E.A.R.T.H.: Structuring creative evolution through model error in generative AI
Yusen Peng
2025Computer science - artificial intelligence
Abstract
How can AI move beyond imitation toward genuine creativity? This paper proposes the E.A.R.T.H. framework, a five-stage generative pipeline that transforms model-generated errors into creative assets through Error generation, Amplification, Refine selection, Transform, and Harness feedback. Drawing on cognitive science and generative modeling, we posit that "creative potential hides in failure" and operationalize this via structured prompts, semantic scoring, and human-in-the-loop evaluation. Imp
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Human-In-The-Loop › Autonomous GenerationCreativity Frameworks › Linguistic CreativityCreative Phenomena Studied › WordplayCreativity Evaluation Methods › Automatic MetricsCreativity Evaluation Methods › Creativity-Specific EvaluationCreativity Evaluation Methods › Human EvaluationModel Scale › Medium (8-24)Research Focus › Prompt EngineeringRelationship to Creativity › ImplicitLevel of Analysis › Word-Level
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Paper ID: 2652e60c-7ada-4019-910a-f81bd53ae681Added: 10/26/2025