This is the code of the ACL 2020 paper: Few-shot Slot Tagging with Collapsed Dependency Transfer and Label-enhanced Task-adaptive Projection Network.
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A new and powerfull platform is now availiable for general few-shot learning problems!!
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It fully support current experiments with better interface and flexibility~ (E.g. supoort newer huggingface/transformers)
Try it at: https://github.com/AtmaHou/MetaDialog
python >= 3.6
pytorch >= 0.4.1
pytorch_pretrained_bert >= 0.6.1
allennlp >= 0.8.2
pytorch-nlp
- Download the pytorch bert model, or convert tensorflow param by yourself as follow:
export BERT_BASE_DIR=/users4/ythou/Projects/Resources/bert-base-uncased/uncased_L-12_H-768_A-12/
pytorch_pretrained_bert convert_tf_checkpoint_to_pytorch
$BERT_BASE_DIR/bert_model.ckpt
$BERT_BASE_DIR/bert_config.json
$BERT_BASE_DIR/pytorch_model.bin- Set BERT path in the file
./scripts/run_L-Tapnet+CDT.shto your setting:
bert_base_uncased=/your_dir/uncased_L-12_H-768_A-12/
bert_base_uncased_vocab=/your_dir/uncased_L-12_H-768_A-12/vocab.txt- Download few-shot data at my homepage or click here: download
Tips: The numbers in file name denote cross-evaluation id, you can run a complete experiment by only using data of id=1.
- Set test, train, dev data file path in
./scripts/run_L-Tapnet+CDT.shto your setting.
For simplicity, your only need to set the root path for data as follow:
base_data_dir=/your_dir/ACL2020data/- Build a folder to collect running log
mkdir result- Execute cross-evaluation script with two params: -[gpu id] -[dataset name]
source ./scripts/run_L-Tapnet+CDT.sh 0 snipssource ./scripts/run_L-Tapnet+CDT.sh 0 nerTo run 5-shots experiments, use
./scripts/run_L-Tapnet+CDT_5.sh
We also provide scripts of four model settings as follows:
- Tap-Net
- Tap-Net + CDT
- L-WPZ + CDT
- L-Tap-Net + CDT
You can find their corresponding scripts in
./scripts/with the same usage as above.
- the project contains three main parts:
models: the neural network architecturesscripts: running scripts for cross evaluationutils: auxiliary or tool function filesmain.py: the entry file of the whole project
- Main Model
- Sequence Labeler (
few_shot_seq_labeler.py): a framework that integrates modules below to perform sequence labeling.
- Sequence Labeler (
- Modules
- Embedder Module (
context_embedder_base.py): modules that provide embeddings. - Emission Module (
emission_scorer_base.py): modules that compute emission scores. - Transition Module (
transition_scorer.py): modules that compute transition scores. - Similarity Module (
similarity_scorer_base.py): modules that compute similarities for metric learning based emission scorer. - Output Module (
seq_labeler.py,conditional_random_field.py): output layer with normal mlp or crf. - Scale Module (
scale_controller.py): a toolkit for re-scale and normalize logits.
- Embedder Module (
utilscontains assistance modules for:- data processing (
data_helper.py,preprocessor.py), - constructing model architecture (
model_helper.py), - controlling training process (
trainer.py), - controlling testing process (
tester.py), - controllable parameters definition (
opt.py), - device definition (
device_helper) - config (
config.py).
- data processing (
Thanks Wangpeiyi9979 for pointing out the problem of TapNet implementation (issue), which is caused by port differences of cupy.linalg.svd and svd() in pytorch.
The corrected codes are included in new branch named fix_TapNet_svd_issue, because we found correction of TapNet will slightly degrade performance (still the best).
Apache License 2.0