Hicham Hammouchi
2025
Proceedings of the Shared Task on Multi-Domain Detection of AI-Generated Text
Salima Lamsiyah
|
Saad Ezzini
|
Abdelkader El Mahdaoui
|
Hamza Alami
|
Abdessamad Benlahbib
|
Samir El Amrani
|
Salmane Chafik
|
Hicham Hammouchi
Proceedings of the Shared Task on Multi-Domain Detection of AI-Generated Text
M-DAIGT: A Shared Task on Multi-Domain Detection of AI-Generated Text
Salima Lamsiyah
|
Saad Ezzini
|
Abdelkader El Mahdaouy
|
Hamza Alami
|
Abdessamad Benlahbib
|
Samir El amrany
|
Salmane Chafik
|
Hicham Hammouchi
Proceedings of the Shared Task on Multi-Domain Detection of AI-Generated Text
The generation of highly fluent text by Large Language Models (LLMs) poses a significant challenge to information integrity and academic research. In this paper, we introduce the Multi-Domain Detection of AI-Generated Text (M-DAIGT) shared task, which focuses on detecting AI-generated text across multiple domains, particularly in news articles and academic writing. M-DAIGT comprises two binary classification subtasks: News Article Detection (NAD) (Subtask 1) and Academic Writing Detection (AWD) (Subtask 2). To support this task, we developed and released a new large-scale benchmark dataset of 30,000 samples, balanced between human-written and AI-generated texts. The AI-generated content was produced using a variety of modern LLMs (e.g., GPT-4, Claude) and diverse prompting strategies. A total of 46 unique teams registered for the shared task, of which four teams submitted final results. All four teams participated in both Subtask 1 and Subtask 2. We describe the methods employed by these participating teams and briefly discuss future directions for M-DAIGT.
Search
Fix author
Co-authors
- Hamza Alami 2
- Abdessamad Benlahbib 2
- Salmane Chafik 2
- Saad Ezzini 2
- Salima Lamsiyah 2
- show all...