cs.AI updates on arXiv.org 09月03日
LLM文本检测:现状与挑战
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本文探讨了大型语言模型(LLMs)在文本生成领域的应用及其在科学通信中使用的伦理问题。分析了现有LLM文本检测器的性能,并提出了开发专注于LLM辅助写作检测的专用检测器的必要性。

arXiv:2401.16807v3 Announce Type: replace-cross Abstract: Large Language Models (LLMs), exemplified by ChatGPT, have significantly reshaped text generation, particularly in the realm of writing assistance. While ethical considerations underscore the importance of transparently acknowledging LLM use, especially in scientific communication, genuine acknowledgment remains infrequent. A potential avenue to encourage accurate acknowledging of LLM-assisted writing involves employing automated detectors. Our evaluation of four cutting-edge LLM-generated text detectors reveals their suboptimal performance compared to a simple ad-hoc detector designed to identify abrupt writing style changes around the time of LLM proliferation. We contend that the development of specialized detectors exclusively dedicated to LLM-assisted writing detection is necessary. Such detectors could play a crucial role in fostering more authentic recognition of LLM involvement in scientific communication, addressing the current challenges in acknowledgment practices.

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LLM 文本检测 科学通信 伦理问题 写作辅助
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