# Finding mean values of objects with different values in column

I'm new to R (having used MATLAB before) and have tried for a long time to search for a solution for this but I can't find one for this (seemingly) quite easy problem. Here is the problem;

In the first column I have my time values over a couple of days (simplified in this example) and in the second column I have the values over which I want to average. What I want to do is to take all the values that belong to the same time and average over that. I am doing this over rather large data sets so doing this automatically would help greatly.

Let's set-up:

``````time = rep( c("00:00", "00:10", "00:20", "00:30", "00:40", "00:50", "01:00", "01:10"), 5)
values = c(sample(1:100, 40))
data = cbind(time, values)
``````

So now I have my matrix with time & values in it and I would like to group all the values that have (eg) "00:00" and calculate the mean of this. After some searching I found out the `aggregate()` function could help nicely, so I did the following;

``````aggregate(as.numeric(data[,-1]), by = list(sort(data[,1])), mean)
``````

which has output

``````    Group.1    x
1   00:00 77.2
2   00:10 59.2
3   00:20 51.0
4   00:30 49.4
5   00:40 51.4
6   00:50 33.4
7   01:00 33.8
8   01:10 51.6
``````

So it seems to work nicely but when I calculate it by hand the mean of the values are all different. (For instance; for 00:00: (56+3+91+71+8)/5 = 45.8 and NOT 77.2), can anyone tell me what I am doing wrong?

• You sorted the index variable you passed via `by = ...` which scrambled the associations between times and values. – joran Nov 28 '12 at 14:25
• Thanks for the suggestion? What do you propose is the proper method? – Tim.Lucas Nov 28 '12 at 15:23
• Um...don't use `sort`? – joran Nov 28 '12 at 15:37
• Thanks! First question mark wasn't intentional, was in a bit of a hurry. – Tim.Lucas Nov 29 '12 at 8:03

@joran's suggestion (don't scramble the `by` variable by sorting it) seems to work:

``````set.seed(101) ## for reproducibility
time = rep( c("00:00", "00:10", "00:20", "00:30",
"00:40", "00:50", "01:00", "01:10"), 5)
values = c(sample(1:100, 40))
data = cbind(time, values)
aggregate(as.numeric(data[,2]),by=list(factor(data[,1])), mean)
##   Group.1    x
## 1   00:00 50.0
## 2   00:10 29.0
## 3   00:20 45.0
## 4   00:30 60.2
## 5   00:40 48.8
## 6   00:50 57.2
## 7   01:00 37.2
## 8   01:10 56.2
##
``````

Check the first group:

``````mean(as.numeric(data[data[,1]=="00:00","values"]))
## [1] 50
``````

As a further recommendation, I would strongly suggest using `data.frame` rather than `cbind()`ing your columns -- this allows you to put times and numeric values together without getting them all coerced to the same type.

(It would be nice to use a built-in times object too: I tried `times` from the `chron` package but didn't quite get the hang of it)

``````dat <- data.frame(time,values)  ## avoid using "data" as a variable name
aggregate(values~time, data=dat, mean)
``````

By the way, there are a lot of posts on Stack Overflow comparing various solutions for aggregation (`by`, `aggregate`, `ddply` and friends from the `plyr` package, and the `data.table` package): e.g. Elegant way to solve ddply task with aggregate (hoping for better performance) , R: speeding up "group by" operations , How to speed up summarise and ddply? ...

• Thanks so much! I guess I wasn't sure what to look for, those other questions would have helped too! Thanks for the suggestions, will apply this! – Tim.Lucas Nov 29 '12 at 8:03

`by` is your friend:

``````by(as.numeric(data[,"values"]),data[,"time"],mean)
``````
• This seems to work nicely too, thanks for this! – Tim.Lucas Nov 29 '12 at 8:04

I'd suggest setting the index variable (time) as a factor using `as.factor()`.

Then use that as an index ie: `aggregate(data\$values,by=list(data\$time.factor),FUN=mean)`

• Time doesn't have to be a factor for this to work. Also, see the aggregate formula notation. – John Nov 28 '12 at 14:41
• I tried that but it still doesn't give the right awnser, it is closer though `aggregate(as.numeric(data[,2]),by=list(factor(data[,1])), mean)` – Tim.Lucas Nov 28 '12 at 15:23