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Distinguishing Fact from Fiction: A Benchmark Dataset for Identifying Machine-Generated Scientific Papers in the LLM Era.

E. Mosca, Mohamed Hesham Ibrahim Abdalla, Paolo Basso, Margherita Musumeci, Georg Groh

202314 citationsDOIOpen Access PDF

Abstract

As generative NLP can now produce content nearly indistinguishable from human writing, it becomes difficult to identify genuine research contributions in academic writing and scientific publications. Moreover, information in NLP-generated text can potentially be factually wrong or even entirely fabricated. This study introduces a novel benchmark dataset, containing human-written and machine-generated scientific papers from SCIgen, GPT-2, GPT-3, ChatGPT, and Galactica. After describing the generation and extraction pipelines, we also experiment with four distinct classifiers as a baseline for detecting the authorship of scientific text. A strong focus is put on generalization capabilities and explainability to highlight the strengths and weaknesses of detectors. We believe our work serves as an important step towards creating more robust methods for distinguishing between human-written and machine-generated scientific papers, ultimately ensuring the integrity of scientific literature.

Topics & Concepts

Benchmark (surveying)Computer scienceFocus (optics)GeneralizationGenerative grammarBaseline (sea)Artificial intelligenceStrengths and weaknessesData scienceMachine learningScientific literatureInformation retrievalNatural language processingEpistemologyOceanographyOpticsBiologyGeographyPhilosophyPhysicsPaleontologyGeologyGeodesyTopic ModelingBiomedical Text Mining and Ontologies
Distinguishing Fact from Fiction: A Benchmark Dataset for Identifying Machine-Generated Scientific Papers in the LLM Era. | Litcius