# Grouping data with sub-features

I have data of some events like :

``````Year,   Date,      killed_min, killed_max, Injured_min, Injured_max
2000    4/3/2000      34          54          31         39
2000    6/4/2000      24          34          11         19
...
``````

I am facing two main problems:

1. Grouping these events by year or applying clustering. There are sub-features in this data like minimum and maximum values. How can I deal with them?
2. There are a lot of missing values in data, which may effect applying clustering on it.

I want to group this data by parameters like people killed or injured year wise and things like that.

-

The `data.table` package is a natural fit for the first problem. (`data.table` is an evolved version of `data.frame` with lot more functionality and speed.)

For the second problem, there is a whole class of functions defined: `na.rm`, `na.action` etc.

Here is a toy example:

``````library(data.table)

set.seed(12345)
dt <- data.table(
Year= sample(1980:2014,1000,replace=T),
Date= sample(1:10000, 1000, replace=T),
killed_min= sample(c(15:150,NA), 1000, replace=T),
killed_max=sample(c(NA,250:1500), 1000, replace=T),
Injured_min=sample(150:250, 1000, replace=T),
Injured_max=sample(500:4000, 1000, replace=T))

dt # Note the missing value in row 996

dt[,list(killed_min=sum(killed_min,na.rm=TRUE),
killed_max=sum(killed_max,na.rm=TRUE)),by=Year]
``````

Hope this helps!!

Alternatively, you can also use `.SDcols` here with `lapply` in `j` as follows:

``````dt[, lapply(.SD, sum, na.rm=TRUE), by=Year,
.SDcols=c("killed_min", "killed_max")]
``````
-
Thank you Shambho – Waheed Khan Apr 27 '14 at 14:04