Gödel vs.亚里士多德:算法复杂性、心智模型和顶级表征

L. Perlovsky
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引用次数: 2

摘要

大脑比电脑学得好得多。但是为什么呢?电脑学习速度慢有什么根本原因吗?慢学习通常被描述为计算复杂性。本文讨论了算法的复杂性与Gödelian逻辑的不完备性一样重要。虽然Gödel的理论得到了很好的认可,但它对心灵工程和建模的意义还没有得到重视。心智-大脑克服了这个基本的困难,为什么计算机不能呢?我在这里强调,原因是机器学习的逻辑基础。亚里士多德解释说,心灵是没有逻辑的。本文讨论了大多数神经网络和模糊系统都需要逻辑步骤。描述了一种克服计算复杂性的“非逻辑”数学理论。它与亚里士多德的思想紧密相关。这一新理论解释了心灵层次中最高表征的内容,以及与之相关的审美情感,揭示了美的本质和生命的意义。我讨论了一种非逻辑的数学技术如何可能是可计算的,逻辑在头脑中的功能,它与意识的关系,以及理解无意识机制的困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gödel vs. aristotle: Algorithmic complexity, models of the Mind, and top representations
Brains learn much better than computers. But why? Is there a fundamental reason behind computers being slow learners? Often slow learning is described as computational complexity. This paper discusses that complexity of algorithms is as fundamental as Gödelian incompleteness of logic. Although the Gödel's theory is well recognized, its significance for engineering and modeling of the mind has not been appreciated. The mind-brain overcomes this fundamental difficulty, why computers cannot? I emphasize here that the reason is logical bases of machine learning. Aristotle explained that mind is not logical. The paper discusses that most neural networks and fuzzy systems require logical steps. A “nonlogical” mathematical theory overcoming computational complexity is described. It turns out to closely follow Aristotle's ideas. The new theory explains contents of the highest representations in the mind hierarchy, and related aesthetic emotions revealing the nature of the beautiful and the meaning of life. I discuss how it is possible that a non-logical mathematical technique can be computable, the function of logic in the mind, its relation to consciousness, and difficulties of understanding unconscious mechanisms.
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