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I'm having the following problem:

I have a set of words for which I need normative frequencies. The list counts 350 words. I have another list, let's call it frequency list, with over 5.5 million different words and their corresponding normative absolute frequencies.

Now, I need the frequencies for these 350 words. I wanted to work with this code in R, but it takes my MacBook about 7 minutes just to load the frequency list.

#Read data
decow <- read.table("decow14ax.freq10.w.tsv", header = TRUE, fill = TRUE)

#Converting wordlist in lower case
decow$token_lowercase <- tolower(as.character(decow$token...)) 

#Read word list
wordlist <- read.csv("wordlist.csv") 

#Set frequency counter to 0
wordlist$norm_frequency = 0  

#Obtaining frequencies for word list from norm database
for (i in 1:nrow(wordlist))                                               
{ 
  for (j in 1:nrow(decow_small)) {
    if (wordlist$word[i]==decow$token_lowercase[j]) {
    wordlist$norm_frequency[i] <- decow_small$f_raw[j]}
  }
}

I noticed that this code is not very efficient. Instead I would like to work with a vector because my guess is that it will prevent me from having to realize this loop 350 times and thus keeping my laptop busy during hours.

Thank you in advance.

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library(tm)
library(janeaustenr)
wordlist<-janeaustenr::emma
wordlist<-sample(wordlist,50)
wordlist<-tokenizers::tokenize_words(wordlist)
wordlist<-unlist(wordlist)
wordlist<-removeWords(wordlist,stopwords('english'))
wordlist<-table(wordlist)[-1]
wordlist

This a sample to show you the table() function provides a frequency.

The library(tm) is to use removeWords() and the [-1] is to remove the "" count from the table.

Hope this helps

  • Thank you Michael. The problem are not the frequencies, they are already accessible. I just don't want to look up 350 words in a file. That's why I wrote that little script. It is just not very efficient and takes probably a day to compute. Also, in the example you provided there is just one list. I have two. A 5.5 million word list with frequencies and a 350 word list. – Fabian Feb 23 '18 at 0:32
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I've come to a solution which will, most likely, be faster than my previous approach:

#Create word vector containing all entries from word list
wordvec1 <- unname(unlist(sapply(wordlist$word, function(z) str_split(tolower(z), " "))))

#Create empty word vector with length of word vector 1
wordvec2 <- rep(0,length(wordvec1))

#Iteration
for (i in 1:length(wordvec1)) {
wordvec2[i] <- wordvec2[i]+sum(decow$f_raw[decow$token_lowercase==wordvec1[i]])
}

Any ideas for improvement are gladly appreciated.

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