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I am trying group some data in a dataframe and perform some calculations on the results via a loop.

Take the following dataframe- "age_wght"

  Year Last_Name First_Name Age Weight
1 2000     Smith       John  20    145
2 2000     Smith       Matt   9     85
3 2005     Smith       John  25    160
4 2000     Jones        Bob  12    100
5 2000     Jones       Mary  18    120
6 2005     Jones       Mary  23    130
7 2000     Jones     Carrie   9     90
8 2005     Jones        Bob  17    210

I am trying to get average ages and weights for each person.

I can do this via tapply: Currently I am calculate this by creating a new key column in the dataframe via:

age_wght$key1 = paste(age_wght$Last_Name, age_wght$First_Name, sep = ".")

  Year Last_Name First_Name Age Weight       key1
1 2000     Smith       John  20    145 Smith.John
2 2000     Smith       Matt   9     85 Smith.Matt
3 2005     Smith       John  25    160 Smith.John
4 2000     Jones        Bob  12    100  Jones.Bob
5 2000     Jones       Mary  18    120 Jones.Mary
6 2005     Jones       Mary  23    130 Jones.Mary

Then using tapply as below:

avg_age <- with(age_wght, tapply(Age, key1, FUN = mean))

avg_wght <-with(age_wght, tapply(Weight, key1, FUN = mean))

age_wght_summary <- data.frame(avg_age, avg_wght)

age_wght_summary

But what I get then is something that looks like this:

             avg_age avg_wght
Jones.Bob       14.5    155.0
Jones.Carrie     9.0     90.0
Jones.Mary      20.5    125.0
Smith.John      22.5    152.5
Smith.Matt       9.0     85.0

Which makes sense as I am placing the tapply on the key1 index, but my desired outcome is 9 to have a table with the headers: Last_Name First_Name avg_age avg_wght

I also tried the dplyr library using group_by but was not able to get it to work.

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  • Use aggregate like - aggregate(cbind(Age,Weight) ~ Last_Name + First_Name, data=dat, FUN=mean) Mar 31, 2016 at 22:22

2 Answers 2

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A dplyr solution

library(dplyr)

age_wght %>%
    group_by(Last_Name, First_Name) %>%
    summarise(avg_age = mean(Age),
                        avg_wght = mean(Weight))

#   Last_Name First_Name avg_age avg_wght
#     (fctr)     (fctr)   (dbl)    (dbl)
# 1     Jones        Bob    14.5    155.0
# 2     Jones     Carrie     9.0     90.0
# 3     Jones       Mary    20.5    125.0
# 4     Smith       John    22.5    152.5
# 5     Smith       Matt     9.0     85.0

A data.table solution

library(data.table)
setDT(age_wght)[, .(avg_age = mean(Age), avg_wght = mean(Weight)), by=.(Last_Name, First_Name)]

#    Last_Name First_Name avg_age avg_wght
# 1:     Smith       John    22.5    152.5
# 2:     Smith       Matt     9.0     85.0
# 3:     Jones        Bob    14.5    155.0
# 4:     Jones       Mary    20.5    125.0
# 5:     Jones     Carrie     9.0     90.0
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  • You can also employ summarize_each like - dat %>% group_by(Last_Name, First_Name) %>% summarize_each(., funs(mean)) Mar 31, 2016 at 22:21
  • @thelatemail - thanks; I always forget about summarize_each...
    – SymbolixAU
    Mar 31, 2016 at 22:46
  • The data.table solution worked perfectly for me, thank you!
    – boydok
    Apr 1, 2016 at 0:08
  • @boydok - you're welcome. Here on StackOverflow you should indicate (press the grey tick) the answer you accept so others know the answer has been accepted.
    – SymbolixAU
    Apr 1, 2016 at 21:17
  • @Symbolix- got it, thank you!
    – boydok
    Apr 3, 2016 at 2:08
0

A base R solution:

nms <- strsplit(rownames(age_wght_summary), split= "\\.")
data.frame(last_name= lapply(nms, "[", 1),
           first_name=lapply(nms, "[", 2),
           avg_age= age_wht_summary$avg_age,
           avg_age= age_wht_summary$avg_wght)

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