Model of models -- Part 1
- URL: http://arxiv.org/abs/2308.04600v2
- Date: Tue, 24 Oct 2023 10:22:44 GMT
- Title: Model of models -- Part 1
- Authors: Shimon Komarovsky
- Abstract summary: This paper proposes a new cognitive model, acting as the main component of an AGI agent.
The model is introduced in its mature intelligence state, and as an extension of previous models, DENN, and especially AKREM.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: This paper proposes a new cognitive model, acting as the main component of an
AGI agent. The model is introduced in its mature intelligence state, and as an
extension of previous models, DENN, and especially AKREM, by including
operational models (frames/classes) and will. This model's core assumption is
that cognition is about operating on accumulated knowledge, with the guidance
of an appropriate will. Also, we assume that the actions, part of knowledge,
are learning to be aligned with will, during the evolution phase that precedes
the mature intelligence state. In addition, this model is mainly based on the
duality principle in every known intelligent aspect, such as exhibiting both
top-down and bottom-up model learning, generalization verse specialization, and
more. Furthermore, a holistic approach is advocated for AGI designing, and
cognition under constraints or efficiency is proposed, in the form of
reusability and simplicity. Finally, reaching this mature state is described
via a cognitive evolution from infancy to adulthood, utilizing a consolidation
principle. The final product of this cognitive model is a dynamic operational
memory of models and instances. Lastly, some examples and preliminary ideas for
the evolution phase to reach the mature state are presented.
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