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I need to create a plot of the linear regression of the following formula, but I have not understood which is the correct way to do it in R:

lm.velocity_vs_Velocity_response = lm(scrd$Velocity~scrd$Velocity_response*scrd$Subject)

Where scrd is my dataset which can be downloaded here: https://dl.dropbox.com/u/3288659/Velocity_vs_Velocity.csv

The dataset, corresponding to an experiment, contains 2 variables (Velocity and Velocity_response) and I want to know if there is a linear correlation between the two. Let's say that the first is the velocity of a car driven under 4 terrains conditions (snow, wood, gravel, and a material inicated with "no sound") and the second is the perceived velocity of the conductor. In the experiment the 4 conditions where repeated twice by 10 participants, who at the end of the experiment had to evaluate the perceived velocities they had whle driving in the conditions. Evaluations where performed on a visual analog scale where 0 = very slow and 10 = very fast. I have therefore 80 points in my regressions (10 participants * 2 trials * 4 estimate of the velocities). However in the dataset I decided to average the performace of the 2 trials.

The output of the formula I used to make the regression,



Residual standard error: 0.08377 on 20 degrees of freedom
Multiple R-squared:  0.91,  Adjusted R-squared: 0.8245 
F-statistic: 10.64 on 19 and 20 DF,  p-value: 1.085e-06 

from which I conclude that there is a strong correlation between the two variables (R^2 = 0.91 and p-value < 0.001)

Now, I would like to see the line fitting the linear regression on those data. How it is done in R? Which is the correct formula? Can anyone provide an example of the code in R?

The problem is that using plot I get a mess of points, and I am not able to see a linear trend.

Here I post the first rows of the dataset

Subject     Material    Velocity    Velocity_response
Subject1    no_sound    1.41        7.8
Subject1    snow        1.255       4
Subject1    gravel      1.32        5.3
Subject1    wood        1.335       5.4
Subject2    no_sound    1.435       10
Subject2    snow        1.265       1.7
Subject2    gravel      1.3         8.5
Subject2    wood        1.355       5.3
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migrated from stats.stackexchange.com Aug 29 '12 at 16:22

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

Also, it looks like you have repeated measures. If so, you shouldn't be using lm at all. You should probably be using mixed models. – Peter Flom Aug 29 '12 at 16:00
lm has a plot() associated with it. You can use plot(lm.velocity_vs.Velocity_response). Also, surely velocity_response should be on the left side of the model and velocity on the right. It makes no sense to say velocity depends on the response. You might then need ordinal logistic regression. – Peter Flom Aug 29 '12 at 16:07
Hi all, thanks for answering. To answer to Peter Flom, of course I have repeated measures. So is it correct or wrong to use lm? I am not an expert of R, nor a statician ;-(, and I would need an help with the code for the mixed models if possible, and if it is wrong to use lm. I have no clue what is ordinal logistic regression nor hpw to perform it... Apparently Greg Snow agrees in using lm. I am confused. Can someone please clarify this issue? Thanks a lot – Angelo Aug 29 '12 at 16:44

Your life will be much easier if you run lm like:

lm.velocity_vs_Velocity_response <- lm(Velocity~Velocity_response*Subject, data=scrd)

Then to explore the relationship and the interaction look at the Predict.Plot and TkPredict functions in the TeachingDemos package.

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That's certainly true, @Greg. Also, I would suggest a model name that's a little shorter, but that may be personal preference. – Peter Flom Aug 29 '12 at 16:06
Thanks for the sintax suggestions. Please let me know about the above comment – Angelo Aug 29 '12 at 16:51
@PeterFlom and Luca, I also would suggest a shorter object name, however I tend to err much more on the other end and overuse names like 'fit' and 'tmp', the above is certainly more descriptive. Using a mixed model would also be a good idea (I did not read close enough to catch the repeated measures). You can do repeated measures using lm (but you need more terms in your model), but the mixed effects approach is prefered (but does not work with the functions that I mentioned, yet). – Greg Snow Aug 29 '12 at 18:01
Ok, thanks for your reply, but since there are repeated measures is not enough to use the interaction in lm? Morevor, what do ou mean with "you need more terms in your model"? Those are the data that I have. Is it possible for someone to show me the R code to perform the linear regression I need and to plot the graphic with the regression line? Finally, I make notice that the velocities produced in the 2 trials have been averaged. – Angelo Aug 29 '12 at 18:42
@Luca, can you show us some actual data (or simulated data of the correct form), use dput so it can be cut and pasted. Do you have an id variable for the same subject accross the different measures? with this info we have a better chance of being of help. – Greg Snow Aug 29 '12 at 19:18

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