A Benchmark of Text Classification in PyTorch
We are trying to build a Benchmark for Text Classification including
Many Text Classification DataSet, including Sentiment/Topic Classfication, popular language(e.g. English and Chinese). Meanwhile, a basic word embedding is provided.
Implment many popular and state-of-art Models, especially in deep neural network.
We have done some dataset and models
- IMDB
- SST
- Trec
- FastText
- BasicCNN (KimCNN,MultiLayerCNN, Multi-perspective CNN)
- InceptionCNN
- LSTM (BILSTM, StackLSTM)
- LSTM with Attention (Self Attention / Quantum Attention)
- Hybrids between CNN and RNN (RCNN, C-LSTM)
- Transformer - Attention is all you need
- ConS2S
- Capsule
- Quantum-inspired NN
You should have install these librarys
python3 torch torchtext (optional)
Dataset will be automatically configured in current path, or download manually your data in Dataset, step-by step.
including
Glove embeding Sentiment classfication dataset IMDB
Run in default setting
python main.pyCNN
python main.py --model cnnLSTM
python main.py --model lstm- Data preprossing framework
- Models modules
- Loss, Estimator and hyper-paramter tuning.
- Test modules
- More Dataset
- More models
The core of this repository is models and dataset.
- 
dataloader/: loading all dataset such asIMDB,SST
- 
models/: creating all models such asFastText,LSTM,CNN,Capsule,QuantumCNN,Multi-Head Attention
- 
opts.py: Parameter and config info.
- 
utils.py: tools.
- 
dataHelper: data helper
Welcome your issues and contribution!!!