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Hauptverfasser: Shportko, Andrii, Verbitsky, Inessa
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.14240
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author Shportko, Andrii
Verbitsky, Inessa
author_facet Shportko, Andrii
Verbitsky, Inessa
contents The recent large-scale emergence of LLMs has left an open space for dealing with their consequences, such as plagiarism or the spread of false information on the Internet. Coupling this with the rise of AI detector bypassing tools, reliable machine-generated text detection is in increasingly high demand. We investigate the paraphrasing attack resilience of various machine-generated text detection methods, evaluating three approaches: fine-tuned RoBERTa, Binoculars, and text feature analysis, along with their ensembles using Random Forest classifiers. We discovered that Binoculars-inclusive ensembles yield the strongest results, but they also suffer the most significant losses during attacks. In this paper, we present the dichotomy of performance versus resilience in the world of AI text detection, which complicates the current perception of reliability among state-of-the-art techniques.
format Preprint
id arxiv_https___arxiv_org_abs_2605_14240
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Paraphrasing Attack Resilience of Various AI-Generated Text Detection Methods
Shportko, Andrii
Verbitsky, Inessa
Machine Learning
The recent large-scale emergence of LLMs has left an open space for dealing with their consequences, such as plagiarism or the spread of false information on the Internet. Coupling this with the rise of AI detector bypassing tools, reliable machine-generated text detection is in increasingly high demand. We investigate the paraphrasing attack resilience of various machine-generated text detection methods, evaluating three approaches: fine-tuned RoBERTa, Binoculars, and text feature analysis, along with their ensembles using Random Forest classifiers. We discovered that Binoculars-inclusive ensembles yield the strongest results, but they also suffer the most significant losses during attacks. In this paper, we present the dichotomy of performance versus resilience in the world of AI text detection, which complicates the current perception of reliability among state-of-the-art techniques.
title Paraphrasing Attack Resilience of Various AI-Generated Text Detection Methods
topic Machine Learning
url https://arxiv.org/abs/2605.14240