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Here is my table that needs to be in wide format:

V1      V2        V3        V4
1       A0      numeric   string
1       A1         .         .
1       A2         .         .
1       A3         .         .
1       A4         .         .
1       A5         .         .
1       A6         .         .
1       A7         .         .
2       A0         .         .
2       A1         .         .
...     ...        .         .

I've been trying with something like this:

reshape(variable.name, timevar = "V2", idvar = "V1", direction = "wide")

Which has resulted in the following, which seems to be what I want:

V1   V3.A0     V4.A0    V3.A1     ...
1    Numeric   String   Numeric   ...
2    ...       ...      ...       ...

But I get a warning message:

Warning message:
In reshapeWide(data, idvar = idvar, timevar = timevar, varying = varying,  :
multiple rows match for V2 = blah: first taken

Why is this warning happening and how can I circumvent it? I don't want to just ignore it as I'll have to do the same for several data files. Thanks! Very grateful for the help.

share|improve this question
Assume your full dataset is in a dataframe df with columns V1... V4. Type anyDuplicated(df[,c("V1","V2")]). If the result is > 0, then there are duplicates somewhere, which will cause the error as @hd1 explained. –  jlhoward Dec 27 '13 at 5:59
@jlhoward thanks! definitely >0, but what do I do now? –  user Dec 27 '13 at 6:07
@user, to reshape as such, you need to have at most 1 entry per V1,V2 combination. So the question becomes what do you want to do with these multiple entries. –  Arun Dec 27 '13 at 6:12

2 Answers 2

As a few people have pointed out, you need to decide what you want to do with the extra value. dcast allows you to specify an aggregation function, and is essentially the same as reshape with direction wide but with the ability to specify what to do when you have multiple values. Here is an example where basically every combination has repetitions, and we show the full vector for each as a deparsed string (e.g. 1:2 shows up as c(1, 2)).


# Make up data

df <- data.frame(
  V1=rep(1:3, 14), 
  V2=rep(paste0("A", 0:6), 6), 
  V3=sample(1:100, 42), 
  V4=paste0(sample(letters, 42, replace=TRUE), sample(letters, 42, replace=TRUE))  
# Need to melt V3 and V4 together first because
# dcast does not allow multiple value variables,
# unfortunately, this allso coerces V1 to character

df.melt <- melt(df, id.vars=c("V1", "V2")) 

# Function to handle multiple items for one V1 - V2
# pair.  In this case we just deparse the vectors,
# but if you wanted, you could convert the numerics
# back to integers, or do whatever you want (e.g.
# paste if character, median if numeric).

my_func <- function(x) {
  paste0(deparse(x), collapse="")
# Now convert to wide format with dcast    

  V1 ~ V2 + variable,

This results in the following:

  V1         A0_V3         A0_V4          A1_V3         A1_V4
1  1 c("86", "93") c("yf", "pr")   c("5", "76") c("py", "aj")
2  2 c("53", "71") c("as", "mi")  c("42", "12") c("ho", "la")
3  3 c("69", "16") c("lm", "un") c("66", "100") c("xk", "px")
          A2_V3         A2_V4         A3_V3         A3_V4         A4_V3
1 c("43", "67") c("xh", "bk") c("79", "94") c("ix", "cx") c("51", "50")
2 c("14", "68") c("nq", "sr") c("25", "19") c("dw", "ay") c("28", "35")
3 c("21", "24") c("wu", "il") c("39", "88") c("vz", "yw") c("74", "65")
          A4_V4         A5_V3         A5_V4         A6_V3         A6_V4
1 c("hv", "uw") c("85", "34") c("cn", "ql") c("73", "87") c("px", "vy")
2 c("qb", "dc")  c("2", "72") c("ci", "du") c("81", "49") c("sd", "rx")
3 c("jk", "fv")  c("6", "90") c("sr", "yr") c("62", "97") c("rg", "dv")    

The perfect solution would be a combination of reshape and dcast. Unfortunately dcast (AFAIK) doesn't allow multiple Z columns, whereas reshape does (hence necessitating the melt step and the coersion to character), whereas reshape does not allow an aggregation function (AFAIK).

You can potentially resolve this by running dcast twice, once with V3, once with V4, and then merge the results, or add more intelligence in the aggregation function.

share|improve this answer

As noted above, reshape(...) will generate a warning if the combinations of idvar and timevar (V1 and V2 in your example) are not unique. One way to guarantee uniqueness is to aggregate on these two variables. This also makes explicit @Arun's excellent point that you must decide what to do if there are duplicates. Below are several options.

# sample dataframe in same format as OP
type <- c("numeric","string")
df <- data.frame(V1=rep(1:10,each=8),V2=paste0("A",0:7),
                 V3=type[sample(1:2,80, replace=T)], 
                 V4=type[sample(1:2,80, replace=T)])
dupes <- df[sample(1:80,10),]   # some random duplicates
dupes[,3:4] <- type
df <- rbind(df,dupes)           # append to original df

df.wide <- reshape(df, timevar = "V2", idvar = "V1", direction = "wide")
# many warnings...

func   <- function(x) head(x,1)   # if duplicate, use first value
df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), func)

func   <- function(x) tail(x,1)   # if duplicate, use last value
df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), func)

# if replicated, indicate number of replications
func   <- function(x) {ifelse(length(x)==1,as.character(x), length(x))}
df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), func)

# if duplicated, flag as such
func   <- function(x) {ifelse(length(x)==1,as.character(x),"duplicated")} 
df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), func)

# if duplicates with different V3 or V4, indicate with "both"
func   <- function(x) {ifelse(length(unique(x))==1,as.character(x),"both")} 
df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), func)

df.wide <- reshape(df.new, timevar = "V2", idvar = "V1", direction = "wide")
# no warnings - reshape succeeded.

There are a couple of nuances here that bear explaining. Note the use of as.character(x) in the functions. This is because R treats df$V3 and df$V4 as factors. The use of x would return the factor level (either 1 or 2, since these factors have only 2 levels). The use of as.character(...) forces R to return the factor label ("string" or "numeric").

Finally, note that you could put the function definition directly in the call to aggregate(...), as in :

df.new <- aggregate(df[c("V3","V4")], by=list(V1=df$V1,V2=df$V2), 
                    function(x) {ifelse(length(x)==1,as.character(x),"both")})
share|improve this answer

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