AIITMar 25, 2022

A World-Self Model Towards Understanding Intelligence

arXiv:2203.13762v34 citationsh-index: 11
Originality Incremental advance
AI Analysis

This work addresses the foundational problem of defining intelligence for the AI community, but it is theoretical and incremental in proposing a new conceptual model without empirical validation.

The paper tackles the lack of a clear definition of intelligence by proposing a world-self model (WSM) as a mathematical framework to represent fundamental aspects of intelligence, such as information abstraction and concept creation, aiming to unify perception and cognition.

The symbolism, connectionism and behaviorism approaches of artificial intelligence have achieved a lot of successes in various tasks, while we still do not have a clear definition of "intelligence" with enough consensus in the community (although there are over 70 different "versions" of definitions). The nature of intelligence is still in darkness. In this work we do not take any of these three traditional approaches, instead we try to identify certain fundamental aspects of the nature of intelligence, and construct a mathematical model to represent and potentially reproduce these fundamental aspects. We first stress the importance of defining the scope of discussion and granularity of investigation. We carefully compare human and artificial intelligence, and qualitatively demonstrate an information abstraction process, which we propose to be the key to connect perception and cognition. We then present the broader idea of "concept", separate the idea of self model out of the world model, and construct a new model called world-self model (WSM). We show the mechanisms of creating and connecting concepts, and the flow of how the WSM receives, processes and outputs information with respect to an arbitrary type of problem to solve. We also consider and discuss the potential computer implementation issues of the proposed theoretical framework, and finally we propose a unified general framework of intelligence based on WSM.

Foundations

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

Your Notes