Text vectorization tool to outperform TFIDF for classification tasks
MIT License
Textvec is a text vectorization tool, with the aim to implement all the "classic" text vectorization NLP methods in Python. The main idea of this project is to show alternatives for an excellent TFIDF method which is highly overused for supervised tasks. All interfaces are similar to scikit-learn so you should be able to test the performance of this supervised methods just with a few changes.
Textvec is compatible with: Python 2.7-3.7.
As you can read in the different articles1,2 almost on every dataset supervised methods outperform unsupervised. But most text classification examples on the internet ignores that fact.
IMDB_bin | RT_bin | Airlines Sentiment_bin | Airlines Sentiment_multiclass | 20news_multiclass | |
---|---|---|---|---|---|
TF | 0.8984 | 0.7571 | 0.9194 | 0.8084 | 0.8206 |
TFIDF | 0.9052 | 0.7717 | 0.9259 | 0.8118 | 0.8575 |
TFPF | 0.8813 | 0.7403 | 0.9212 | NA | NA |
TFRF | 0.8797 | 0.7412 | 0.9194 | NA | NA |
TFICF | 0.8984 | 0.7642 | 0.9199 | 0.8125 | 0.8292 |
TFBINICF | 0.8984 | 0.7571 | 0.9194 | NA | NA |
TFCHI2 | 0.8898 | 0.7398 | 0.9108 | NA | NA |
TFGR | 0.8850 | 0.7065 | 0.8956 | NA | NA |
TFRRF | 0.8879 | 0.7506 | 0.9194 | NA | NA |
TFOR | 0.9092 | 0.7806 | 0.9207 | NA | NA |
Here is a comparison for binary classification on imdb sentiment data set. Labels sorted by accuracy score and the heatmap shows the correlation between different approaches. As you can see some methods are good for to ensemble models or perform features selection.
For more dataset benchmarks (rotten tomatoes, airline sentiment) see Binary classification quality comparison
Usage:
pip install textvec
Source code:
git clone https://github.com/textvec/textvec
cd textvec
pip install .
The usage is similar to scikit-learn:
from sklearn.feature_extraction.text import CountVectorizer
from textvec.vectorizers import TfBinIcfVectorizer
cvec = CountVectorizer().fit(train_data.text)
tficf_vec = TfBinIcfVectorizer(sublinear_tf=True)
tficf_vec.fit(cvec.transform(text), y)
For more detailed examples see Basic example and other notebooks in Examples
Most of the vectorization techniques you can find in articles1,2,3. If you see any method with wrong name or reference please commit!