Not All Similarities Are Created Equal: Leveraging Data-Driven Biases to Inform GenAI Copyright Disputes
Uri Hacohen, Adi Haviv, Shahar Sarfaty, Bruria Friedman, Niva, Elkin-Koren, Roi Livni, Amit H Bermano

TL;DR
This paper proposes a data-driven method using GenAI models to assess the genericity of works, aiding legal decisions on copyright scope and addressing challenges posed by synthetic content creation.
Contribution
It introduces a novel approach leveraging GenAI's learning capacity to evaluate expressive genericity, informing copyright law and dispute resolution.
Findings
The approach can identify shared patterns in preexisting works.
It helps determine copyright scope based on expressive genericity.
Potential to improve legal and registration processes for synthetic works.
Abstract
The advent of Generative Artificial Intelligence (GenAI) models, including GitHub Copilot, OpenAI GPT, and Stable Diffusion, has revolutionized content creation, enabling non-professionals to produce high-quality content across various domains. This transformative technology has led to a surge of synthetic content and sparked legal disputes over copyright infringement. To address these challenges, this paper introduces a novel approach that leverages the learning capacity of GenAI models for copyright legal analysis, demonstrated with GPT2 and Stable Diffusion models. Copyright law distinguishes between original expressions and generic ones (Sc\`enes \`a faire), protecting the former and permitting reproduction of the latter. However, this distinction has historically been challenging to make consistently, leading to over-protection of copyrighted works. GenAI offers an unprecedented…
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Taxonomy
TopicsLaw, AI, and Intellectual Property · Copyright and Intellectual Property
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Linear Layer · Attention Dropout · Residual Connection · Cosine Annealing · Multi-Head Attention · Linear Warmup With Cosine Annealing · Softmax · Discriminative Fine-Tuning
