Abstract:
Large boundary region is one of the barriers for classical rough set theory applications. In this paper, drawbacks of the existing approaches for extended positive region from boundary region are discussed. Based on self-learning model under uncertain condition, a new approach for extended positive region is constructed. Algorithms of cognitive attribute core and attribute reduction are presented. Simulation results illustrate the efficiency of these algorithms.
Key words:
decision table,
rough set,
attribute reduction,
core attribute
摘要: 在经典粗糙集理论模型中,边界域过大会限制其实际应用。针对这一情况,指出决策表中边界域扩展为正域已有方法存在的不足,基于不确定条件下的自主式学习理论,定义一种新的扩展正域方法,并提出计算不相容决策表中认知属性核和认知属性约简的算法。实验结果证明了该方法的有效性。
关键词:
决策表,
粗糙集,
属性约简,
核属性
CLC Number:
FENG Lin. Attribute Reduction Approach Under Extended Positive Region[J]. Computer Engineering, 2010, 36(21): 62-64.
冯林. 一种扩展正域的属性约简方法[J]. 计算机工程, 2010, 36(21): 62-64.