# Data manipulation questions [closed]

I want to create two new columns called `prey`, and `preyrow`. `prey` is the next position `y` value, but within same `x` value. And `preyrow` value is the next position `row` value within same `x` value.

Raw table as follows:

``````   x           y row
1  1  0.60697546   1
2  1 -0.68600911   2
3  1 -0.53499454   3
4  1  0.05591587   4
5  2  0.11937963   5
6  2 -0.39951846   6
7  2  0.97430697   7
8  3  0.42852135   8
9  3  0.27695563   9
10 4 -0.29530769  10
``````

I want the output table to look like:

``````   x           y row        prey prerow
1  1  0.60697546   1 -0.68600911      2
2  1 -0.68600911   2 -0.53499454      3
3  1 -0.53499454   3  0.05591587      4
4  1  0.05591587   4          NA     NA
5  2  0.11937963   5 -0.39951846      6
6  2 -0.39951846   6  0.97430697      7
7  2  0.97430697   7          NA     NA
8  3  0.42852135   8  0.27695563      9
9  3  0.27695563   9 -0.29530769     10
10 4 -0.29530769  10          NA     NA
``````
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## closed as not a real question by Tyler Rinker, Jean-François Corbett, Mario, abarnert, Eric J.Jan 18 '13 at 0:33

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

What's the logic to calculate the prey and prerow columns, why some are NA? –  Allen Jan 17 '13 at 5:59

I think this is what you require (using `data.table`):

``````require(data.table)
df <- structure(list(x = c(1L, 1L, 1L, 1L, 2L, 2L, 2L, 3L, 3L, 4L),
y = c(0.60697546, -0.68600911, -0.53499454, 0.05591587, 0.11937963,
-0.39951846, 0.97430697, 0.42852135, 0.27695563, -0.29530769),
row = 1:10), .Names = c("x", "y", "row"), class = "data.frame",
row.names = c("1", "2", "3", "4", "5", "6", "7", "8", "9", "10"))
dt <- data.table(df, key="x")
dt.out <- dt[, .SD[2:(nrow(.SD)+1)], by=x]
setnames(dt.out, c("x", "prey", "preyrow"))
dt.out <- cbind(dt, subset(dt.out, select=-c(x)))

> dt.out

x           y row        prey preyrow
1: 1  0.60697546   1 -0.68600911       2
2: 1 -0.68600911   2 -0.53499454       3
3: 1 -0.53499454   3  0.05591587       4
4: 1  0.05591587   4          NA      NA
5: 2  0.11937963   5 -0.39951846       6
6: 2 -0.39951846   6  0.97430697       7
7: 2  0.97430697   7          NA      NA
8: 3  0.42852135   8  0.27695563       9
9: 3  0.27695563   9          NA      NA
10: 4 -0.29530769  10          NA      NA
``````
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