I am trying to run this code (Ubuntu 12.04, R 3.1.1)

# Load requisite packages

# Place Enron email snippets into a single vector.
text <- c(
  "To Mr. Ken Lay, I’m writing to urge you to donate the millions of dollars you made from selling Enron stock before the company declared bankruptcy.",
  "while you netted well over a $100 million, many of Enron's employees were financially devastated when the company declared bankruptcy and their retirement plans were wiped out",
  "you sold $101 million worth of Enron stock while aggressively urging the company’s employees to keep buying it",
  "This is a reminder of Enron’s Email retention policy. The Email retention policy provides as follows . . .",
  "Furthermore, it is against policy to store Email outside of your Outlook Mailbox and/or your Public Folders. Please do not copy Email onto floppy disks, zip disks, CDs or the network.",
  "Based on our receipt of various subpoenas, we will be preserving your past and future email. Please be prudent in the circulation of email relating to your work and activities.",
  "We have recognized over $550 million of fair value gains on stocks via our swaps with Raptor.",
  "The Raptor accounting treatment looks questionable. a. Enron booked a $500 million gain from equity derivatives from a related party.",
  "In the third quarter we have a $250 million problem with Raptor 3 if we don’t “enhance” the capital structure of Raptor 3 to commit more ENE shares.")
view <- factor(rep(c("view 1", "view 2", "view 3"), each = 3))
df <- data.frame(text, view, stringsAsFactors = FALSE)

# Prepare mini-Enron corpus
corpus <- Corpus(VectorSource(df$text))
corpus <- tm_map(corpus, tolower)
corpus <- tm_map(corpus, removePunctuation)
corpus <- tm_map(corpus, function(x) removeWords(x, stopwords("english")))
corpus <- tm_map(corpus, stemDocument, language = "english")
corpus # check corpus

# Mini-Enron corpus with 9 text documents

# Compute a term-document matrix that contains occurrance of terms in each email
# Compute distance between pairs of documents and scale the multidimentional semantic space (MDS) onto two dimensions
td.mat <- as.matrix(TermDocumentMatrix(corpus))
dist.mat <- dist(t(as.matrix(td.mat)))
dist.mat  # check distance matrix

# Compute distance between pairs of documents and scale the multidimentional semantic space onto two dimensions
fit <- cmdscale(dist.mat, eig = TRUE, k = 2)
points <- data.frame(x = fit$points[, 1], y = fit$points[, 2])
ggplot(points, aes(x = x, y = y)) + geom_point(data = points, aes(x = x, y = y, color = df$view)) + geom_text(data = points, aes(x = x, y = y - 0.2, label = row.names(df)))

However, when I run it I get this error (in the td.mat <- as.matrix(TermDocumentMatrix(corpus)) line):

Error in UseMethod("meta", x) : 
  no applicable method for 'meta' applied to an object of class "character"
In addition: Warning message:
In mclapply(unname(content(x)), termFreq, control) :
  all scheduled cores encountered errors in user code

I am not sure what to look at - all modules loaded.

  • I couldn't reproduce. Is it possible you don't have the newest versions of the packages (particularly tm)? Jul 16, 2014 at 2:26
  • @DavidRobinson What version of tm did you test on? 0.6 is the latest as far as i know.
    – MrFlick
    Jul 16, 2014 at 3:16
  • @MrFlick: My mistake: I installed it last night with install.packages and received tm_0.5-10, but I now realize that is because I'm using R 3.0.1 (time to upgrade) and the latest tm requires >=3.1.0. Jul 16, 2014 at 12:38

4 Answers 4


The latest version of tm (0.60) made it so you can't use functions with tm_map that operate on simple character values any more. So the problem is your tolower step since that isn't a "canonical" transformation (See getTransformations()). Just replace it with

corpus <- tm_map(corpus, content_transformer(tolower))

The content_transformer function wrapper will convert everything to the correct data type within the corpus. You can use content_transformer with any function that is intended to manipulate character vectors so that it will work in a tm_map pipeline.

  • Thank you, but how do you do this in newer versions? corpus <- tm_map(corpus, stemDocument, language = "english") @MrFlick Jan 21, 2015 at 10:39
  • @VladimirStazhilov That line should work just fine without modification. If that's not the case for you, you should consider opening a new question with a reproducible error.
    – MrFlick
    Jan 21, 2015 at 14:21
  • This works for me even when I use my custom functions that produce plain strings after some processing. I just use texts = tm_map(texts, content_transformer(custom_func)).
    – RTD
    Oct 22, 2020 at 11:50

This is a little old, but just for purposes of later google searches: there's an alternative solution. After corpus <- tm_map(corpus, tolower) you can use corpus <- tm_map(corpus, PlainTextDocument) which beats it right back into the correct data type.

  • You are a legend, Sir !!!. I just saved a day's work just by not ignoring the comments in Stackoverflow once again :) Mar 2, 2018 at 8:44

I had the same issue, and finally came to a solution:

It seems that the meta information within the corpus object gets corrupted after applying transformations on it.

What I did is just creating again the corpus at the very end of the process, after it was completely ready. Having to overcome other issues, I wrote also a loop in order to copy the text back to my dataframe:

a<- list()
for (i in seq_along(corpus)) {
    a[i] <- gettext(corpus[[i]][[1]]) #Do not use $content here!

df$text <- unlist(a) 
corpus <- Corpus(VectorSource(df$text)) #This action restores the corpus.

The order of operations on text matters. You should remove stop words before removing punctuation.

I use the following to prepare text. My text is contained in cleanData$LikeMost.

Sometimes, depending on the source, you need the following first:

textData$LikeMost <- iconv(textData$LikeMost, to = "utf-8")

Some stop words are important, so you can create a revised set.

#create revised stopwords list
newWords <- stopwords("english")
keep <- c("no", "more", "not", "can't", "cannot", "isn't", "aren't", "wasn't",
          "weren't", "hasn't", "haven't", "hadn't", "doesn't", "don't", "didn't", "won't")

newWords <- newWords [! newWords %in% keep]

Then, you can run your tm functions:

like <- Corpus(VectorSource(cleanData$LikeMost))
like <- tm_map(like,PlainTextDocument)
like <- tm_map(like, removeWords, newWords)
like <- tm_map(like, removePunctuation)
like <- tm_map(like, removeNumbers)
like <- tm_map(like, stripWhitespace)

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