在人工智能体中演示语义生成:一种方法和一个例子

Olivier L. Georgeon, James B. Marshall
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引用次数: 15

摘要

我们提出了一种实验方法来研究人工智能中可能出现的语义生成。这种方法包括在测试平台环境中分析智能体的行为,该环境在提供给智能体的交互可能性中呈现规律,而智能体对解释这种规律的环境的潜在功能没有预设。我们提出了一个允许这样的实验的特殊环境,称为小循环问题。我们认为,如果智能体学会利用交互的规则来实现其自我激励,就好像它理解(至少部分理解)环境的潜在功能,那么智能体的行为就表明了意义建构。作为推论,我们认为意义建构和自我激励是结合在一起的。我们提出了一种在人工智能体中产生自我激励的新方法——交互激励。交互激励代理寻求与预定义的正值进行交互,并避免与预定义的负值进行交互。我们将提出的语义生成紧急演示方法应用于之前实现的智能体,并生成了示例报告,表明该智能体能够进行基本形式的语义生成。
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Demonstrating sensemaking emergence in artificial agents: A method and an example
We propose an experimental method to study the possible emergence of sensemaking in artificial agents. This method involves analyzing the agent's behavior in a test bed environment that presents regularities in the possibilities of interaction afforded to the agent, while the agent has no presuppositions about the underlying functioning of the environment that explains such regularities. We propose a particular environment that permits such an experiment, called the Small Loop Problem. We argue that the agent's behavior demonstrates sensemaking if the agent learns to exploit regularities of interaction to fulfill its self-motivation as if it understood (at least partially) the underlying functioning of the environment. As a corollary, we argue that sensemaking and self-motivation come together. We propose a new method to generate self-motivation in an artificial agent called interactional motivation. An interactionally motivated agent seeks to perform interactions with predefined positive values and avoid interactions with predefined negative values. We applied the proposed sensemaking emergence demonstration method to an agent implemented previously, and produced example reports that suggest that this agent is capable of a rudimentary form of sensemaking.
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