1

I have a dataframe that looks like the picture showned below in 'input'.

I try to get 1 date per row (see picture below in 'desired output'). In other word, I try to do a kind of 'transpose' for each row.

Let's stipulate that the combination 'LC' and 'Prod' is a unique key.

Input

enter image description here

Desired output:

enter image description here

Info:

In my real dataset, there is some missing values in the quantity field (the colored region area). Thus, I should still be able to compute with missing values.

My try that fails

I have tried the following but it fails...

library("dplyr")
outputTest <- tbl_df(inputTest) %>%
  gather(date, value, c(inputTest$LC, inputTest$Prod))

outputTest

Source:

inputTest <- structure(list(LC = structure(c(1L, 3L, 1L, 2L), .Label = c("berlin", 
                                                            "munchen", "stutgart"), class = "factor"), Prod = structure(c(1L, 
                                                                                                                          2L, 2L, 1L), .Label = c("(STORE1)400096", "STORE2_00154"), class = "factor"), 
               PROD_TYPE = structure(c(1L, 2L, 2L, 1L), .Label = c("STORE1", 
                                                                   "STORE2"), class = "factor"), X2015.6.29 = c(20.08, 8.91, 
                                                                                                                11.38, 15.42), X2015.7.6 = c(20.66, 8.49, 10.91, 15.57), 
               X2015.7.13 = c(19.02, 8.55, 10.89, 14.6), X2015.7.20 = c(18.6, 
                                                                        7.95, 10.58, 14.31)), .Names = c("LC", "Prod", "PROD_TYPE", 
                                                                                                         "2015.6.29", "2015.7.6", "2015.7.13", "2015.7.20"), class = "data.frame", row.names = c(NA, 
                                                                                                                                                                                                     -4L))
  • 2
    You need inputTest %>% tbl_df %>% gather(date, value, matches("^\\d+") ) – akrun Jan 3 '18 at 16:48
  • Hello @akrun thanks for your suggestions but it does not work it says attributes are not identical across measure variables; they will be dropped. And it still gives me an output with all the 4 initial date columns... – S12000 Jan 3 '18 at 16:52
  • Based on your dput, it is working for me. I am using dplyr_0.7.4 and tidyr_0.7.2. Also, if you check my code, I changed from ^X to ^\\d+ after you modified the dput – akrun Jan 3 '18 at 16:53
  • 1
    @akrun I answred to your previous answer. But you updated a answer with the 'matches' function. Now it seems to work... – S12000 Jan 3 '18 at 16:55
3

Using gather, you can specify the columns you do not want to gather with the negation operator '-' (minus sign). The key in your case is the date, the value is the value, and LC, Prod, and PROD_TYPE serve as identifiers.

output <- as.data.frame(inputTest) %>%
        tidyr::gather(key = Date, value = Value, -LC, -Prod, -PROD_TYPE)

This yields:

         LC           Prod PROD_TYPE      Date Value
1    berlin (STORE1)400096    STORE1 2015.6.29 20.08
2  stutgart   STORE2_00154    STORE2 2015.6.29  8.91
3    berlin   STORE2_00154    STORE2 2015.6.29 11.38
4   munchen (STORE1)400096    STORE1 2015.6.29 15.42
5    berlin (STORE1)400096    STORE1  2015.7.6 20.66
6  stutgart   STORE2_00154    STORE2  2015.7.6  8.49
7    berlin   STORE2_00154    STORE2  2015.7.6 10.91
8   munchen (STORE1)400096    STORE1  2015.7.6 15.57
9    berlin (STORE1)400096    STORE1 2015.7.13 19.02
10 stutgart   STORE2_00154    STORE2 2015.7.13  8.55
11   berlin   STORE2_00154    STORE2 2015.7.13 10.89
12  munchen (STORE1)400096    STORE1 2015.7.13 14.60
13   berlin (STORE1)400096    STORE1 2015.7.20 18.60
14 stutgart   STORE2_00154    STORE2 2015.7.20  7.95
15   berlin   STORE2_00154    STORE2 2015.7.20 10.58
16  munchen (STORE1)400096    STORE1 2015.7.20 14.31
  • thanks for your answer. I just want to know... Is the tidyr:: necessary. Isn't it enogh to use gather(.....) ? – S12000 Jan 4 '18 at 8:57
  • 1
    If you load in tidyr using library(tidyr) then the tidyr:: is not necessary. I often include it to avoid naming collisions. – willk Jan 4 '18 at 13:33
  • OK that make sense – S12000 Jan 6 '18 at 13:33
1

It is better to have column names that starts as non-numeric. According to ?gather, the ... specifies for selection of columns by using its name. Here, we are interested in the columns that starts with number i.e. the date columns, so we can use matches and specify a regex to select those columns

library(dplyr)
library(tidyr)
inputTest %>%
       tbl_df %>% 
       gather(date, value, matches("^\\d+") )

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