AINov 25, 2025

Copyright Detection in Large Language Models: An Ethical Approach to Generative AI Development

arXiv:2511.20623v1Has Code
Originality Incremental advance
AI Analysis

It addresses copyright concerns for content creators and AI developers, though it is incremental by enhancing existing methodologies.

The paper tackles the problem of detecting unauthorized copyrighted content in LLM training data by introducing an open-source platform that reduces computational overhead by 10-30% and improves accessibility for independent creators.

The widespread use of Large Language Models (LLMs) raises critical concerns regarding the unauthorized inclusion of copyrighted content in training data. Existing detection frameworks, such as DE-COP, are computationally intensive, and largely inaccessible to independent creators. As legal scrutiny increases, there is a pressing need for a scalable, transparent, and user-friendly solution. This paper introduce an open-source copyright detection platform that enables content creators to verify whether their work was used in LLM training datasets. Our approach enhances existing methodologies by facilitating ease of use, improving similarity detection, optimizing dataset validation, and reducing computational overhead by 10-30% with efficient API calls. With an intuitive user interface and scalable backend, this framework contributes to increasing transparency in AI development and ethical compliance, facilitating the foundation for further research in responsible AI development and copyright enforcement.

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