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I am doing extensive work with a variety of word lists.

Please consider the following question that I have:

docText={"settlement", "new", "beginnings", "wildwood", "settlement", "book",
"excerpt", "agnes", "leffler", "perry", "my", "mother", "junetta", 
"hally", "leffler", "brought", "my", "brother", "frank", "and", "me", 
"to", "edmonton", "from", "monmouth", "illinois", "mrs", "matilda", 
"groff", "accompanied", "us", "her", "husband", "joseph", "groff", 
"my", "father", "george", "leffler", "and", "my", "uncle", "andrew", 
"henderson", "were", "already", "in", "edmonton", "they", "came", 
"in", "1910", "we", "arrived", "july", "1", "1911", "the", "sun", 
"was", "shining", "when", "we", "arrived", "however", "it", "had", 
"been", "raining", "for", "days", "and", "it", "was", "very", 
"muddy", "especially", "around", "the", "cn", "train"}


Each of these lists are much longer (say 250 words in the searchWords list and docText being about 12,000 words).

Right now, I have the ability to figure out frequency of a given word by doing something like:


But where I am getting hung up is on my quest to generate specific lists. Specifically, the issue of converting a list of words into a list of the frequency in which those words appear. I've tried to do this with Do loops but have hit a wall.

I want to go through docText with searchWords and replace each element of docText with the sheer frequency of its appearance. I.e. since "settlement" appears twice, it would be replaced by 2 in the list, whereas since "my" appears 3 times, it would become 3. The list would then be something like 2,1,1,1,2, and so forth.

I suspect the answer lies somewhere in If[] and Map[]?

This all sounds weird, but I am trying to pre-process a bunch of information for term frequency information…

Addition for Clarity (I hope):

Here is a better example.

searchWords={"0", "1", "2", "3", "4", "5", "6", "7", "8", "9", "a", "A", "about", 
"above", "across", "after", "again", "against", "all", "almost", 
"alone", "along", "already", "also", "although", "always", "among", 
"an", "and", "another", "any", "anyone", "anything", "anywhere", 
"are", "around", "as", "at", "b", "B", "back", "be", "became", 
"because", "become", "becomes", "been", "before", "behind", "being", 
"between", "both", "but", "by", "c", "C", "can", "cannot", "could", 
"d", "D", "do", "done", "down", "during", "e", "E", "each", "either", 
"enough", "even", "ever", "every", "everyone", "everything", 
"everywhere", "f", "F", "few", "find", "first", "for", "four", 
"from", "full", "further", "g", "G", "get", "give", "go", "h", "H", 
"had", "has", "have", "he", "her", "here", "herself", "him", 
"himself", "his", "how", "however", "i", "I", "if", "in", "interest", 
"into", "is", "it", "its", "itself", "j", "J", "k", "K", "keep", "l", 
"L", "last", "least", "less", "m", "M", "made", "many", "may", "me", 
"might", "more", "most", "mostly", "much", "must", "my", "myself", 
"n", "N", "never", "next", "no", "nobody", "noone", "not", "nothing", 
"now", "nowhere", "o", "O", "of", "off", "often", "on", "once", 
"one", "only", "or", "other", "others", "our", "out", "over", "p", 
"P", "part", "per", "perhaps", "put", "q", "Q", "r", "R", "rather", 
"s", "S", "same", "see", "seem", "seemed", "seeming", "seems", 
"several", "she", "should", "show", "side", "since", "so", "some", 
"someone", "something", "somewhere", "still", "such", "t", "T", 
"take", "than", "that", "the", "their", "them", "then", "there", 
"therefore", "these", "they", "this", "those", "though", "three", 
"through", "thus", "to", "together", "too", "toward", "two", "u", 
"U", "under", "until", "up", "upon", "us", "v", "V", "very", "w", 
"W", "was", "we", "well", "were", "what", "when", "where", "whether", 
"which", "while", "who", "whole", "whose", "why", "will", "with", 
"within", "without", "would", "x", "X", "y", "Y", "yet", "you", 
"your", "yours", "z", "Z"}

These are the automatically generated stopwords from WordData[]. So I want to compare these words against docText. Since "settlement" is NOT part of searchWords, then it would appear as 0. But since "my" is part of searchWords, it would pop up as the count (so I could tell how many times the given word appears).

I really do thank you for your help - I'm looking forward to taking some formal courses soon as I'm bumping up against the edge of my ability to really explain what I want to do!

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Do you need to only handle those words that appear in searchWords? What happens with the rest in docWords? –  Szabolcs Jan 23 '12 at 15:21
@Szabolcs If they don't appear, they should appear as a 0. In a previous program, I used an If to convert it to 0 because I would get the null issue. –  programming_historian Jan 23 '12 at 15:24
I still don't understand completely. Can you explain the role of searchWords? –  Szabolcs Jan 23 '12 at 15:27
@Szabolcs Certainly - let me take a second to think, and I'll edit the question above. My apologies for the vagueness... –  programming_historian Jan 23 '12 at 15:28
Hey, Ian, why didn't you post this over on mathematica.se? :) –  rcollyer Jan 23 '12 at 16:11

3 Answers 3

up vote 7 down vote accepted

We can replace everything that doesn't appear in searchWords by 0 in docText as follows:

preprocessedDocText = 
     Dispatch@Append[Thread[searchWords -> searchWords], _ -> 0], {1}]

The we can replace the remaining words by their frequency:

replaceTable = Dispatch[Rule @@@ Tally[docText]];

preprocessedDocText /. replaceTable

Dispatch preprocesses a list of rules (->) and speeds up replacement significantly in subsequent uses.

I have not benchmarked this on large data, but Dispatch should provide a good speedup.

share|improve this answer
I see the confusion, this is my fault.. please give me a minute or two. –  programming_historian Jan 23 '12 at 15:35
This is great and very clean code, BTW. Thanks for explaining what it does! –  programming_historian Jan 23 '12 at 15:43
@ian.milligan see my edit, does it help? –  Szabolcs Jan 23 '12 at 16:01
This is fantastic. It seems extremely quick! In a few minutes, I will try it on my largest corpus to time it out! –  programming_historian Jan 23 '12 at 16:38
@Ian If you have enough memory, it should work :-) –  Szabolcs Jan 23 '12 at 16:53

@Szabolcs gave a fine solution, and I'd probably go the same route myself. Here is a slightly different solution, just for fun:

getFreqs[docText_, searchWords_] :=
  Module[{dwords, dfreqs, inSearchWords, lset},
    SetAttributes[{lset, inSearchWords}, Listable];
    lset[args__] := Set[args];
    {dwords, dfreqs} = Transpose@Tally[docText];
    lset[inSearchWords[searchWords], True];
    inSearchWords[_] = False;

This shows how Listable attribute may be used to replace loops and even Map-ping. We have:

In[120]:= getFreqs[docText,searchWords]
Out[120]= {0,0,0,0,0,0,0,0,0,4,0,0,0,0,0,0,3,1,1,0,1,0,0,0,0,0,0,1,1,0,0,0,0,0,0,0,1,1,2,
share|improve this answer

I set out to solve this in a different way from Szabolcs but I ended up with something rather similar.

Nevertheless, I think it is cleaner. On some data it is faster, on others slower.

docText /. 
  Dispatch[FilterRules[Rule @@@ Tally@docText, searchWords] ~Join~ {_String -> 0}]
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