Deep learning and deep thinking: New application framework by CICT

R. Fiorini
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引用次数: 5

Abstract

In a previous paper we showed and discussed how computational information conservation theory (CICT) can help us to develop even competitive advanced quantum cognitive computational systems. To achieve reliable system intelligence outstanding results, current computational system modeling and simulation community has to face and to solve two orders of modeling limitations at least. As a solution, we propose an exponential, prespatial arithmetic scheme (“all-powerful scheme”) by CICT to overcome the Information Double-Bind (IDB) problem and to thrive on both deterministic noise (DN) and random noise (RN) to develop powerful cognitive computational frameworks for deep learning, towards deep thinking applications. An operative example is presented. This paper is a relevant contribution towards an effective and convenient “Science 2.0” universal computational framework to develop deeper learning and deep thinking system and application at your fingertips and beyond.
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深度学习与深度思考:CICT新应用框架
在之前的一篇论文中,我们展示并讨论了计算信息守恒理论(CICT)如何帮助我们开发甚至具有竞争力的先进量子认知计算系统。为了取得可靠的系统智能突出成果,当前计算系统建模和仿真界至少要面对和解决两个量级的建模限制。作为解决方案,我们提出了CICT的指数,前空间算法方案(“全能方案”),以克服信息双重绑定(IDB)问题,并在确定性噪声(DN)和随机噪声(RN)上茁壮成长,为深度学习开发强大的认知计算框架,走向深度思维应用。给出了一个有效的例子。本文是对一个有效、便捷的“科学2.0”通用计算框架的相关贡献,以开发触手可及的深度学习和深度思考系统和应用。
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