基于深度学习的AI生成文本判别模型研究
Study of text discriminative model of AI generation based on deep learning
徐璐 1唐大卫2
作者信息
- 1. 金陵科技学院 南京 211100
- 2. 江苏苏美达集团有限公司 南京 210018
- 折叠
摘要
本文针对识别大型语言模型(LLMs)生成文本与人类创作文本的核心难题展开研究,通过在多样化的数据集上检验模型性能,验证升级后的鉴别策略的有效性.本研究重点评估GPT-3.5-Turbo模型,并将其性能与多种主流分类模型进行了对比.研究结果显示,模型鉴别准确率显著受文本序列长度的影响,揭示了长度作为影响鉴别效能关键因素的新视角.这些发现不仅加深了对AI生成文本特性的理解,也为开发更精准的鉴别算法提供了方向.
Abstract
This paper focuses on addressing the core challenge of distinguishing text generated by Large Language Models(LLMs)from human-written content.Through testing model performance on a diversified dataset,the effectiveness of an upgraded discrimination strategy is substantiated.The study particularly evaluates the GPT-3.5-Turbo model and compares its performance against various mainstream classification models.The findings indicate that the accuracy of model discrimination is significantly influenced by the length of text sequences,unveiling a new perspective on length as a critical factor impacting discrimination efficacy.These insights not only deepen the understanding of characteristics unique to AI-generated text but also provide direction for the development of more precise discrimination algorithms.
关键词
深度学习/文本判别/鉴别准确率Key words
deep learning/textual discrimination/Discrimination accuracy引用本文复制引用
出版年
2024