I am trying to get started with word2vec and doc2vec using the excellent tutorials, here and here and trying to use the code samples. I only added in a line_clean() method to remove punctuation, stopwords etc.

But I am having trouble with the line_clean() method called in the training iterations. I understand the call to the global method is messing it up, but I am not sure how to get past this problem.

Iteration 1
Traceback (most recent call last):
  File "/Users/santino/Dev/doc2vec_exp/doc2vec_exp_app/doc2vec/untitled.py", line 96, in <module>
  File "/Users/santino/Dev/doc2vec_exp/doc2vec_exp_app/doc2vec/untitled.py", line 91, in train
  File "/Users/santino/Dev/doc2vec_exp/doc2vec_exp_app/doc2vec/untitled.py", line 61, in sentences_perm
    shuffled = list(self.sentences)
AttributeError: 'TaggedLineSentence' object has no attribute 'sentences'

My code is below:

import gensim
from gensim import utils
from gensim.models.doc2vec import TaggedDocument
from gensim.models import Doc2Vec
import os
import random
import numpy
from sklearn.linear_model import LogisticRegression
import logging
import sys
from nltk import RegexpTokenizer
from nltk.corpus import stopwords

tokenizer = RegexpTokenizer(r'\w+')
stopword_set = set(stopwords.words('english'))

def clean_line(line):
    new_str = unicode(line, errors='replace').lower() #encoding issues
    dlist = tokenizer.tokenize(new_str)
    dlist = list(set(dlist).difference(stopword_set))
    new_line = ' '.join(dlist)
    return new_line

class TaggedLineSentence(object):
    def __init__(self, sources):
        self.sources = sources

        flipped = {}

        # make sure that keys are unique
        for key, value in sources.items():
            if value not in flipped:
                flipped[value] = [key]
                raise Exception('Non-unique prefix encountered')

    def __iter__(self):
        for source, prefix in self.sources.items():
            with utils.smart_open(source) as fin:
                for item_no, line in enumerate(fin):
                    yield TaggedDocument(utils.to_unicode(clean_line(line)).split(), [prefix + '_%s' % item_no])

    def to_array(self):
        self.sentences = []
        for source, prefix in self.sources.items():
            with utils.smart_open(source) as fin:
                for item_no, line in enumerate(fin):
                    self.sentences.append(TaggedDocument(utils.to_unicode(clean_line(line)).split(), [prefix + '_%s' % item_no]))

    def sentences_perm(self):
        shuffled = list(self.sentences)

def train():
    #create a list data that stores the content of all text files in order of their names in docLabels
    doc_files = [f for f in os.listdir('./data/') if f.endswith('.csv')]

    sources = {}
    for doc in doc_files:
        doc2 = os.path.join('./data',doc)
        sources[doc2] = doc.replace('.csv','')

    sentences = TaggedLineSentence(sources)

    # #iterator returned over all documents
    model = gensim.models.Doc2Vec(size=300, min_count=2, alpha=0.025, min_alpha=0.025)

    #training of model
    for epoch in range(10):
        print 'iteration '+str(epoch+1)
        model.alpha -= 0.002
        model.min_alpha = model.alpha
    #saving the created model
    print "model saved" 


Those aren't great tutorials for the latest versions of gensim. In particular, it's a bad idea to be calling train() multiple times in a loop with your own manual management of alpha/min_alpha. It's easy to mess up – the wrong things will happen in your code, for example – and offers no benefit for most users. Don't change min_alpha from the default, and call train() exactly once – it'll then do exactly epochs iterations, decaying the learning-rate alpha from its max to min values properly.

Your specific error is because your TaggedLineSentence class doesn't have a sentences property – at least not until after to_array() is called – and yet the code is trying to access that non-existent property.

The whole to_array()/sentences_perm() approach is a bit broken. The reason for using such an iterable class is typically to keep a large dataset out of main-memory, streaming it from disk. But to_array() then just loads everything, caching it inside the class - eliminating the iterable benefit. If you can afford that, because the full dataset easily fits in memory, you can just do...

sentences = list(TaggedLineSentence(sources)

...to iterate-from-disk once, then keep the corpus in an in-memory list.

And shuffling repeatedly during training isn't usually needed. Only if the training data has some existing clumping – like all the examples with certain words/topics are stuck together at the top or bottom of the ordering – is the native ordering likely to cause training problems. And in that case, a single shuffle, before any training, should be enough to remove the clumping. So again assuming your data fits in memory, you can just do...

sentences = random.shuffle(list(TaggedLineSentence(sources)

...once, then you've got a sentences that's fine to pass to Doc2Vec in both build_vocab() and train() (once) below.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.