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Measuring Human Contribution in AI-Assisted Content Generation

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arxiv 2408.14792 v3 pith:PURUFNFE submitted 2024-08-27 cs.CY cs.AIcs.CL

Measuring Human Contribution in AI-Assisted Content Generation

classification cs.CY cs.AIcs.CL
keywords humanai-assistedcontentcontributiongenerationgenerativeinformationmeasuring
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the growing prevalence of generative artificial intelligence (AI), an increasing amount of content is no longer exclusively generated by humans but by generative AI models with human guidance. This shift presents notable challenges for the delineation of originality due to the varying degrees of human contribution in AI-assisted works. This study raises the research question of measuring human contribution in AI-assisted content generation and introduces a framework to address this question that is grounded in information theory. By calculating mutual information between human input and AI-assisted output relative to self-information of AI-assisted output, we quantify the proportional information contribution of humans in content generation. Our experimental results demonstrate that the proposed measure effectively discriminates between varying degrees of human contribution across multiple creative domains. We hope that this work lays a foundation for measuring human contributions in AI-assisted content generation in the era of generative AI.

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