Unmasking artificial intelligence (AI): Identifying articles written by AI models

Lalit Gupta
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Abstract

The rise of linguistic models as part of artificial intelligence (AI) in academic writing has brought both benefits and challenges. While AI can generate content that closely resembles human writing, recognizing AI-generated content is difficult due to its lack of obvious errors, prompt-based adaptability to various styles, broad subject range, and rapid production speed. To address this issue, various methods, such as technical analysis, metadata examination, stylometric analysis, tests for coherence, and AI detection models like GPTZero, have been developed. Ethical concerns include the risk of duplicity, writing validity, responsibility, and authorship credit. The future of AI-generated content identification is expected to involve improvements in AI detection algorithms, deep analytic tools, interdisciplinary cooperation, and ethical guidelines.
揭开人工智能(AI)的面纱:识别人工智能模型撰写的文章
作为人工智能(AI)的一部分,语言模型在学术写作中的兴起既带来了好处,也带来了挑战。虽然人工智能可以生成与人类写作十分相似的内容,但由于人工智能生成的内容没有明显的错误、能根据提示适应各种文体、主题范围广、生成速度快,因此识别人工智能生成的内容十分困难。为了解决这个问题,人们开发了各种方法,如技术分析、元数据检查、文体计量分析、连贯性测试以及 GPTZero 等人工智能检测模型。伦理问题包括重复风险、写作有效性、责任和作者信用。预计人工智能生成内容识别的未来将涉及人工智能检测算法的改进、深度分析工具、跨学科合作和伦理准则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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