Matching multiple columns on different data frames and getting other column as result

有些话、适合烂在心里 提交于 2019-11-26 20:57:34

问题


I got two big data frames, one (df1) has this structure

   chr    init
1  12  25289552
2   3 180418785
3   3 180434779

The other (df2) has this

    V1    V2     V3
10  1     69094 medium
11  1     69094 medium
12  12 25289552 high
13  1     69095 medium
14  3 180418785 medium
15  3 180434779 low

What I'm trying to do is to add the column V3 of df2 to df1, to get the info of the mutation

   chr    init  Mut
1  12  25289552 high
2   3 180418785 medium
3   3 180434779 low

I'm trying loading both into R and then doing a for loop using match but it doesn't work. Do you know any special way to do this? I am also open to do using awk or something similar


回答1:


Use merge

df1 <- read.table(text='  chr    init
1  12  25289552
2   3 180418785
3   3 180434779', header=TRUE)


df2 <- read.table(text='    V1    V2     V3
10  1     69094 medium
11  1     69094 medium
12  12 25289552 high
13  1     69095 medium
14  3 180418785 medium
15  3 180434779 low', header=TRUE)


merge(df1, df2, by.x='init', by.y='V2') # this works!
       init chr V1     V3
1  25289552  12 12   high
2 180418785   3  3 medium
3 180434779   3  3    low

To get your desired output the way you show it

output <- merge(df1, df2, by.x='init', by.y='V2')[, c(2,1,4)]
colnames(output)[3] <- 'Mut' 
output
  chr      init    Mut
1  12  25289552   high
2   3 180418785 medium
3   3 180434779    low



回答2:


df1 <- read.table(textConnection("   chr    init
 1  12  25289552
 2   3 180418785
 3   3 180434779"), header=T)

df2 <- read.table(textConnection("    V1    V2     V3
 10  1     69094 medium
 11  1     69094 medium
 12  12 25289552 high
 13  1     69095 medium
 14  3 180418785 medium
 15  3 180434779 low"), header=T)

# You have to select the values of df2$V3 such as their corresponding V2 
# are equal to the values of df1$init
df1$Mut <- df2$V3[ df2$V2 %in% df1$init]

df1
  chr      init    Mut
1  12  25289552   high
2   3 180418785 medium
3   3 180434779    low



回答3:


Does

df3 <- merge( df1, df2, by.x = "init", by.y = "V2" )
df3 <- df3[-3]
colnames( df3 )[3] <- "Mut"

give you what you want?




回答4:


@user976991 comment worked for me.

Same idea but need to match on two columns.

My domain context is a product database with multiple entries (potentially price entries). Want to drop the older update_nums and only keep the most recent by product_id.

raw_data <- data.table( product_id = sample(10:13, 20, TRUE), update_num = sample(1:3, 20, TRUE), stuff = rep(1, 20, sep = ''))
max_update_nums <- raw_data[ , max(update_num), by = product_id]
distinct(merge(dt, max_update_nums, by.x = c("product_id", "update_num"), by.y = c("product_id", "V1")))


来源:https://stackoverflow.com/questions/13286881/matching-multiple-columns-on-different-data-frames-and-getting-other-column-as-r

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