Knowledge Geometry in Phenomenon Perception and Artificial Intelligence

João Gabriel Lopes De Oliveira, Editorial office Pedro Moreira Menezes Da Costa, F. D. de Mello
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Abstract

Artificial Intelligence (AI) pervades industry, entertainment, transportation, finance, and health. It seems to be in a kind of golden age, but today AI is based on the strength of techniques that bear little relation to the thought mechanism. Contemporary techniques of machine learning, deep learning and case-based reasoning seem to be occupied with delivering functional and optimized solutions, leaving aside the core reasons of why such solutions work. This paper, in turn, proposes a theoretical study of perception, a key issue for knowledge acquisition and intelligence construction. Its main concern is the formal representation of a perceived phenomenon by a casual observer and its relationship with machine intelligence. This work is based on recently proposed geometric theory, and represents an approach that is able to describe the inuence of scope, development paradigms, matching process and ground truth on phenomenon perception. As a result, it enumerates the perception variables and describes the implications for AI.
现象感知与人工智能中的知识几何
人工智能(AI)遍及工业、娱乐、交通、金融和健康领域。它似乎处于一种黄金时代,但今天的AI是基于技术的力量,与思维机制几乎没有关系。机器学习、深度学习和基于案例的推理的当代技术似乎被用于提供功能和优化的解决方案,而忽略了这些解决方案工作的核心原因。然后,本文提出了对感知的理论研究,这是知识获取和智能构建的关键问题。它主要关注的是偶然观察者对感知到的现象的正式表示及其与机器智能的关系。这项工作以最近提出的几何理论为基础,代表了一种能够描述范围、发展范式、匹配过程和基础真理对现象感知的影响的方法。因此,它列举了感知变量并描述了对人工智能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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