通过合作人工智能提升人类洞察力:香农-诺伊曼逻辑的基础

Edouard Siregar
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引用次数: 0

摘要

我们提出了能够处理复杂动态挑战的人工智能(AI)的逻辑基础,这些挑战很难使用传统方法(例如谓词逻辑和深度学习)来处理。人工智能是基于合作提问游戏,以提高洞察力。洞察力的收获是通过信息、概率、不确定性(香农)以及效用(冯·诺伊曼)来衡量的。该框架是一个两人合作迭代问答游戏,在这个游戏中,双方玩家(人类和AI代理)都受益(正和):人类玩家获得洞察力,AI玩家学习改进其建议。一般来说,有价值的见解通常是通过在“适当”的时间和地点就“正确”的主题提出“好”的问题来获得的:通过提出有见地的问题。在这项研究中,我们提出了一个逻辑和数学框架,用于在明确定义的人类意图类别中定义“好、对、适当”的含义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting human Insight by Cooperative AI: Foundations of Shannon-Neumann Logic
We present the logical foundation of an artificial intelligence (AI) capable of dealing with complex dynamic challenges, that would be very hard to handled using traditional approaches (e.g. predicate logic and deep learning). The AI is based on a cooperative questioning game, to boost insight. Insight gains are measured by information, probability, uncertainty (Shannon), as well as utility (von Neumann). The framework is a two-person cooperative iterated Q&A game, in which both players (human, AI agent) benefit (positive-sum): the human player gains insight and the AI player learns to improve its suggestions. Generally speaking, valuable insight is typically gained by asking ’good’ questions about the ’right’ topic, at the ’appropriate’ time and place: by posing insightful questions. In this study, we propose a logical and mathematical framework, for the meanings of ’good, right, appropriate’, within clearly-defined classes of human intentions.
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