Awesome
Learning Program
Semantics with Code Representations: An Empirical Study
This repository contains the code and data in our paper, "Learning Program Semantics with Code Representations: An Empirical Study" published in SANER'2022. It includes POJ104Clone and POJ dataset.
- Clone Detection - Pairwise Clone Detection
- Code Classification - Classify Code in their respective label
- Vulnerability Detection - See Devign
Dataset
I had uploaded the dataset to google drive. You can download it here
Train
You can train the model with the sample command:
python3 -u /home/jingkai/projects/cit/train.py --config_path ./ymls/clone_detection/tfidf/naivebayes.yml
Please look into ./ymls/<tasks>/*.yml
for setting the configurations.
Citation
If you find this repository useful in your research, please consider citing it:
@inproceedings{siow2022learning,
title={Learning Program Semantics with Code Representations: An Empirical Study},
author={Jing Kai, Siow and Shangqing, Liu and Xiaofei, Xie and Guozhu, Meng and Yang, Liu},
booktitle={Proceedings of the 29th IEEE International Conference onSoftware Analysis, Evolution and Reengineering},
year={2022}
}