# How to organize scores that belong to same condition in R

I've been searching for hours for a solution to my problem, but since I'm new to R and programming, I haven't really got the terminology down well enough to effectively search online for help.

Below is a simplified version of the data I am working with. In the full data there are close to 200 different items, and 24 subjects.

I need to be able to work with the data in terms of which "item" the scores belong with. For example, I would like to be able to perform basic functions such as calculate the means for all the First scores on Item 3, or all the Second scores for Item 2 etc.

How should I approach this? Thanks!

``````Subject Item    First score     Second score

1      1         0.92         0.58
1      2         1.00         1.00
1      3         1.00         0.69
2      1         0.90         0.58
2      2         0.95         0.90
2      3         1.00         0.92
``````
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You could also use `split()`

``````FirstScore <- c(0.92,1.00,1.00,0.90,0.95,1.00)
Item <- rep(1:3,2)
FirstScoreByItem <- split(FirstScore, as.factor(Item))
``````

To access scores for each item, use

``````FirstScoreByItem[1]
``````

To calculate mean, use

``````mean(FirstScoreByItem[1])
``````
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Seems to be a good solution too. Thanks! –  user2383887 May 15 '13 at 14:46

Suppose you have that data in an object called `x`. If `x` is a data frame (which you can check by running `class(x)`), then the following syntax can be used:

``````vec <- x[rows,col]
``````

to get the vector you are interested in. If "rows" is blank, all rows are returned; if "col" is blank, you get all columns. For example,

``````vec <- x[,"Item"]
vec <- x[x[,"Item"]==1,"First score"]
``````

In the second example, the rows are selected only if they satisfy a particular condition (being equal to 1). Once you have your vector, you can type `vec` to see the vector and verify that it is correct. Then, just take `mean(vec)`.

There are a variety of better ways to do this once you know more about using R. Oh, and if `x` is not a data frame, you can probably create `y <- as.data.frame(x)` and work with that.

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Yay! Thank you! –  user2383887 May 15 '13 at 2:47