# R programming - Normalizing a column of data by another entry in 2 other columns

Folks,

From the df as below, I would like to calculate the normalized value @ skew sk0. Sk0 is the central skew for a given group, there is one and only sk0 per group. The number of cases per group is 1 or more.

group=c("g1", "g1", "g1", "g1", "g2", "g3", "g3", "g3", "g4", "g4")
skew=c("sk0", "sk1", "sk2", "sk3", "sk0", "sk2", "sk0", "sk1", "sk1", "sk0")
value=c(0.5, 0.3, 0.8, 1.0, 0.1, 0.4, 0.9, 0.7, 0.6, 0.2)
df = data.frame(group, skew, value)

The desired result would look as below. valueNorm=value/sk0 of the group in question. For example. Rows 1-> 4 are of group g1. The central skew sk0 for group g1 is at row 1 and its value is 0.5. therefore, values for rowa 1-> 4 are going to be divided by 0.5

group skew  value         GroupSk0  valueNorm
1     g1    sk0   0.5           0.5       1.00
2     g1    sk1   0.3           0.5       0.60
3     g1    sk2   0.8           0.5       1.60
4     g1    sk3   1.0           0.5       2.00
5     g2    sk0   0.1           0.1       1.00
6     g3    sk2   0.4           0.9       0.44
7     g3    sk0   0.9           0.9       1.00
8     g3    sk1   0.7           0.9       0.78
9     g4    sk1   0.6           0.2       3.00
10    g4    sk0   0.2           0.2       1.00

A base R solution:

df <- merge(df, df[df\$skew == "sk0", c("group", "value")], by.x = "group", by.y = "group", suffixes = c("", "GroupSK0"))
names(df) <- gsub("valueGroupSK0", "GroupSK0", names(df))
df\$valueNorm <- df\$value/df\$GroupSK0
df
##    group skew value GroupSK0 valueNorm
## 1     g1  sk0   0.5      0.5 1.0000000
## 2     g1  sk1   0.3      0.5 0.6000000
## 3     g1  sk2   0.8      0.5 1.6000000
## 4     g1  sk3   1.0      0.5 2.0000000
## 5     g2  sk0   0.1      0.1 1.0000000
## 6     g3  sk2   0.4      0.9 0.4444444
## 7     g3  sk0   0.9      0.9 1.0000000
## 8     g3  sk1   0.7      0.9 0.7777778
## 9     g4  sk1   0.6      0.2 3.0000000
## 10    g4  sk0   0.2      0.2 1.0000000

A data.table based solution:

DT <- data.table(df)
DT[, GroupSk0 := .SD[skew=='sk0', value], by = group]
DT[, valueNorm := value / GroupSk0]
DT
##     group skew value GroupSk0 valueNorm
##  1:    g1  sk0   0.5      0.5 1.0000000
##  2:    g1  sk1   0.3      0.5 0.6000000
##  3:    g1  sk2   0.8      0.5 1.6000000
##  4:    g1  sk3   1.0      0.5 2.0000000
##  5:    g2  sk0   0.1      0.1 1.0000000
##  6:    g3  sk2   0.4      0.9 0.4444444
##  7:    g3  sk0   0.9      0.9 1.0000000
##  8:    g3  sk1   0.7      0.9 0.7777778
##  9:    g4  sk1   0.6      0.2 3.0000000
## 10:    g4  sk0   0.2      0.2 1.0000000
• Thank you so much for your prompt answer. I have tried both solutions and both work as charm. I'm going with the data.table approach as it is more elegant and much easier to read/understand. – Riad Nov 14 '13 at 16:10