使用多个值列将宽改成长 [英] Reshaping wide to long with multiple values columns

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问题描述

I need to reshape my wide table into long format but keeping multiple fields for each record, for example:

dw <- read.table(header=T, text='
 sbj f1.avg f1.sd f2.avg f2.sd  blabla
   A   10    6     50     10      bA
   B   12    5     70     11      bB
   C   20    7     20     8       bC
   D   22    8     22     9       bD
 ')

# Now I want to melt this table, keeping both AVG and SD as separate fields for each measurement, to get something like this:

 #    sbj var avg  sd  blabla
 #     A   f1  10  6     bA
 #     A   f2  50  10    bA
 #     B   f1  12  5     bB
 #     B   f2  70  11    bB
 #     C   f1  20  7     bC
 #     C   f2  20  8     bC
 #     D   f1  22  8     bD
 #     D   f2  22  9     bD

I have basic knowledge of using melt and reshape, but it is not obvious for me how to apply such reshaping in my case.

解决方案

reshape does this with the appropriate arguments.

varying lists the columns which exist in the wide format, but are split into multiple rows in the long format. v.names is the long format equivalents. Between the two, a mapping is created.

From ?reshape:

Also, guessing is not attempted if v.names is given explicitly. Notice that the order of variables in varying is like x.1,y.1,x.2,y.2.

Given these varying and v.names arguments, reshape is smart enough to see that I've specified that the index is before the dot here (i.e., order 1.x, 1.y, 2.x, 2.y). Note that the original data has the columns in this order, so we can specify varying=2:5 for this example data, but that is not safe in general.

Given the values of times and v.names, reshape splits the varying columns on a . character (the default sep argument) to create the columns in the output.

times specifies values that are to be used in the created var column, and v.names are pasted onto these values to get column names in the wide format for mapping to the result.

Finally, idvar is specified to be the sbj column, which identifies individual records in the wide format (thanks @thelatemail).

reshape(dw, direction='long', 
        varying=c('f1.avg', 'f1.sd', 'f2.avg', 'f2.sd'), 
        timevar='var',
        times=c('f1', 'f2'),
        v.names=c('avg', 'sd'),
        idvar='sbj')

##      sbj blabla var avg sd
## A.f1   A     bA  f1  10  6
## B.f1   B     bB  f1  12  5
## C.f1   C     bC  f1  20  7
## D.f1   D     bD  f1  22  8
## A.f2   A     bA  f2  50 10
## B.f2   B     bB  f2  70 11
## C.f2   C     bC  f2  20  8
## D.f2   D     bD  f2  22  9

这篇关于使用多个值列将宽改成长的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

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