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On More Realistic Environment Distributions for Defining, Evaluating and Developing Intelligence

机译:关于定义,评估和发展智力的更现实的环境分布

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One insightful view of the notion of intelligence is the ability to perform well in a diverse set of tasks, problems or environments. One of the key issues is therefore the choice of this set, which can be formalised as a 'distribution'. Formalising and properly defining this distribution is an important challenge to understand what intelligence is and to achieve artificial general intelligence (AGI). In this paper, we agree with previous criticisms that a universal distribution using a reference universal Turing machine (UTM) over tasks, environments, etc., is perhaps a much too general distribution, since, e.g., the probability of other agents appearing on the scene or having some social interaction is almost 0 for many reference UTMs. Instead, we propose the notion of Darwin-Wallace distribution for environments, which is inspired by biological evolution, artificial life and evolutionary computation. However, although enlightening about where and how intelligence should excel, this distribution has so many options and is uncomputable in so many ways that we certainly need a more practical alternative. We propose the use of intelligence tests over multi-agent systems, in such a way that agents with a certified level of intelligence at a certain degree are used to construct the tests for the next degree. This constructive methodology can then be used as a more realistic intelligence test and also as a testbed for developing and evaluating AGI systems.
机译:关于智能概念的一种有见地的观点是在各种任务,问题或环境中表现良好的能力。因此,关键问题之一是选择该集合,可以将其形式化为“分布”。正式化和正确定义此分布是了解什么是智能并实现人工通用智能(AGI)的重要挑战。在本文中,我们同意先前的批评,即在任务,环境等方面使用参考通用图灵机(UTM)进行的通用分布可能过于笼统,因为例如,其他主体出现在任务上的可能性。对于许多参考UTM,场景或具有某种社交互动的情况几乎为0。相反,我们提出了针对环境的达尔文-华莱士分布的概念,该概念受生物进化,人工生命和进化计算的启发。但是,尽管启发了智能在什么地方以及如何发挥作用,但是这种分布有很多选择,而且在很多方面都没有争议,因此我们当然需要一个更实际的选择。我们建议在多智能体系统上使用智能测试,以使某种程度的智能级别的智能体被用于构建下一级别的测试。这种建设性的方法然后可以用作更现实的情报测试,也可以用作开发和评估AGI系统的测试平台。

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