人工神经网络的力量限制强人工智能的数值证据

R. Englert, J. Muschiol
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引用次数: 1

摘要

关于AI的一个著名定义是基于McCarthy的弱AI和强AI这两个术语。一个悬而未决的问题是这些术语的特征,即从弱到强的转变。对于这个复杂而重要的问题,几乎没有研究结果。在本文中,我们研究了神经网络(NN)的大小和结构如何限制训练样本的可学习性,从而可以用来区分弱和强人工智能(域)。此外,训练样本的大小是使用大O函数估计训练努力的主要参数。所需的训练重复也可能限制学习的可追溯性,并将进行研究。结果通过对前馈神经网络和包含1000个单词的语言的训练样本的分析来说明,包括训练重复的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical Evidence That the Power of Artificial Neural Networks Limits Strong AI
A famous definition of AI is based on the terms weak and strong AI from McCarthy. An open question is the characterization of these terms, i.e., the transition from weak to strong. Nearly no research results are known for this complex and important question. In this paper we investigate how the size and structure of a Neural Network (NN) limits the learnability of a training sample, and thus, can be used to discriminate weak and strong AI (domains). Furthermore, the size of the training sample is a primary parameter for the training effort estimation with the big O function. The needed training repetitions may also limit the learning tractability and will be investigated. The results are illustrated with an analysis of a feedforward NN and a training sample for language with 1,000 words including the effort for the training repetitions.
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