Knowledge acquisition via interactive Distributed Cognitive skill
Modules
- URL: http://arxiv.org/abs/2210.08007v1
- Date: Thu, 13 Oct 2022 01:41:11 GMT
- Title: Knowledge acquisition via interactive Distributed Cognitive skill
Modules
- Authors: Ahmet Orun
- Abstract summary: The human's cognitive capacity for problem solving is always limited to his/her educational background, skills, experiences, etc.
This work aims to introduce an early stage of a modular approach to procedural skill acquisition and storage via distributed cognitive skill modules.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The human's cognitive capacity for problem solving is always limited to
his/her educational background, skills, experiences, etc. Hence, it is often
insufficient to bring solution to extraordinary problems especially when there
is a time restriction. Nowadays this sort of personal cognitive limitations are
overcome at some extend by the computational utilities (e.g. program packages,
internet, etc.) where each one provides a specific background skill to the
individual to solve a particular problem. Nevertheless these models are all
based on already available conventional tools or knowledge and unable to solve
spontaneous unique problems, except human's procedural cognitive skills. But
unfortunately such low-level skills can not be modelled and stored in a
conventional way like classical models and knowledge. This work aims to
introduce an early stage of a modular approach to procedural skill acquisition
and storage via distributed cognitive skill modules which provide unique
opportunity to extend the limits of its exploitation.
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