首页> 外文会议>International conference in intelligent automation and computer engineering >A Kind of Cascade Linguistic Attribute Hierarchies for the Two-Way Information Propagation and Its Optimisation
【24h】

A Kind of Cascade Linguistic Attribute Hierarchies for the Two-Way Information Propagation and Its Optimisation

机译:一种用于双向信息传播的级联语言属性层次结构及其优化

获取原文

摘要

A hierarchical approach, in which a high-dimensional model is decomposed into series of low-dimensional sub-models connected in cascade, has been shown to be an effective way to overcome the 'curse of dimensionality' problem. We investigate a cascade linguistic attribute hierarchy (CLAH) embedded with linguistic decision trees (LDTs), which can present two-way information propagations. The upwards information propagation forms a process of cascade decision making, and cascade transparent linguistic rules represented by a cascade hierarchy will be useful for analyzing the effect of different attributes on the decision making in a special application. The downwards information propagation presents the constraints to low-level attributes for a given high-level goal threshold. Noisy signals can be thrown out in low level, which could protect from information traffic congestion in wireless sensor networks. A genetic algorithm with linguistic ID3 in wrapper is developed to find optimal CLAHs. Experimental results have shown that an optimal cascade hierarchy of LDTs can not only greatly reduce the number of rules when the relationship between a goal variable and input attributes is highly uncertain and nonlinear, but also achieve better performance in accuracy and ROC curve than a single LDT.
机译:一种分层方法,其中高维模型被分解为级联连接的一系列低维子模型,已经显示出克服“维度”问题的“诅咒”的有效方法。我们调查嵌入着语言决策树(LDT)的级联语言属性层次结构(CLAH),其可以呈现双向信息传播。向上信息传播形成级联决策过程的过程,并且由级联层次结构表示的级联透明语言规则将用于分析不同属性对特殊应用中的决策的影响。向下信息传播向给定的高级目标阈值呈现给低电平属性的约束。嘈杂的信号可以在低水平中抛出,这可以保护无线传感器网络中的信息流量拥塞。开发了一种带有语言ID3的遗传算法,以找到最佳的克拉。实验结果表明,当目标变量和输入属性之间的关系是高度不确定和非线性的关系时,LDT的最佳级联层次结构不仅可以大大减少规则的数量,而且还比单个LDT更精确和ROC曲线实现更好的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号