构建贝叶斯信念网络的加权贝叶斯关联规则挖掘算法

S. Kharya, S. Soni, T. Swarnkar
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引用次数: 6

摘要

贝叶斯网络是处理临床领域中出现的不可预测性和因果关系的合适工具。贝叶斯网络可以从医疗数据集中学习,而无需明确访问人类专家的知识。因此,通过学习方法构建贝叶斯网络,需要从数据集中提取强规则。为了表达统计依赖关系,可以考虑关联规则。本提案希望结合两种技术来改善单一技术的缺点,因此提出了一种用于生成强贝叶斯关联规则的加权贝叶斯关联规则挖掘算法(WBAR),该算法将加权概念与关联规则挖掘(ARM)相结合,生成加权双属性关联规则、加权多属性关联规则和加权类关联规则。关联规则挖掘的两个有趣的维度:加权贝叶斯置信度(WBC)和加权贝叶斯提升度(WBL),它们利用基于联合概率的条件依赖和独立性来评估不同属性之间的关系,联合概率被符号化,然后由使用关联规则的加权贝叶斯网络解释。本文提出的算法WBAR根据WBC和WBL来得到最显著规则
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weighted Bayesian Association Rule Mining Algorithm to Construct Bayesian Belief Network
Bayesian network is an appropriate tool to work with the unpredictability and causality which arises in Clinical Domain. A Bayesian network can learn from medical datasets without explicit access to the knowledge of human experts. Thus, to built Bayesian network by learning method, strong rules are needed from datasets. To express statistical dependence relationships, association rules can be considered. This proposal expects to incorporate two techniques to improve the shortcoming of single technique, so this proposal put forward a Weighted Bayesian Association rule Mining Algorithm (WBAR) for the generation of strong Bayesian association rules for the construction of Bayesian network which combines the weighted concept with Association Rule Mining (ARM) to generate Weighted Two-attributes association rules, Weighted Multi -attributes association rules and Weighted Class Association rules. Two interesting dimensions of association rules mining: Weighted Bayes confidence (WBC) and Weighted Bayes lift (WBL) that assess the relationship between different attributes using conditional dependence and independence based on the joint probabilities which are symbolized and then interpreted by the Weighted Bayesian networks using association rules. The proposed algorithm WBAR results the most significant rules according to WBC and WBL
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