I am trying to learn (on Python3) how to do sentiment analysis for NLP and I am using the "UMICH SI650 - Sentiment Classification" Database available on Kaggle: https://www.kaggle.com/c/si650winter11

At the moment I am trying to generate a vocabulary with some loops, here is the code:

    import collections
    import nltk
    import os

    Directory = "../Databases"

    # Read training data and generate vocabulary
    max_length = 0
    freqs = collections.Counter()
    num_recs = 0
    training = open(os.path.join(Directory, "train_sentiment.txt"), 'rb')
    for line in training:
        if not line:
        label, sentence = line.strip().split("\t".encode())
        words = nltk.word_tokenize(sentence.decode("utf-8", "ignore").lower())
        if len(words) > max_length:
            max_length = len(words)
        for word in words:
            freqs[word] += 1
        num_recs += 1

I keep getting this error, that I don't fully understand:

in label, sentence = line.strip().split("\t".encode()) ValueError: not enough values to unpack (expected 2, got 1)

I tried to add

if not line:

like suggested in here: ValueError : not enough values to unpack. why? But it didn't work for my case. How can I solve this error?

Thanks a lot in advance,

| |

Here's a cleaner way to read the dataset from https://www.kaggle.com/c/si650winter11

Firstly, context manager is your friend, use it, http://book.pythontips.com/en/latest/context_managers.html

Secondly, if it's a text file, avoid reading it as a binary, i.e. open(filename, 'r') not open(filename, 'rb'), then there's no need to mess with str/byte and encode/decode.

And now:

from nltk import word_tokenize
from collections import Counter
word_counts = Counter()
with open('training.txt', 'r') as fin:
    for line in fin:
        label, text = line.strip().split('\t')
        # Avoid lowercasing before tokenization.
        # lowercasing after tokenization is much better
        # just in case the tokenizer uses captialization as cues. 
        word_counts.update(map(str.lower, word_tokenize(text)))

| |

The easiest way to resolve this would be to put the unpacking statement into a try/except block. Something like:

    label, sentence = line.strip().split("\t".encode())
except ValueError:
    print(f'Error line: {line}')

My guess is that some of your lines have a label with nothing but whitespace afterwards.

| |
  • The thing I noticed is that by doing so, it prints every single line. Does this mean that every line shows such kind of error? is this "normal"? – iraciv94 Aug 21 '18 at 8:27
  • @iraciv94 Your call to split isn't producing a list longer than a single element. This means the delimiter you're specifying ("\t".encode()) isn't present in your lines. You need to find the correct delimiter. Did you try just using "\t"? – PMende Aug 21 '18 at 14:27

You should check for the case where you have the wrong number of fields:

 if not line:
 fields = line.strip().split("\t".encode())
 if len(fields) != 2:
     # you could print(fields) here to help debug
 label, sentence = fields
| |

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.