Artificial Intelligence and Number System in Residual Classes

V. Krasnobayev, A. Kuznetsov, Mykhaylo Bagmut, T. Kuznetsova
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Abstract

This article discusses a model of the process of information processing by the human brain, based on the assumption that the storage and processing of information is carried out in a non-positional number system in residual classes (RNS). When accepting the hypothesis about the holographic principle of information processing by the human brain, the expediency and effectiveness of building artificial intelligence systems based on the information processing model in the RNS is obvious. This is due to the fact that the principles and methods of information processing in the RNS are in good agreement with modern concepts and ideas about the process of information processing by the human brain. The accuracy of the description (representation) of the information object G depends on the number and values of the RNS bases. So, the larger the number of RNS bases and the larger they are in value, the more accurately the information object G is described by means of frames. This fact confirms the expediency of using the RNS.
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残差类中的人工智能与数字系统
本文在残差类(RNS)非位置数系统中对信息进行存储和处理的假设基础上,讨论了人脑对信息处理过程的模型。在接受人脑信息处理全息原理的假设时,基于RNS中的信息处理模型构建人工智能系统的方便性和有效性是显而易见的。这是由于RNS中信息处理的原理和方法与现代关于人脑信息处理过程的概念和思想非常吻合。信息对象G的描述(表示)的准确性取决于RNS基的数量和值。因此,RNS基的数量越多,其值越大,则通过帧来描述信息对象G的准确性越高。这一事实证实了使用RNS的权宜之计。
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