AIMAAODec 2, 2022

Designing Ecosystems of Intelligence from First Principles

arXiv:2212.01354v253 citationsh-index: 253
Originality Incremental advance
AI Analysis

This work addresses the foundational problem of designing integrated AI-human ecosystems for broad AI and societal applications, but it is conceptual and incremental in building on existing active inference theory.

The paper proposes a vision for future AI research based on active inference as a physics of intelligence, aiming to create a cyber-physical ecosystem of shared intelligence where humans and agents collaborate through belief sharing and collective sense-making. It outlines foundational principles and suggests developing communication protocols and a hyper-spatial modeling language to enable this ecosystem.

This white paper lays out a vision of research and development in the field of artificial intelligence for the next decade (and beyond). Its denouement is a cyber-physical ecosystem of natural and synthetic sense-making, in which humans are integral participants -- what we call ''shared intelligence''. This vision is premised on active inference, a formulation of adaptive behavior that can be read as a physics of intelligence, and which inherits from the physics of self-organization. In this context, we understand intelligence as the capacity to accumulate evidence for a generative model of one's sensed world -- also known as self-evidencing. Formally, this corresponds to maximizing (Bayesian) model evidence, via belief updating over several scales: i.e., inference, learning, and model selection. Operationally, this self-evidencing can be realized via (variational) message passing or belief propagation on a factor graph. Crucially, active inference foregrounds an existential imperative of intelligent systems; namely, curiosity or the resolution of uncertainty. This same imperative underwrites belief sharing in ensembles of agents, in which certain aspects (i.e., factors) of each agent's generative world model provide a common ground or frame of reference. Active inference plays a foundational role in this ecology of belief sharing -- leading to a formal account of collective intelligence that rests on shared narratives and goals. We also consider the kinds of communication protocols that must be developed to enable such an ecosystem of intelligences and motivate the development of a shared hyper-spatial modeling language and transaction protocol, as a first -- and key -- step towards such an ecology.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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