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Rule Generating of Rough Sets Based on Bayesian Theory

机译:基于贝叶斯理论的粗糙集规则生成

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摘要

The generating rule method is presented for incompatible and incomplete information of test data based on Bayesian theory. Firstly, the rule's conditional probability is calculated when the certainty (reliability) of the test data is the prior probability and the samples (supportability) is posterior probability. Then, Those rules whose conditional probability is bigger than a given threshold value should be preserved. Lastly, the rule is generated by logic conjunction and disjunction of all the preserved rules. The example and application analysis indicate that the algorithm is clear, the calculating process is simple and it can be easily applied to computer programs, moreover, this method can avoid the knowledge distortion and the rule losing to the maximum for generating rule.
机译:提出了一种基于贝叶斯理论的测试数据信息不兼容,信息不完整的生成规则方法。首先,当测试数据的确定性(可靠性)为先验概率而样本(可支持性)为后验概率时,计算规则的条件概率。然后,应保留那些条件概率大于给定阈值的规则。最后,通过对所有保留的规则进行逻辑合取和析取来生成规则。实例和应用分析表明,该算法清晰明了,计算过程简单,易于在计算机程序中应用,并且避免了知识失真和规则在生成规则时损失最大。

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