# using subset but old variables still left

I am working with a data set, which is basically daily usage data (let's just say variable X and Y) by different cities (about 150 cities). I have created a subset of data for only specific cities, choosing just 3 of the 150 cities.
Then when I do `tapply` by cities, I get means for 3 cities but also get NA for all other 147 cities that was in the data set. I am using the below coding

``````df<-read.csv(...)
df_sub<-subset(df,df\$City==1|df\$City==3|df\$City==19)
X_Breakdown<-tapply(X,df_sub\$City, mean, na.rm=TRUE)
Print(X_Breakdown)
``````

Which gives me:

``````                    City 1                         City 2
15                             NA
City 3                         City 4
12                             NA
City 5                         City 6
NA                             NA
``````

Hope you get the idea. I would like to get a dataset that only contains the 3 cities that I'm interested in.

It seems that the set of variables is encoded in R, is there a way to fix this?

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You can simplify your `subset` usage: `subset(df, City %in% c(1,3,19))`. – Roland Jun 25 '13 at 16:42

`City` is most likely a factor:

``````fac <- factor(1:2,levels=1:3)
tapply(1:2,fac,mean)
# 1  2  3
# 1  2 NA
``````

Use `droplevels`:

``````tapply(1:2,droplevels(fac),mean)
#1 2
#1 2
``````
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Assuming your original data is `df` (not tested)

using `subset` as @Roland:

``````df_sub<-subset(df, City %in% c(1,3,19))
``````

using `ddply` from `plyr package` instead of `tapply`

``````require(plyr)
X_Breakdown<-ddply(df_sub, .(City), summarize, meancity=mean(City))
``````

Note: It would be best if you give us a sample data.

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