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i am trying to make an inversed document index, therefore i need to know from all unique words in a collection in which doc they occur and how often.

i have used this answer in order two create a nested dictionary. The provided solution works fine, with one problem though.

First i open the file and make a list of unique words. These unique words i than want to compare with the original file. When there is a match, the frequency counter should be updated and its value be stored in the two dimensional array.

output should eventually look like this:

word1, {doc1 : freq}, {doc2 : freq} <br>
word2, {doc1 : freq}, {doc2 : freq}, {doc3:freq}

Problem is that i cannot update the dictionary variable. When trying to do so i get the error:

  File "scriptV3.py", line 45, in main
    freq = dictionary[keyword][filename] + 1
TypeError: unsupported operand type(s) for +: 'AutoVivification' and 'int'

I think i need to cast in some way the instance of AutoVivification to int....

How to go?

thanks in advance

my code:

#!/usr/bin/env python 
# encoding: utf-8

import sys
import os
import re
import glob
import string
import sets

class AutoVivification(dict):
    """Implementation of perl's autovivification feature."""
    def __getitem__(self, item):
            return dict.__getitem__(self, item)
        except KeyError:
            value = self[item] = type(self)()
            return value

def main():
    pad = 'temp/'
    dictionary  = AutoVivification()
    docID = 0
    for files in glob.glob( os.path.join(pad, '*.html') ):  #for all files in specified folder:
        docID = docID + 1
        filename = "doc_"+str(docID)
        text = open(files, 'r').read()                      #returns content of file as string
        text = extract(text, '<pre>', '</pre>')             #call extract function to extract text from within <pre> tags
        text = text.lower()                                 #all words to lowercase
        exclude = set(string.punctuation)                   #sets list of all punctuation characters
        text = ''.join(char for char in text if char not in exclude) # use created exclude list to remove characters from files
        text = text.split()                                 #creates list (array) from string
        uniques = set(text)                                 #make list unique (is dat handig? we moeten nog tellen)

        for keyword in uniques:                             #For every unique word do   
            for word in text:                               #for every word in doc:
                if (word == keyword and dictionary[keyword][filename] is not None): #if there is an occurence of keyword increment counter 
                    freq = dictionary[keyword][filename]    #here we fail, cannot cast object instance to integer.
                    freq = dictionary[keyword][filename] + 1
                    dictionary[word][filename] = 1

#extract text between substring 1 and 2 
def extract(text, sub1, sub2): 
    return text.split(sub1, 1)[-1].split(sub2, 1)[0]    

if __name__ == '__main__':
share|improve this question

One could use Python's collections.defaultdict instead of creating an AutoVivification class and then instantiating dictionary as an object of that type.

import collections
dictionary = collections.defaultdict(lambda: collections.defaultdict(int))

This will create a dictionary of dictionaries with a default value of 0. When you wish to increment an entry, use:

dictionary[keyword][filename] += 1
share|improve this answer

I agree you should avoid the extra classes, and especially __getitem__. (Small conceptual errors can make __getitem__ or __getattr__ quite painful to debug.)

Python dict seems quite strong enough for what you are doing.

What about straightforward dict.setdefault

    for keyword in uniques:                             #For every unique word do   
        for word in text:                               #for every word in doc:
            if (word == keyword):
                dictionary.setdefault(keyword, {})
                dictionary[keyword].setdefault(filename, 0)
                dictionary[keyword][filename] += 1

Of course this would be where dictionary is just a dict, and not something from collections or a custom class of your own.

Then again, isn't this just:

        for word in text:                               #for every word in doc:
            dictionary.setdefault(word, {})
            dictionary[word].setdefault(filename, 0)
            dictionary[word][filename] += 1

No reason to isolate unique instances, since the dict forces unique keys anyway.

share|improve this answer
if (word == keyword and dictionary[keyword][filename] is not None): 

that is not a correct usage i guess, instead try this:

if (word == keyword and filename in dictionary[keyword]): 

Because, checking the value of a non-existing key raise KeyError. :so You must check if key exists in dictionary...

share|improve this answer

I think you are trying to add 1 to a dictionary entry that doesn't yet exist. Your getitem method is for some reason returning a new instance of the AutoVivification class when a lookup fails. You're therefore trying to add 1 to a new instance of the class.

I think the answer is to update the getitem method so that it sets the counter to 0 if it doesn't yet exist.

class AutoVivification(dict):
    """Implementation of perl's autovivification feature."""
    def __getitem__(self, item):
            return dict.__getitem__(self, item)
        except KeyError:
            self[item] = 0
            return 0

Hope this helps.

share|improve this answer

Not sure why you need nested dicts here. In a typical index scenario you have a forward index mapping

document id -> [word_ids]

and an inverse index mapping

word_id -> [document_ids]

Not sure if this is related here but using two indexes you can perform all kind of queries very efficiently and the implementation is straight forward since you don't need to deal with nested data structures.

share|improve this answer

In the AutoVivification class, you define

value = self[item] = type(self)()
return value

which returns an instance of self, which is an AutoVivification in that context. The error becomes then clear.

Are you sure you want to return an AutoVivification on any missing key query? From the code, I would assume you want to return a normal dictionary with string key and int values.

By the way, maybe you would be interested in the defaultdict class.

share|improve this answer

This AutoVivification class is not the magic you are looking for.

Check out collections.defaultdict from the standard library. Your inner dicts should be defaultdicts that default to integer values, and your outer dicts would then be defaultdicts that default to inner-dict values.

share|improve this answer

It would be better to kick AutoVivification out all together, because it adds nothing.

The following line:

if (word == keyword and dictionary[keyword][filename] is not None):

Doesn't work as expected, because of the way your class works, dictionary[keyword] will always return an instance of AutoVivification, and so will dictionary[keyword][filename].

share|improve this answer
ok thats true, autovivication class is gone, went for defaultdict instead, seems better – Jorrit Feb 22 '11 at 20:40
#!/usr/bin/env python
# encoding: utf-8
from os.path import join
from glob import glob as glob_
from collections import defaultdict, Counter
from string import punctuation

WORKDIR  = 'temp/'
FILETYPE = '*.html'
OUTF     = 'doc_{0}'.format

def extract(text, startTag='<pre>', endTag='</pre>'):
    """Extract text between start tag and end tag

    Start at first char following first occurrence of startTag
      If none, begin at start of text
    End at last char preceding first subsequent occurrence of endTag
      If none, end at end of text
    return text.split(startTag, 1)[-1].split(endTag, 1)[0]    

def main():
    DocWords = defaultdict(dict)

    infnames = glob_(join(WORKDIR, FILETYPE))
    for docId,infname in enumerate(infnames, 1):
        outfname = OUTF(docId)
        with open(infname) as inf:
            text = inf.read().lower()
        words = extract(text).strip(punctuation).split()
        for wd,num in Counter(words).iteritems():
            DocWords[wd][outfname] = num

if __name__ == '__main__':
share|improve this answer

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