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Fooling MOSS Detection with Pretrained Language Models

Stella Biderman, Edward Raff

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management29 citationsDOI

Abstract

As artificial intelligence (AI) technologies become increasingly powerful and prominent in society, their misuse is a growing concern. In educational settings, AI technologies could be used by students to cheat on assignments and exams. In this paper we explore whether transformers can be used to solve introductory level programming assignments while bypassing commonly used AI tools to detect similarities between pieces of software. We find that a student using GPT-J [60] can complete introductory level programming assignments without triggering suspicion from MOSS [2], a widely used software similarity and plagiarism detection tool. This holds despite the fact that GPT-J was not trained on the problems in question and is not provided with any examples to work from. We further find that the code written by GPT-J is diverse in structure, lacking any particular tells that future plagiarism detection techniques may use to try to identify algorithmically generated code. We conclude with a discussion of the ethical and educational implications of large language models and directions for future research.

Topics & Concepts

Computer sciencePlagiarism detectionSoftwareSource codeTransformerSoftware engineeringArtificial intelligenceData scienceProgramming languageEngineeringElectrical engineeringVoltageSoftware Engineering ResearchTopic ModelingAdversarial Robustness in Machine Learning
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