Core and Periphery as Closed-System Precepts for Engineering General
Intelligence
- URL: http://arxiv.org/abs/2208.02837v1
- Date: Thu, 4 Aug 2022 18:20:25 GMT
- Title: Core and Periphery as Closed-System Precepts for Engineering General
Intelligence
- Authors: Tyler Cody, Niloofar Shadab, Alejandro Salado, Peter Beling
- Abstract summary: It is unclear if an AI system's inputs will be independent of its outputs, and, therefore, if AI systems can be treated as traditional components.
This paper posits that engineering general intelligence requires new general systems precepts, termed the core and periphery.
- Score: 62.997667081978825
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Engineering methods are centered around traditional notions of decomposition
and recomposition that rely on partitioning the inputs and outputs of
components to allow for component-level properties to hold after their
composition. In artificial intelligence (AI), however, systems are often
expected to influence their environments, and, by way of their environments, to
influence themselves. Thus, it is unclear if an AI system's inputs will be
independent of its outputs, and, therefore, if AI systems can be treated as
traditional components. This paper posits that engineering general intelligence
requires new general systems precepts, termed the core and periphery, and
explores their theoretical uses. The new precepts are elaborated using abstract
systems theory and the Law of Requisite Variety. By using the presented
material, engineers can better understand the general character of regulating
the outcomes of AI to achieve stakeholder needs and how the general systems
nature of embodiment challenges traditional engineering practice.
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