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This paper introduces Relationship-Aware AI as a paradigm centered on relationally conditioned execution. Current AI systems assume that inference and execution should occur automatically once input is received. This paper argues that the primary limitation of AI systems is not response quality alone, but the absence of a principled mechanism determining whether execution should occur at all. The work defines: - execution eligibility, - relationally conditioned execution, - the relationship layer, - relational state and relational dynamics, - execution conditions, - and non-execution as a structurally valid outcome. Rather than treating silence, delay, delegation, or non-action as failures, the framework establishes them as valid execution outcomes governed by relational conditions. Crucially, execution validity must be determined prior to inference, establishing pre-inference execution determination as a foundational principle of Relationship-Aware AI. This publication serves as a foundational theoretical paper for the Relationship-Aware AI Research initiative, establishing relationally conditioned execution as a core organizing principle for AI systems.
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伊東 治己
Health Awareness (United States)
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伊東 治己 (Wed,) studied this question.
www.synapsesocial.com/papers/6a06b998e7dec685947ac5ba — DOI: https://doi.org/10.5281/zenodo.20171859