The powerful ability of large language models (LLMs) to understand, follow, and generate complex languages has enabled LLM-generated texts to flood many areas of our daily lives at an incredible rate, with potentially negative impacts and risks on society and academia. As LLMs continue to expand, how can we detect LLM-generated texts to help minimize the threat posed by the misuse of LLMs?
¹ Junchao Wu, ¹ Shu Yang, ¹ Runzhe Zhan, ¹ ² Yulin Yuan, ¹ Derek Fai Wong, ¹ Lidia Sam Chao
¹ University of Macau, ² Peking University
- [2024.09.26] ✨ Our benchmark paper is accepted by NeurIPS 2024 D&B track. We released DetectRL, a benchmark for real-world LLM-generated text detection, provide real utility to researchers on the topic and practitioners looking for consistent evaluation methods. Please refer to arXiv: DetectRL: Benchmarking LLM-Generated Text Detection in Real-World Scenarios and Github Repo DetectRL for details.
- [2023.10.24] Our survey paper is now available on arXiv: A Survey on LLM-generated Text Detection: Necessity, Methods, and Future Directions.
- [2023.05.01] : We began to explore the topic of LLM-generated Text Detection.
A survey and reflection on the latest research breakthroughs in LLM-generated Text detection, including data, detectors, metrics, current issues and future directions. Please refer to our article/paper for more details.
Benchmarks / Datasets | Use | Human | LLMs |
---|---|---|---|
HC3 | train | 58k | 26k |
HC3-Chinese | train | 22k | 17k |
CHEAT | train | 15k | 35k |
GROVER Dataset | train valid test | 5k 2k 8k | 5k 1k 4k |
TweepFake | train | 12k | 12k |
GPT-2 Output Dataset | train | 250k | 250k |
TuringBench | train | 10k | 190k |
MGTBench | train test | 2k 563 | 13k 3k |
ArguGPT | train valid test | 3k 350 350 | 3k 350 350 |
DeepfakeText-Dataset | train valid test | 95k 29k 29k | 236k, 29k 28k |
M4 | train valid test | 122k 500 500 | 122k 500 500 |
GPABenchmark | train | 600k | 600k |
Scientific-articles Benchmark | train test | 8k 4k | 8k 4k |
Tasks | Datasets |
---|---|
Questions Answering | PubMedQA, Children book corpus (CBT), ELI5, TruthfulQA, NarrativeQA |
Scientific writing | Peer Read, arXiv, TOEFL11 |
Story generation | WritingPrompts |
News Article writing | XSum |
Web Text | Wiki40b, WebText, Avax tweets dataset, Climate Change Tweets Ids |
Opinion statements | r/ChangeMyView (CMV) Reddit subcommunity, Yelp , IMDB Dataset |
Comprehension and Reasoning | SciGen, ROCStories Corpora, HellaSwag, SQuAD |
If our research helps you, please kindly cite our paper.
@article{wu2023survey,
title={A Survey on LLM-gernerated Text Detection: Necessity, Methods, and Future Directions},
author={Junchao Wu and Shu Yang and Runzhe Zhan and Yulin Yuan and Derek F. Wong and Lidia S. Chao},
journal = {CoRR},
volume = {abs/2310.14724},
year = {2023},
url = {https://arxiv.org/abs/2310.14724},
eprinttype = {arXiv},
eprint = {2310.14724},
Contributions are welcome! If you have any ideas, suggestions, or bug reports, please open an issue or submit a pull request. We appreciate your contributions to making LLM-generated Text Detection work even better.