This is the implementation of Kim's Convolutional Neural Networks for Sentence Classification paper in PyTorch.
- Kim's implementation of the model in Theano: https://github.com/yoonkim/CNN_sentence
- Denny Britz has an implementation in Tensorflow: https://github.com/dennybritz/cnn-text-classification-tf
- Alexander Rakhlin's implementation in Keras; https://github.com/alexander-rakhlin/CNN-for-Sentence-Classification-in-Keras
- python 3
- pytorch > 0.1
- torchtext > 0.1
- numpy
I just tried two dataset, MR and SST.
Dataset | Class Size | Best Result | Kim's Paper Result |
---|---|---|---|
MR | 2 | 77.5%(CNN-rand-static) | 76.1%(CNN-rand-nostatic) |
SST | 5 | 37.2%(CNN-rand-static) | 45.0%(CNN-rand-nostatic) |
I haven't adjusted the hyper-parameters for SST seriously.
./main.py -h
or
python3 main.py -h
You will get:
CNN text classificer
optional arguments:
-h, --help show this help message and exit
-batch-size N batch size for training [default: 50]
-lr LR initial learning rate [default: 0.01]
-epochs N number of epochs for train [default: 10]
-dropout the probability for dropout [default: 0.5]
-max_norm MAX_NORM l2 constraint of parameters
-cpu disable the gpu
-device DEVICE device to use for iterate data
-embed-dim EMBED_DIM
-static fix the embedding
-kernel-sizes KERNEL_SIZES
Comma-separated kernel size to use for convolution
-kernel-num KERNEL_NUM
number of each kind of kernel
-class-num CLASS_NUM number of class
-shuffle shuffle the data every epoch
-num-workers NUM_WORKERS
how many subprocesses to use for data loading
[default: 0]
-log-interval LOG_INTERVAL
how many batches to wait before logging training
status
-test-interval TEST_INTERVAL
how many epochs to wait before testing
-save-interval SAVE_INTERVAL
how many epochs to wait before saving
-predict PREDICT predict the sentence given
-snapshot SNAPSHOT filename of model snapshot [default: None]
-save-dir SAVE_DIR where to save the checkpoint
./main.py
You will get:
Batch[100] - loss: 0.655424 acc: 59.3750%
Evaluation - loss: 0.672396 acc: 57.6923%(615/1066)
If you has construct you test set, you make testing like:
/main.py -test -snapshot="./snapshot/2017-02-11_15-50-53/snapshot_steps1500.pt
The snapshot option means where your model load from. If you don't assign it, the model will start from scratch.
-
Example1
./main.py -predict="Hello my dear , I love you so much ." \ -snapshot="./snapshot/2017-02-11_15-50-53/snapshot_steps1500.pt"
You will get:
Loading model from [./snapshot/2017-02-11_15-50-53/snapshot_steps1500.pt]... [Text] Hello my dear , I love you so much . [Label] positive
-
Example2
./main.py -predict="You just make me so sad and I have to leave you ."\ -snapshot="./snapshot/2017-02-11_15-50-53/snapshot_steps1500.pt"
You will get:
Loading model from [./snapshot/2017-02-11_15-50-53/snapshot_steps1500.pt]... [Text] You just make me so sad and I have to leave you . [Label] negative
Your text must be separated by space, even punctuation.And, your text should longer then the max kernel size.