = (group = 0).
formats all (F1.0).
exe.

DATASET ACTIVATE sim.
* Chart Builder.
GGRAPH
/GRAPHDATASET NAME="graphdataset" VARIABLES=x outcome group_square group_linear group
MISSING=LISTWISE REPORTMISSING=NO
/GRAPHSPEC SOURCE=INLINE.
BEGIN GPL
SOURCE: s=userSource(id("graphdataset"))
DATA: x=col(source(s), name("x"))
DATA: outcome=col(source(s), name("outcome"))
DATA: group=col(source(s), name("group"), unit.category())
DATA: group_square=col(source(s), name("group_square"), unit.category())
DATA: group_linear=col(source(s), name("group_linear"), unit.category())
GUIDE: axis(dim(1), label("x"))
GUIDE: axis(dim(2), label("outcome"))
GUIDE: legend(aesthetic(aesthetic.transparency), null())
SCALE: cat(aesthetic(aesthetic.transparency), map(("0", transparency."1.0"), ("1", transparency."0.0")))
ELEMENT: point(position(x*outcome), color.exterior(group))
ELEMENT: line(position(smooth.linear(x*outcome)), transparency.interior(group_linear), color.interior(group))
END GPL.
**********************************************.
``````

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