Code for our ACL'19 accepted paper: Towards Complex Text-to-SQL in Cross-Domain Database with Intermediate Representation
Python3.6
Pytorch 0.4.0
or higher
Install Python dependency via pip install -r requirements.txt
when the environment of Python and Pytorch is setup.
- Download Glove Embedding and put
glove.42B.300d
under./data/
directory - Download Pretrained IRNet and put
IRNet_pretrained.model
under./saved_model/
directory - Download preprocessed train/dev datasets from here and put
train.json
,dev.json
andtables.json
under./data/
directory
You could process the origin Spider Data by your own. Download and put train.json
, dev.json
and
tables.json
under ./data/
directory and follow the instruction on ./preprocess/
Run train.sh
to train IRNet.
sh train.sh [GPU_ID] [SAVE_FOLD]
Run eval.sh
to eval IRNet.
sh eval.sh [GPU_ID] [OUTPUT_FOLD]
You could follow the general evaluation process in Spider Page
Model | Dev Exact Set Match Accuracy |
Test Exact Set Match Accuracy |
---|---|---|
IRNet | 53.2 | 46.7 |
IRNet+BERT(base) | 61.9 | 54.7 |
If you use IRNet, please cite the following work.
@inproceedings{GuoIRNet2019,
author={Jiaqi Guo and Zecheng Zhan and Yan Gao and Yan Xiao and Jian-Guang Lou and Ting Liu and Dongmei Zhang},
title={Towards Complex Text-to-SQL in Cross-Domain Database with Intermediate Representation},
booktitle={Proceeding of the 57th Annual Meeting of the Association for Computational Linguistics (ACL)},
year={2019},
organization={Association for Computational Linguistics}
}
We would like to thank Tao Yu and Bo Pang for running evaluations on our submitted models. We are also grateful to the flexible semantic parser TranX that inspires our works.
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