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Inference and diagnosis model based on Bayesian network and rough sets theory

机译:基于贝叶斯网络和粗糙集理论的推理与诊断模型

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Rough set theory can be regarded as a new mathematical tool for imperfect data analysis. It is widely applied in knowledge reduction and rule extraction. Bayesian model is defined as the relationship between nodes and the node probability distribution. Therefore, this paper proposes a solution for reasoning and diagnosis model by using the rough sets and the Bayesian network to estimate the subjective of prior probability. The contribution of this paper is the combination of rough set theory and Bayesian Network to describe the change of analyzes influenza reasons. An example shows that the proposed method is correct and improves the capability of the reasoning and diagnosis model.
机译:粗糙集理论可以被视为不完美数据分析的一种新的数学工具。它广泛应用于知识约简和规则提取。贝叶斯模型定义为节点与节点概率分布之间的关系。因此,本文提出了一种利用粗糙集和贝叶斯网络来估计主观先验概率的推理和诊断模型的解决方案。本文的贡献是将粗糙集理论和贝叶斯网络相结合来描述分析流行性感冒原因的变化。算例表明,该方法是正确的,并提高了推理和诊断模型的能力。

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