Litcius/Paper detail

The imitation game: Detecting human and AI-generated texts in the era of ChatGPT and BARD

Kadhim Hayawi, Sakib Shahriar, Sujith Samuel Mathew

2024Journal of Information Science47 citationsDOI

Abstract

The potential of artificial intelligence (AI)-based large language models (LLMs) holds considerable promise in revolutionising education, research and practice. However, distinguishing between human-written and AI-generated text has become a significant task. This article presents a comparative study, introducing a novel dataset of human-written and LLM-generated texts in different genres: essays, stories, poetry and Python code. We employ several machine learning models to classify the texts. Results demonstrate the efficacy of these models in discerning between human and AI-generated text, despite the dataset’s limited sample size. However, the task becomes more challenging when classifying GPT-generated text, particularly in story writing. The results indicate that the models exhibit superior performance in binary classification tasks, such as distinguishing human-generated text from a specific LLM, compared with the more complex multiclass tasks that involve discerning among human-generated and multiple LLMs. Our findings provide insightful implications for AI text detection, while our dataset paves the way for future research in this evolving area.

Topics & Concepts

ImitationComputer scienceArtificial intelligenceCognitive scienceArtPsychologySocial psychologyArtificial Intelligence in Healthcare and EducationTopic ModelingCOVID-19 diagnosis using AI