有感觉和思考的机器:情感感受和心理行为在(人工)通用智能中的作用

IF 1.6 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Life Pub Date : 2022-08-04 DOI:10.1162/artl_a_00368
George Deane
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引用次数: 1

摘要

情感感受(感觉/情绪/心情)在适应行为中起什么作用?这对于理解和发展通用人工智能有什么意义?领先的脑功能理论模型正开始揭示这些问题。虽然人工智能在狭窄的领域和专业领域表现出色,但领域通用智能仍然是人工智能研究的一个难以捉摸的目标。相比之下,人类和非人类动物的特点是具有灵活的行为能力和一般智力。在这篇文章中,我认为大脑预测处理理论中心理现象的计算模型开始揭示支撑生物代理领域通用智能的机制,并可以为理解和发展人工通用智能提供信息。我特别关注主动推理框架中计算现象学的方法。具体来说,我认为主动推理中情感感受的计算机制——情感自我建模——揭示了生物代理人如何能够实现灵活的行为库和一般智力。我认为:(I)情感自我建模功能“调整”生物体在环境背景下最容易处理的目标;(ii)情感和能动的自我建模对于在目标导向的想象和创造性认知中执行心理行为的能力至关重要。我用这个解释作为基础来论证,在生物媒介中发现的水平和类型的一般智能可能需要机器来实现情感自我建模的类似物。
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Machines That Feel and Think: The Role of Affective Feelings and Mental Action in (Artificial) General Intelligence
What role do affective feelings (feelings/emotions/moods) play in adaptive behaviour? What are the implications of this for understanding and developing artificial general intelligence? Leading theoretical models of brain function are beginning to shed light on these questions. While artificial agents have excelled within narrowly circumscribed and specialised domains, domain-general intelligence has remained an elusive goal in artificial intelligence research. By contrast, humans and nonhuman animals are characterised by a capacity for flexible behaviour and general intelligence. In this article I argue that computational models of mental phenomena in predictive processing theories of the brain are starting to reveal the mechanisms underpinning domain-general intelligence in biological agents, and can inform the understanding and development of artificial general intelligence. I focus particularly on approaches to computational phenomenology in the active inference framework. Specifically, I argue that computational mechanisms of affective feelings in active inference—affective self-modelling—are revealing of how biological agents are able to achieve flexible behavioural repertoires and general intelligence. I argue that (i) affective self-modelling functions to “tune” organisms to the most tractable goals in the environmental context; and (ii) affective and agentic self-modelling is central to the capacity to perform mental actions in goal-directed imagination and creative cognition. I use this account as a basis to argue that general intelligence of the level and kind found in biological agents will likely require machines to be implemented with analogues of affective self-modelling.
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来源期刊
Artificial Life
Artificial Life 工程技术-计算机:理论方法
CiteScore
4.70
自引率
7.70%
发文量
38
审稿时长
>12 weeks
期刊介绍: Artificial Life, launched in the fall of 1993, has become the unifying forum for the exchange of scientific information on the study of artificial systems that exhibit the behavioral characteristics of natural living systems, through the synthesis or simulation using computational (software), robotic (hardware), and/or physicochemical (wetware) means. Each issue features cutting-edge research on artificial life that advances the state-of-the-art of our knowledge about various aspects of living systems such as: Artificial chemistry and the origins of life Self-assembly, growth, and development Self-replication and self-repair Systems and synthetic biology Perception, cognition, and behavior Embodiment and enactivism Collective behaviors of swarms Evolutionary and ecological dynamics Open-endedness and creativity Social organization and cultural evolution Societal and technological implications Philosophy and aesthetics Applications to biology, medicine, business, education, or entertainment.
期刊最新文献
Complexity, Artificial Life, and Artificial Intelligence. Neurons as Autoencoders. Evolvability in Artificial Development of Large, Complex Structures and the Principle of Terminal Addition. Investigating the Limits of Familiarity-Based Navigation. Network Bottlenecks and Task Structure Control the Evolution of Interpretable Learning Rules in a Foraging Agent.
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