# How to calculate the ratio of data points, i.e., combining them based on some criterion?

(Unfortunately, I am missing basic vocabulary to formulate my question. So, please correct me where more precise terms are useful.)

I use R to do very basic statistical analysis for benchmark results of virtual machines, and I often want to normalize my data based on some criterion.

Currently my problem is that I would like something like the following to work:

``````normalized_data <- ddply(bench, ~ Benchmark + Configuration + Approach,
transform,
Ratio = Time / Time[Approach == "appr2"])
``````

So, what I actually want is to calculate the speed-up between corresponding pairs of measurements.

`bench` is a data frame with the columns Time, Benchmark, Configuration and Approach and contains 100 measurements for all possible combinations of Benchmark, Configuration and Approach. Now I got exactly two approaches and want the speed-up of "appr2"/"appr1". Thus, just looking at one specific benchmark, and one specific configuration, I have 100 measurements for "appr1" and 100 of "appr2" in my data frame. However, R gives me the following error resulting from the give query:

``````Error in data.frame(list(Time = c(405.73, 342.616, 404.484, 328.742, 403.384,  :
arguments imply differing number of rows: 100, 0
``````

Ideally, the result of my query would result in a new data frame with the three columns SpeedUp, Benchmark, Configuration. Based on that I would then be able to calculate means, confidence intervals and so on.

But at the moment, the basic problem is how to express such a normalization. For another data set I was able to calculate a normalized value like this `Time.norm = Time / Time[NumCores == min(NumCores)]` but looks like that worked just by chance, at least I do not understand the difference.

Any hints are appreciate. (Especially the right terminology to search for solutions for such problems.)

Edit: Thanks to Chase's hint, here a minimal data set, which should be structurally identical to what I got, and it exhibits the same behavior with respect to the query above.

``````bench <- structure(list(Time = c(399.04, 388.069, 401.072, 361.646),
Benchmark = structure(c(1L, 1L, 1L, 1L), .Label = c("Fibonacci"), class = "factor"),
Configuration = structure(c(1L, 1L, 1L, 1L), .Label = c("native"), class = "factor"),
Approach = structure(c(1L, 1L, 2L, 2L), .Label = c("appr1", "appr2"), class = "factor")),
.Names = c("Time", "Benchmark", "Configuration", "Approach"),
row.names = c(NA, 4L), class = "data.frame")
``````
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Hi smarr - take a look at this question for tips on formulating a good technical question: stackoverflow.com/questions/5963269/…. Particularly, look at adding `dput(yourData)` –  Chase Aug 28 '11 at 16:32
Thanks! I added a data set above. –  smarr Aug 28 '11 at 16:46
Arg, beginners mistake! –  smarr Aug 28 '11 at 17:21
Looks like I still miss quite a number of basic concepts in R. The solution lies in the used formula: `~ Benchmark + Configuration + Approach` groups the data by according to all three dimensions, and that is not what I actually need. The resulting data set did really just contain data of "appr1", and there was noting left to correlate to. So, changing the forumla to `~ Benchmark + Configuration` results in a data set that contains "appr1" and "appr2" data. And then, it works as intended :) Thanks for listening. –  smarr Aug 28 '11 at 17:27
Glad you got it figured out. Feel free to add your comment above as an answer and accept it so others know you found a solution. –  Chase Aug 28 '11 at 17:52

If you try to do this within `ddply` in the manner I naively attempted at first, you find that you are only working within individual categories:

``````  ddply(bench, ~ Benchmark + Configuration + Approach,
transform,
Ratio = Time / mean(Time[Approach == "appr2"]) )
#------------
Time Benchmark Configuration Approach     Ratio
1 399.040 Fibonacci        native    appr1       NaN
2 388.069 Fibonacci        native    appr1       NaN
3 401.072 Fibonacci        native    appr2 1.0516915
4 361.646 Fibonacci        native    appr2 0.9483085
``````

Obviously not what was hoped for. You can calculate a mean value outside of bench to be the normalization factor:

`````` meanappr2 <- mean(subset(bench, Approach == "appr2", Time))
ddply(bench, ~ Benchmark + Configuration + Approach,
transform,
Ratio = Time / meanappr2 )
#--------------
Time Benchmark Configuration Approach     Ratio
1 399.040 Fibonacci        native    appr1 1.0463631
2 388.069 Fibonacci        native    appr1 1.0175950
3 401.072 Fibonacci        native    appr2 1.0516915
4 361.646 Fibonacci        native    appr2 0.9483085
``````

If on the other hand you didn't want a line by line normalisation but rather a cross group comparison, use the "summarise" option within in the `*ply` operations:

``````  ddply(bench, ~ Benchmark + Configuration + Approach,
summarise,
Ratio = mean(Time) / meanappr2 )
#-----------
Benchmark Configuration Approach    Ratio
1 Fibonacci        native    appr1 1.031979
2 Fibonacci        native    appr2 1.000000
``````
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Sorry, I was not clear enough about what I intended. I found a solution to my problem, and posted it as an answer. Still, many thanks! –  smarr Aug 29 '11 at 7:14

Looks like I still miss quite a number of basic concepts in R.

The solution lies in the used formula: `~ Benchmark + Configuration + Approach` groups the data according to all three dimensions, and that is not what I actually need. The resulting data set did really just contain data of "appr1", and there was noting left to correlate to.

So, changing the forumla to `~ Benchmark + Configuration` results in a data set that contains "appr1" and "appr2" data for all Time measurements. And then, it works as intended :)

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