认知架构与自主性:比较回顾

K. Thórisson, Helgi Helgasson
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引用次数: 72

摘要

人工智能(AI)研究的最初目标之一是创造具有非常普遍的认知能力和相对高度自治的机器。为了实现这一目标的一小部分,该领域花费的时间比许多人预期的要长;社区一直专注于构建特定的、有针对性的孤立认知过程,目前还没有一个系统能够集成广泛的功能,或者为自主获取大量技能提供一个通用的解决方案。造成这种情况的原因之一是现有的机器学习和适应技术非常有限,以及在一个连贯的体系结构中集成众多认知和学习能力的固有复杂性。在本文中,我们回顾了选定的系统和架构,这些系统和架构是专门为解决集成技能而构建的。我们强调了这些系统的原则和特征,这些系统似乎有望创建具有一定程度自治的一般智能系统,并在未来认知架构发展的背景下讨论它们。在我们看来,自治是任何被认为是普遍智能的系统的关键属性;我们使用这个概念作为比较审查系统的组织原则。在目前的研究中,大部分尚未解决的特征,但似乎是这种努力取得成功所必需的,也进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive Architectures and Autonomy: A Comparative Review
Abstract One of the original goals of artificial intelligence (AI) research was to create machines with very general cognitive capabilities and a relatively high level of autonomy. It has taken the field longer than many had expected to achieve even a fraction of this goal; the community has focused on building specific, targeted cognitive processes in isolation, and as of yet no system exists that integrates a broad range of capabilities or presents a general solution to autonomous acquisition of a large set of skills. Among the reasons for this are the highly limited machine learning and adaptation techniques available, and the inherent complexity of integrating numerous cognitive and learning capabilities in a coherent architecture. In this paper we review selected systems and architectures built expressly to address integrated skills. We highlight principles and features of these systems that seem promising for creating generally intelligent systems with some level of autonomy, and discuss them in the context of the development of future cognitive architectures. Autonomy is a key property for any system to be considered generally intelligent, in our view; we use this concept as an organizing principle for comparing the reviewed systems. Features that remain largely unaddressed in present research, but seem nevertheless necessary for such efforts to succeed, are also discussed.
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