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On the Generalization of Training-based ChatGPT Detection Methods

Authors :
Xu, Han
Ren, Jie
He, Pengfei
Zeng, Shenglai
Cui, Yingqian
Liu, Amy
Liu, Hui
Tang, Jiliang
Publication Year :
2023

Abstract

ChatGPT is one of the most popular language models which achieve amazing performance on various natural language tasks. Consequently, there is also an urgent need to detect the texts generated ChatGPT from human written. One of the extensively studied methods trains classification models to distinguish both. However, existing studies also demonstrate that the trained models may suffer from distribution shifts (during test), i.e., they are ineffective to predict the generated texts from unseen language tasks or topics. In this work, we aim to have a comprehensive investigation on these methods' generalization behaviors under distribution shift caused by a wide range of factors, including prompts, text lengths, topics, and language tasks. To achieve this goal, we first collect a new dataset with human and ChatGPT texts, and then we conduct extensive studies on the collected dataset. Our studies unveil insightful findings which provide guidance for developing future methodologies or data collection strategies for ChatGPT detection.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.01307
Document Type :
Working Paper