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Cognition Math Based on Factor Space

机译:基于因子空间的认知数学

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The core of big data is intelligence still. Facing the challenge of big data, AI needs a deep and united theory, especially, a deep and united cognition math. There were three branches of cognition math emerging in 1982. One of them is Factor space theory initiated by the first author. Factor is factor, i.e. the initiator of fact, the quality-root of things, which is the generalization of gene. Factor space is the coordinate space with dimensions named by factors, which is generalization of Cartesian coordination for describing things and thinking. The paper introduces how to emulate cognition functions by factor space and how clear and pertinent the emulation is. Four simple and fast algorithms are presented. Based on factor space, the cognition packet is built as the basic unit in factor databases. Different from the existent data processing, factor databases are built by cultivation, whose target is cultivating the sample S of background relation R to emulate R. With the lapse of time, the background sample S becomes more mature and stable. Once the S equals to R, cognition packet will have the whole correct knowledge. Maintaining such a powerful function for big data, factor databases can employ background base to drastically compress data without information loss. As for the existent data processing frightened by the multi-challenge of big data, factor space theory brings us a sedative. The tide of big data will be tamed in factor databases. The cultivation is easy to be made since the sample of background relation don't concern about privacy. The bottlenecks caused by big data can be overcome by factor space theory, which is the best framework for cognition math.
机译:大数据的核心仍然是智能。面对大数据的挑战,人工智能需要深刻而统一的理论,尤其是深刻而统一的认知数学。 1982年出现了三个认知数学分支。其中之一是第一作者提出的因子空间理论。因素就是因素,即事实的始作俑者是事物的质量根,这是基因的概括。因子空间是具有以因子命名的维数的坐标空间,这是笛卡尔坐标用于描述事物和思维的一般化。本文介绍了如何通过因子空间来模拟认知功能以及模拟的清晰性和相关性。提出了四种简单而快速的算法。基于因子空间,认知包被构建为因子数据库中的基本单元。与现有的数据处理不同,因子数据库是通过耕种建立的,其目标是通过培育背景关系R的样本S来模拟R。随着时间的流逝,背景样本S变得更加成熟和稳定。一旦S等于R,认知包将具有全部正确的知识。对于大数据保持如此强大的功能,因子数据库可以利用背景库来彻底压缩数据而不会丢失信息。对于大数据的多重挑战所威胁的现有数据处理,因子空间理论为我们带来了镇静剂。大数据的潮流将被驯化在因子数据库中。由于背景关系样本与隐私无关,因此易于进行培养。大数据造成的瓶颈可以通过因子空间理论来克服,因子空间理论是认知数学的最佳框架。

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