计算机科学 ›› 2011, Vol. 38 ›› Issue (8): 221-225.

• 人工智能 • 上一篇    下一篇

半P-集合(XF,X)与噪声数据剔除-应用

李豫颖   

  1. (宁德师范学院计算机与信息工程系 宁德352100);(山东大学数学与系统科学学院 济南250100)
  • 出版日期:2018-11-16 发布日期:2018-11-16
  • 基金资助:
    本文受福建省自然科学基金(2009J01294),宁德师范学院科研重点项目(2008J002)资助。

Half P-sets(XF,X) and Noise Data Rejction-application

LI Yu-ying   

  • Online:2018-11-16 Published:2018-11-16

摘要: 半P-集合(half packet sets)是由内P-集合XF (internal packet set XF)与有限普通集合X构成的集合对,或者(XF,X)是半P-集合,它具有内一动态特性。为了剔除噪声数据,获得目标数据,利用半P-集合提出了基于属性补充的递推一别除噪声数据的方法。提出了噪声数据、噪声数据集成与F-数据核概念;给出了噪声数据与F-数据生成的递推方法与递推结构、噪声数据集成与F-数据核关系定理、F-数据依赖与辫识定理、噪声数据递推-剔除定理、噪声数据辨识准则与噪声数据递推-剔除准则,以及噪声数据递推-剔除应用。半P-集合是P-集合理论与应用的一个新的研究分支,是研究具有内一动态信息系统的一个新的数学方法。

关键词: 半P-集合,噪声数据,噪声数据集成,F-数据核,递推-剔除准则,应用

Abstract: Half P-sets (half packet sets) are a set pair composed of internal P-set XF(internal packet set XF)and finite general set X,or (XF,X) is Half P-sets. It has internal dynamic characteristic. Using Half P-sets for rejecting noise data and getting target data,the recursion-rejection method of noise data by supplementing attributes was put forward in this paper. Some concepts were presented such as the noise data, the noise data integration,F-data core. The recursion method and the recuision structure about the generation of the noise data and the generation of F-data were given. The relation theorem between the noise data integration and F-data core was given as well as the dependence and identification theorems of F-data, the recursion-rejection theorems of the noise data. hhe identification criterion and the recursion-rejection criterion for the noise data were provided as well as the applicatin of recursion-rejection for the noise data. Half P-sets are not only a new study branch of theory and application about P-set but also a new mathematical method for researching information systems which have internal dynamic characteristic.

Key words: Half P-sets, Noise data, Noise data integration,F-data core, Recursion-rejection criterion, Application

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