0
votes
0answers
40 views

NLTK - lexical diversity as feature

in NLTK I'm using a naive bayes classifier and I would like to use non-binary feature as lexical diversity. I know that I need to convert the non-binary features to a set of binary features (x < ...
0
votes
0answers
74 views

writing an accuracy function for naive bayes classifiers in Python

I found a really good example that shows how a naive bayes classifier is written and done in python from this github link. However it is missing a function that enables the testing of accuracy when ...
2
votes
3answers
152 views

Piecemeal training NaiveBayesClassifier (NLTK)

I have a lot of text data and I'd like to perform classification. I get this data incrementally by chunks (e.g. 500 exemplar). I'd like to perform training NaiveBayesClassifier in NLTK with these ...
1
vote
0answers
310 views

Python Naive Bayes Classification of tweets into categories. Methods

I am trying to implement a Naive Bayes algorithm to read tweets from a csv file and classify them into categories i define (for example: tech, science, politics) I want to use NLTK's naive bayes ...
1
vote
0answers
57 views

NLTK and the process of Naive Bayes Classification

This may be a stupid question but I'll give it a shot. Does anyone know the inner working of what the naive bayes command is doing, other than the execution of the algorithm it self? The reason I ...
1
vote
2answers
430 views

Python NLTK not sentiment calculate correct

I do have some positive and negative sentence. I want very simple to use Python NLTK to train a NaiveBayesClassifier for investigate sentiment for other sentence. I try to use this code, but my ...
4
votes
2answers
1k views

Classifying Multinomial Naive Bayes Classifier with Python Example

I am looking for a simple example on how to run a Multinomial Naive Bayes Classifier. I came across this example from StackOverflow: Implementing Bag-of-Words Naive-Bayes classifier in NLTK import ...
1
vote
1answer
242 views

How to change smothing method of Naive Bayes classifier in NLTKļ¼Ÿ

I have trained a spam classifier using NLTK Naive Bayes method. Both the spam set and not spam set have 20,000 instances of words in training. I have noticed that when encountering an unknown ...
3
votes
2answers
1k views

how to use the a 10-fold cross validation with naive bayes classifier and NLTK

I have a small corpus and I want to calculate the accuracy of naive Bayes classifier using 10-fold cross validation, how can do it. thanks
6
votes
1answer
741 views

Semi-supervised Naive Bayes with NLTK [closed]

I have built a semi-supervised version of NLTK's Naive Bayes in Python based on the EM (expectation-maximization algorithm). However, in some iterations of EM I am getting negative log-likelihoods ...
11
votes
3answers
10k views

Implementing Bag-of-Words Naive-Bayes classifier in NLTK

I basically have the same question as this guy.. The example in the NLTK book for the Naive Bayes classifier considers only whether a word occurs in a document as a feature.. it doesn't consider the ...
19
votes
2answers
4k views

Save Naive Bayes Trained Classifier in NLTK

I'm slightly confused in regard to how I save a trained classifier. As in, re-training a classifier each time I want to use it is obviously really bad and slow, how do I save it and the load it again ...
1
vote
1answer
948 views

Nltk naive bayesian classifier memory issue

my first post here! I have problems using the nltk NaiveBayesClassifier. I have a training set of 7000 items. Each training item has a description of 2 or 3 worlds and a code. I would like to use the ...
10
votes
3answers
2k views

Orange vs NLTK for Content Classification in Python [closed]

We need a content classification module. Bayesian classifier seems to be what I am looking for. Should we go for Orange or NLTK ?
20
votes
3answers
6k views

Classifying Documents into Categories

I've got about 300k documents stored in a Postgres database that are tagged with topic categories (there are about 150 categories in total). I have another 150k documents that don't yet have ...