广东工业大学学报 ›› 2019, Vol. 36 ›› Issue (05): 14-19.doi: 10.12052/gdutxb.180146
洪英汉1,2, 郝志峰1,3, 麦桂珍1, 陈平华1
Hong Ying-han1,2, Hao Zhi-feng1,3, Mai Gui-zhen1, Chen Ping-hua1
摘要: 基于条件约束的方法可从数据集中学习到变量间的因果关系,并构建出因果网络图.但是在高维数据情况下,基于条件约束方法的缺点是准确率较低且耗时多,从而严重影响此类方法在高维数据中的应用推广.因此,本文提出了一种基于低阶条件独立测试的因果网络结构学习方法,采用低阶条件独立测试来加速构建因果粗糙骨架;利用分裂?合并策略把高维网络分裂成若干个子网络,并进行因果网络结构学习以提高其准确率;最后整合成完整的因果网络图.实验结果均验证了该方法的可行性.
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