作为颗粒计算的机器学习

Hong Hu, Zhongzhi Shi
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引用次数: 14

摘要

Zadeh提出了人类认知的三个基本概念:颗粒、组织和因果关系,颗粒是由不可区分性、相似性、接近性或功能性聚集在一起的一堆点(物体)。本文给出了一种新的、易于用神经网络处理的颗粒计算定义。作为颗粒计算的感知学习试图以颗粒的方式研究从感知信息采样到降维和样本分类的机器学习,可以总结为两种方法:(1)覆盖学习,(2)支持向量机类学习。我们证明了尽管有大量的降维和信息变换算法,但它们的能力都无法超越小波类嵌套层状颗粒计算,而小波类嵌套层状颗粒计算很容易被神经网络处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning as Granular Computing
Zadeh proposed that there are three basic concepts that underlie human cognition: granulation, organization and causation and a granule being a clump of points (objects) drawn together by indistinguishability, similarity, proximity or functionality. In this paper, we give out a novel definition of Granular Computing which can be easily treated by neural network. Perception learning as granular computing tries to study the machine learning from perception information sampling to dimensional reduction and samples classification in a granular way, and can be summaries as two kind approaches:(1) covering learning, (2) svm kind learning. We proved that although there are tremendous algorithms for dimensional reduction and information transformation, their ability can't transcend wavelet kind nested layered granular computing which are very easy for neural network processing.
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