calculate and plot standard error in R

I have the following problem using R. I have a data frame containing 96 observations and 5 variables (see below), so I want to extract to particular variables and plot the interactions plus the standard errors or confidence intervals.

``````data.frame':    96 obs. of  5 variables:

\$ resp : int  -8450000 -6080000 -38400000 -27800000 -260000 -14500000 -3800000 -21600000 -14600000 -2150000 ...

\$ param: Factor w/ 2 levels "a","l": 1 1 1 1 1 1 1 1 1 1 ...

\$ st   : int  0 0 0 0 0 0 0 0 0 0 ...

\$ hem  : Factor w/ 2 levels "l","r": 2 2 2 2 2 2 2 2 2 2 ...

\$ subj : Factor w/ 12 levels "A0173","A0174",..: 1 2 3 4 5 6 7 8 9 10 ...
``````

In particuler, i would like to see how the factor "hem" (two variables "l" and "r") interacts with the reponse variable "resp" and to produce an interactio plot with standard errors.

Tnanks again!

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It is not clear, what you want to do. If you could state your problem in clear statistical terms, it should be possible to help you with the code. A confidence interval gives you the confidence of an estimate. So, what do you want to estimate? –  Roland Jun 24 '12 at 14:49
I just want to calculate and plot standard error or confidence intervals of my data. I mentioned already that I am not educated enough, so I think the main problem is to organize the data in appropriate way to do that. Till now I have a data frame containing 48 observations and 5 variables, so I want to extract to particular variables and plot the interactions plus the standard errors or confidence intervals. May be my prior message shows the data in an appropriate form? So, the original data frame looks in a following way Thanks! –  Ivan Konstantin Jun 24 '12 at 17:37
As far as I now, there is no such thing as a standard error or confidence interval of data. They are defined for estimates, such as a mean or the coefficients and predictions of a regression model. –  Roland Jun 24 '12 at 17:44
@DWin: I think you are a bit unfair here; being able to ask the right question is already half the result. Otherwise, I agree with DWin: please post dput(dat.a), but remove the currently unused \$param and \$st (good exercise). I assume that this is a response measured multiple times for each subject, and with right and left hemisphere; you could have told us that. Knowing about the "within-subject repeats" is important. I assume the question will boil down to lme(response~hem,random=~1|subj,data=dat.a). –  Dieter Menne Jun 24 '12 at 18:20
@DieterMenne I disagree about being unfair, I offered potential answer as well as indicating the source of the ambiguity. Ivan was already asked this question by earlier commenters. He had not responded constructively, but instead had posed a further ..now closed ... question instead of editing this question. Now we have NOT what was suggested, but rather a useless bit of screen output. He seems to have major problems reading for meaning. –  BondedDust Jun 24 '12 at 20:10