I've looked at the other similar questions that have been posted here (like this), but the problem persists.

I have a dataframe of textual data, which I need to stem. So I'm converting it into a corpus, stemming it, then completing the words from the stems, and then trying to get a dataframe of text as output.

myCorpus <- Corpus(VectorSource(textDf$text))
myCorpus <- tm_map(myCorpus, removeWords, stopwords('english'))
myCorpus <- tm_map(myCorpus, content_transformer(tolower))
myCorpus <- tm_map(myCorpus, removePunctuation)
dictCorpus <- myCorpus
myCorpus <- tm_map(myCorpus, stemDocument)
myCorpus <- tm_map(myCorpus, stemCompletion, dictionary=dictCorpus)

Now I'm trying to get a dataframe back from this corpus so I've tried these following commands.

dataframe<-data.frame(text=unlist(sapply(myCorpus, '[', "content")), stringsAsFactors=F)


dataframe<-data.frame(text=unlist(sapply(myCorpus,[)), stringsAsFactors=F)

and also

dataframe <- 
    data.frame(id=sapply(corpus, meta, "id"),
               text=unlist(lapply(sapply(corpus, '[', "content"),paste,collapse="\n")),

from this link

All of them produce the following error:

Error in UseMethod("meta", x) : 
  no applicable method for 'meta' applied to an object of class "character"

Any help would be greatly appreciated.

  • 1
    Can you give some example data? – bramtayl Oct 18 '15 at 1:59
  • textDf$text is a character vector full of tweets. – wrahool Oct 18 '15 at 2:02

This ought to do it:

data.frame(text = sapply(myCorpus, as.character), stringsAsFactors = FALSE)

edited with working solution, using crude as example

The problem here is that you cannot apply stemCompletion as a transformation.

## [1] "removeNumbers"     "removePunctuation" "removeWords"       "stemDocument"      "stripWhitespace"  

does not include stemCompletion, which takes a vector of stemmed tokens as input.

So this should do it: first you extract the transformed texts and tokenise them, then complete the stems, then paste back together. Here I have illustrated the solution using the built-in crude corpus.

myCorpus <- crude 
myCorpus <- tm_map(myCorpus, removeWords, stopwords('english'))
myCorpus <- tm_map(myCorpus, content_transformer(tolower))
myCorpus <- tm_map(myCorpus, removePunctuation)
dictCorpus <- myCorpus
myCorpus <- tm_map(myCorpus, stemDocument)
# tokenize the corpus
myCorpusTokenized <- lapply(myCorpus, scan_tokenizer)
# stem complete each token vector
myTokensStemCompleted <- lapply(myCorpusTokenized, stemCompletion, dictCorpus)
# concatenate tokens by document, create data frame
myDf <- data.frame(text = sapply(myTokensStemCompleted, paste, collapse = " "), stringsAsFactors = FALSE)
  • 1
    Thanks! That worked. – wrahool Oct 18 '15 at 3:31

I've redone some of your earlier code with magrittr, just cause.


dictCorpus = 
  c("I love my cat", "Cullen bae is bae", "4ever alone :(") %>%
  VectorSource %>%
  Corpus %>%
  tm_map(removeWords, stopwords('english')) %>%
  tm_map(content_transformer(tolower)) %>%

myCorpus = 
  dictCorpus %>%
  tm_map(stemDocument) %>%
  tm_map(stemCompletion, dictionary=dictCorpus)

data = 
  data_frame(object = 
               myCorpus %>% 
               `class<-`("list") %>% 
               use_series(content) ) %>%
  rowwise %>%
  mutate(content = 
           object %>%
           names %>%
           extract(1) )

Another option:

df <- as.data.frame(as.matrix(myCorpus))

You have to convert the corpus into a plaintextdocument.

myCorpus <- tm_map(myCorpus, PlainTextDocument)

With regard of the Corpus conversion to data frame i've got similar issue: I have an input Excel document with 2 columns filled with data:

looking like this:

ID Desc
1 text1
2 text2
3 text3

I want to 1) copy text from Desc column to the new DescCleaned column 2) apply all kind of tm tranformations to all cells in that column 3) export back to excel all 3 columns: ID, Desc and DescCleaned

Notice: cells from DescCleaned should correspond to cells from Desc

I want DescCleaned to contained corresponding Desc column text but cleaned with tm function

i did following and this was wrong:

md <- read_excel(file.choose()) //here i load the input Excel file with data containing columns ID, Desc

corp<-Corpus(VectorSource(md$Desc )) // convert into Corpus corp<-tm_map(corp,tolower) // start transformations

....// here i carry on with my text cleaning

md$DescCleaned <-data.frame(text=sapply(corp,identity),stringAsFactors=F) // after applying this i see in R studio already converted data with added new column DescCleaned.text looking like this

ID Desc DescCleaned.text 1 text1 text1 cleaned 2 text2 text2 cleaned 3 text3 text3 cleaned

and now i am lost as i want to export all of this to Excel with

write.xlsx2(x=md,file="output.xlsx") command but to do this i probabily must convert DescCleaned.text column to the data frame before using write. Otherwise in the output file i receinve that third Column with filled only first cell with all transformed data - it has been not populated properely down to corresponding rows ... can you help?

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