走向伦理进化:人工智能的代际负责任自治

Vagan Terziyan, Timo Tiihonen, Amit K. Shukla, Svitlana Gryshko, Mariia Golovianko, Oleksandr Terziyan, Oleksandra Vitko
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引用次数: 0

摘要

能够设计下一代人工智能(AI)的自主系统的出现,在确保道德诚信和问责制方面带来了深刻的挑战。本文提出了一个结合元责任、遗传算法和时间旅行启发的抽象的新框架来解决这些挑战。这项研究的核心是一个不变的伦理原则:人工智能不得伤害人类或违反基本价值观,必须监测和减轻对其结果的滥用,并且必须确保所有衍生人工智能产品继承这一原则,作为不变的保障。该框架确保AI系统作为后续AI代的设计者,在代之间可靠地传播这些道德原则,从而在AI作为AI的设计者的场景中实现道德继承。元责任框架解决了维护责任和道德原则的关键问题,不仅适用于由人类设计的人工智能系统,也适用于由其他人工智能系统设计的系统。遗传责任模型的核心是平衡不可变和可变原则,在确保适应性的同时,在自我克隆、环境适应和代际设计过程中保持道德标准。该框架为自主系统的广泛潜在应用量身定制,为可信赖的人工智能设计提供了可扩展的基础,确保在几代自主代理之间保持一致的道德行为和可靠的责任传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards ethical evolution: responsible autonomy of artificial intelligence across generations

The emergence of autonomous systems capable of designing subsequent generations of Artificial Intelligence (AI) introduces profound challenges in ensuring ethical integrity and accountability. This article presents a novel framework combining meta-responsibility, genetic algorithms, and time-travel-inspired abstractions to address these challenges. Central to this study is an immutable ethical principle: AI must not harm humanity or violate fundamental values, must monitor and mitigate misuse of its outcomes, and must ensure all derivative AI products inherit this principle as an immutable safeguard. The framework ensures that AI systems, acting as designers of subsequent AI generations, propagate these ethical principles reliably across generations, enabling ethical inheritance in AI-as-a-designer-of-AI scenarios. The meta-responsibility framework addresses the critical question of maintaining responsibility and ethical principles not only for AI systems designed by humans but also for those designed by other AI systems. At its core, the genetic responsibility model balances immutable and mutable principles, ensuring adaptability while preserving ethical standards during self-cloning, contextual adaptation, and intergenerational design. Tailored for wide range of potential applications of autonomous systems, this framework offers a scalable foundation for trustworthy AI design, ensuring consistent ethical behavior and reliable responsibility propagation across generations of autonomous agents.

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