getting least squares and residuals by comparing data

I have a set of simulated data (df1) I've generated. I have a second set of data (df2) that I would like to compare and see if df1 can explain the observations of df2.

Ideally I'd like to plot the residuals and calculate least squares but I am not sure how to do this when I am comparing one set of data with another.

``````df1
time n
0.0000000 1
0.1268725 2
1.3128176 3
3.1765056 4
3.4091914 5
4.1245285 6
8.4518769 9
9.8119399 10

df2
n  time
0  0
37  1
97  2
157  3
``````
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What does "explain the observations of" mean exactly? What type of analysis do you wish to do? –  MrFlick Jul 21 '14 at 22:13
I would like to know if the model that I've made to generate the simulated data can explain the df2 –  user3141121 Jul 21 '14 at 22:15
Explain it how? What does that mean mathematically? –  MrFlick Jul 21 '14 at 22:16
I want to do model fitting of df2 to df1 and I want to get residuals and least squares just like you would from lm(). –  user3141121 Jul 21 '14 at 22:23
You can't just "fit" data from one set to another. That doesn't make sense. Do you want to fit a linear model to df1 and then use that fit to calculate residuals form df2? That's a bit more precise. You need a clear modeling strategy. –  MrFlick Jul 21 '14 at 22:27

So you seem to be asking: does the fit generated using the training set (`df1`), do well on the test set (`df2`). Here's one way to get at this:

``````fit <- lm(n ~ time, df)
par(mfrow=c(1,2))
with(df,plot(time,n))
with(df,lines(time,predict(fit),col="blue",lty=2))
plot(fit,1)
``````

``````df2\$pred <- predict(fit,df2)
df2\$resid <- with(df2,n-pred)
with(df2,plot(time,n))
with(df2,lines(time,pred,col="blue",lty=2))
with(df2,plot(n,resid,type="b"))
``````

So the answer is "no", the fit does not explain the data in df2 well. Values of n predicted by the model are much lower than the "actual" values of n.

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