17

Happy Weekends.

I've been trying to replicate the results from this blog post in R. I am looking for a method of transposing the data without using t, preferably using tidyr or reshape. In example below, metadata is obtained by transposing data.

metadata <- data.frame(colnames(data), t(data[1:4, ]) )
colnames(metadata) <- t(metadata[1,])
metadata <- metadata[-1,]
metadata$Multiplier <- as.numeric(metadata$Multiplier)

Though it achieves what I want, I find it little unskillful. Is there any efficient workflow to transpose the data frame?

dput of data

data <- structure(list(Series.Description = c("Unit:", "Multiplier:", 
"Currency:", "Unique Identifier: "), Nominal.Broad.Dollar.Index. = c("Index:_1997_Jan_100", 
"1", NA, "H10/H10/JRXWTFB_N.M"), Nominal.Major.Currencies.Dollar.Index. = c("Index:_1973_Mar_100", 
"1", NA, "H10/H10/JRXWTFN_N.M"), Nominal.Other.Important.Trading.Partners.Dollar.Index. = c("Index:_1997_Jan_100", 
"1", NA, "H10/H10/JRXWTFO_N.M"), AUSTRALIA....SPOT.EXCHANGE.RATE..US..AUSTRALIAN...RECIPROCAL.OF.RXI_N.M.AL. = c("Currency:_Per_AUD", 
"1", "USD", "H10/H10/RXI$US_N.M.AL"), SPOT.EXCHANGE.RATE...EURO.AREA. = c("Currency:_Per_EUR", 
"1", "USD", "H10/H10/RXI$US_N.M.EU"), NEW.ZEALAND....SPOT.EXCHANGE.RATE..US..NZ...RECIPROCAL.OF.RXI_N.M.NZ.. = c("Currency:_Per_NZD", 
"1", "USD", "H10/H10/RXI$US_N.M.NZ"), United.Kingdom....Spot.Exchange.Rate..US..Pound.Sterling.Reciprocal.of.rxi_n.m.uk = c("Currency:_Per_GBP", 
"0.01", "USD", "H10/H10/RXI$US_N.M.UK"), BRAZIL....SPOT.EXCHANGE.RATE..REAIS.US.. = c("Currency:_Per_USD", 
"1", "BRL", "H10/H10/RXI_N.M.BZ"), CANADA....SPOT.EXCHANGE.RATE..CANADIAN...US.. = c("Currency:_Per_USD", 
"1", "CAD", "H10/H10/RXI_N.M.CA"), CHINA....SPOT.EXCHANGE.RATE..YUAN.US.. = c("Currency:_Per_USD", 
"1", "CNY", "H10/H10/RXI_N.M.CH"), DENMARK....SPOT.EXCHANGE.RATE..KRONER.US.. = c("Currency:_Per_USD", 
"1", "DKK", "H10/H10/RXI_N.M.DN"), HONG.KONG....SPOT.EXCHANGE.RATE..HK..US.. = c("Currency:_Per_USD", 
"1", "HKD", "H10/H10/RXI_N.M.HK"), INDIA....SPOT.EXCHANGE.RATE..RUPEES.US. = c("Currency:_Per_USD", 
"1", "INR", "H10/H10/RXI_N.M.IN"), JAPAN....SPOT.EXCHANGE.RATE..YEA.US.. = c("Currency:_Per_USD", 
"1", "JPY", "H10/H10/RXI_N.M.JA"), KOREA....SPOT.EXCHANGE.RATE..WON.US.. = c("Currency:_Per_USD", 
"1", "KRW", "H10/H10/RXI_N.M.KO"), Malaysia...Spot.Exchange.Rate..Ringgit.US.. = c("Currency:_Per_USD", 
"1", "MYR", "H10/H10/RXI_N.M.MA"), MEXICO....SPOT.EXCHANGE.RATE..PESOS.US.. = c("Currency:_Per_USD", 
"1", "MXN", "H10/H10/RXI_N.M.MX"), NORWAY....SPOT.EXCHANGE.RATE..KRONER.US.. = c("Currency:_Per_USD", 
"1", "NOK", "H10/H10/RXI_N.M.NO"), SWEDEN....SPOT.EXCHANGE.RATE..KRONOR.US.. = c("Currency:_Per_USD", 
"1", "SEK", "H10/H10/RXI_N.M.SD"), SOUTH.AFRICA....SPOT.EXCHANGE.RATE..RAND.US.. = c("Currency:_Per_USD", 
"1", "ZAR", "H10/H10/RXI_N.M.SF"), Singapore...SPOT.EXCHANGE.RATE..SINGAPORE...US.. = c("Currency:_Per_USD", 
"1", "SGD", "H10/H10/RXI_N.M.SI"), SRI.LANKA....SPOT.EXCHANGE.RATE..RUPEES.US.. = c("Currency:_Per_USD", 
"1", "LKR", "H10/H10/RXI_N.M.SL"), SWITZERLAND....SPOT.EXCHANGE.RATE..FRANCS.US.. = c("Currency:_Per_USD", 
"1", "CHF", "H10/H10/RXI_N.M.SZ"), TAIWAN....SPOT.EXCHANGE.RATE..NT..US.. = c("Currency:_Per_USD", 
"1", "TWD", "H10/H10/RXI_N.M.TA"), THAILAND....SPOT.EXCHANGE.RATE....THAILAND. = c("Currency:_Per_USD", 
"1", "THB", "H10/H10/RXI_N.M.TH"), VENEZUELA....SPOT.EXCHANGE.RATE..BOLIVARES.US.. = c("Currency:_Per_USD", 
"1", "VEB", "H10/H10/RXI_N.M.VE")), .Names = c("Series.Description", 
"Nominal.Broad.Dollar.Index.", "Nominal.Major.Currencies.Dollar.Index.", 
"Nominal.Other.Important.Trading.Partners.Dollar.Index.", "AUSTRALIA....SPOT.EXCHANGE.RATE..US..AUSTRALIAN...RECIPROCAL.OF.RXI_N.M.AL.", 
"SPOT.EXCHANGE.RATE...EURO.AREA.", "NEW.ZEALAND....SPOT.EXCHANGE.RATE..US..NZ...RECIPROCAL.OF.RXI_N.M.NZ..", 
"United.Kingdom....Spot.Exchange.Rate..US..Pound.Sterling.Reciprocal.of.rxi_n.m.uk", 
"BRAZIL....SPOT.EXCHANGE.RATE..REAIS.US..", "CANADA....SPOT.EXCHANGE.RATE..CANADIAN...US..", 
"CHINA....SPOT.EXCHANGE.RATE..YUAN.US..", "DENMARK....SPOT.EXCHANGE.RATE..KRONER.US..", 
"HONG.KONG....SPOT.EXCHANGE.RATE..HK..US..", "INDIA....SPOT.EXCHANGE.RATE..RUPEES.US.", 
"JAPAN....SPOT.EXCHANGE.RATE..YEA.US..", "KOREA....SPOT.EXCHANGE.RATE..WON.US..", 
"Malaysia...Spot.Exchange.Rate..Ringgit.US..", "MEXICO....SPOT.EXCHANGE.RATE..PESOS.US..", 
"NORWAY....SPOT.EXCHANGE.RATE..KRONER.US..", "SWEDEN....SPOT.EXCHANGE.RATE..KRONOR.US..", 
"SOUTH.AFRICA....SPOT.EXCHANGE.RATE..RAND.US..", "Singapore...SPOT.EXCHANGE.RATE..SINGAPORE...US..", 
"SRI.LANKA....SPOT.EXCHANGE.RATE..RUPEES.US..", "SWITZERLAND....SPOT.EXCHANGE.RATE..FRANCS.US..", 
"TAIWAN....SPOT.EXCHANGE.RATE..NT..US..", "THAILAND....SPOT.EXCHANGE.RATE....THAILAND.", 
"VENEZUELA....SPOT.EXCHANGE.RATE..BOLIVARES.US.."), row.names = c(NA, 
4L), class = "data.frame")
0
41

Using tidyr, you gather all the columns except the first, and then you spread the gathered columns.

Try:

library(dplyr)
library(tidyr)
data %>%
  gather(var, val, 2:ncol(data)) %>%
  spread(Series.Description, val)
8
  • 1
    Absolutely beautiful, @AnandaMahto. Thank you so much. I never get my head around inner workings of tidyr. This is my study material for the weekend. Mar 7 '15 at 16:43
  • 3
    I love this solution. A slightly more generic way is replace spread(Series.Description, val) by spread_(names(data)[1], "val")
    – jbkunst
    Jan 11 '17 at 15:54
  • Very elegant. I'm about 3 months into an intensive R learning experience, having started from pretty much zero knowledge. (And I'm not a developer by training or profession.) Would someone explain to me why gather/spread is a better solution than melt/dcast in this situation? It'd be really helpful in my learning. I know this is a better Q for blog.rstudio, but this question is here, not there!
    – Steve
    Oct 16 '17 at 17:11
  • 2
    @Steve gather/spread is not a better solution than melt/dcast; it's just a different solution that fits in with a different grammar of data manipulation. You would note, for instance, that dcast also allows for aggregation while reshaping, while spread would require already aggregated data. If you're just reshaping the data, then it's down to a matter of preference, I'd say. Oct 17 '17 at 1:55
  • 1
    gather and spread is deprecated. Instead us pivot_longer and pivot_wider.
    – Werner
    Nov 19 '20 at 0:08
2
library(dplyr)
# Omitted data <- structure part ...

Here is something that replicates what's in the main answer, but more generically (e.g., works where Series.Description is not the first column of the result) and using the newer pivot_wider/pivot_longer verbs.

df_transpose <- function(df) {
  
  df %>% 
    tidyr::pivot_longer(-1) %>%
    tidyr::pivot_wider(names_from = 1, values_from = value)

}

df_transpose(data)
#> # A tibble: 26 x 5
#>    name                   `Unit:`    `Multiplier:` `Currency:` `Unique Identifi…
#>    <chr>                  <chr>      <chr>         <chr>       <chr>            
#>  1 Nominal.Broad.Dollar.… Index:_19… 1             <NA>        H10/H10/JRXWTFB_…
#>  2 Nominal.Major.Currenc… Index:_19… 1             <NA>        H10/H10/JRXWTFN_…
#>  3 Nominal.Other.Importa… Index:_19… 1             <NA>        H10/H10/JRXWTFO_…
#>  4 AUSTRALIA....SPOT.EXC… Currency:… 1             USD         H10/H10/RXI$US_N…
#>  5 SPOT.EXCHANGE.RATE...… Currency:… 1             USD         H10/H10/RXI$US_N…
#>  6 NEW.ZEALAND....SPOT.E… Currency:… 1             USD         H10/H10/RXI$US_N…
#>  7 United.Kingdom....Spo… Currency:… 0.01          USD         H10/H10/RXI$US_N…
#>  8 BRAZIL....SPOT.EXCHAN… Currency:… 1             BRL         H10/H10/RXI_N.M.…
#>  9 CANADA....SPOT.EXCHAN… Currency:… 1             CAD         H10/H10/RXI_N.M.…
#> 10 CHINA....SPOT.EXCHANG… Currency:… 1             CNY         H10/H10/RXI_N.M.…
#> # … with 16 more rows

But note that (like the answer above) the name of the first column is lost. The following retains this (as, I guess does the spread_(names(data)[1], "val") approach proposed by @jbkunst above).

df_transpose <- function(df) {
  
  first_name <- colnames(df)[1]
  
  temp <-
    df %>% 
    tidyr::pivot_longer(-1) %>%
    tidyr::pivot_wider(names_from = 1, values_from = value)
  
  colnames(temp)[1] <- first_name
  temp
}

df_transpose(data)
#> # A tibble: 26 x 5
#>    Series.Description       `Unit:`   `Multiplier:` `Currency:` `Unique Identif…
#>    <chr>                    <chr>     <chr>         <chr>       <chr>           
#>  1 Nominal.Broad.Dollar.In… Index:_1… 1             <NA>        H10/H10/JRXWTFB…
#>  2 Nominal.Major.Currencie… Index:_1… 1             <NA>        H10/H10/JRXWTFN…
#>  3 Nominal.Other.Important… Index:_1… 1             <NA>        H10/H10/JRXWTFO…
#>  4 AUSTRALIA....SPOT.EXCHA… Currency… 1             USD         H10/H10/RXI$US_…
#>  5 SPOT.EXCHANGE.RATE...EU… Currency… 1             USD         H10/H10/RXI$US_…
#>  6 NEW.ZEALAND....SPOT.EXC… Currency… 1             USD         H10/H10/RXI$US_…
#>  7 United.Kingdom....Spot.… Currency… 0.01          USD         H10/H10/RXI$US_…
#>  8 BRAZIL....SPOT.EXCHANGE… Currency… 1             BRL         H10/H10/RXI_N.M…
#>  9 CANADA....SPOT.EXCHANGE… Currency… 1             CAD         H10/H10/RXI_N.M…
#> 10 CHINA....SPOT.EXCHANGE.… Currency… 1             CNY         H10/H10/RXI_N.M…
#> # … with 16 more rows

Created on 2021-05-30 by the reprex package (v2.0.0)

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