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Knowledge Discovery for Support Structure Type Selection of Thrust Bearing Using Bayesian Decision Based on Rough Set

机译:基于粗糙集的贝叶斯决策,支持结构型推力轴承选择的知识发现

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A new method of Bayesian decision based on rough set is proposed in order to mine tacit knowledge and latent rules in support structure type selection of thrust bearing. Firstly, Rough set theory is applied to reduce all factors considered in type selection for getting determinative factors. By a heuristic algorithm based on improved mutual information, the minimal attributes reduction is obtained and makes up of decision table with decision attributes. Then according to the decision table, Bayesian decision with minimal risk is employed to extract decision rules. In this paper, the concise decision rules are extracted from representative cases and evaluation is made in some successful cases. Experiment results show that it is feasible and effective to use the method to knowledge discovery for support structure type selection of thrust bearing.
机译:提出了一种基于粗糙集的贝叶斯决策的新方法,以挖掘推动结构类型选择的默认知识和潜在规则。首先,应用粗糙集理论来减少类型选择中考虑的所有因素,以获得决定性因素。通过基于改进的互信息的启发式算法,获得了最小的属性,并弥补了决策属性的决策表。然后根据决策表,采用最小风险的贝叶斯决定提取决策规则。在本文中,简明决定规则是从代表性案件中提取的,并在一些成功案件中进行评估。实验结果表明,使用该方法对于支持结构类型的推力轴承选择的知识发现是可行的和有效的。

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