A Method of Combining HSSE-tree and Binary Label to Compute All Minimal Hitting Sets

W. Feng, Min Du, Qi Zhao, Dong Wang
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Abstract

Computing all minimal hitting sets (MHSs) is a key step of model-based diagnosis. A novel method to compute all MHSs called Binary-label HSSE is put forward, which combines HSSE-tree and binary label. In the method, binary digits is used to mark the real elements of the nodes, and effective pruning and expanding strategies are used to avoid the main problem of HSSE-tree, the explosive growth of the expanded nodes and supersets of MHSs along with the dimension of the problems. Additionally, computing between binary digits can avoid the traverse of every element in a node when judging whether the node is a MHS, which also contributes to the significant decrease of the run time. At last, the data structure of Binary-label HSSE is changed to dynamic array from dynamic linked list, which further decreases the run time of the method. Simulation results show that Binary-label HSSE method costs much less space and time than HSSE-tree method.
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一种结合hsse树和二叉标记计算所有最小命中集的方法
计算所有最小命中集(mhs)是基于模型诊断的关键步骤。将HSSE树与二标号相结合,提出了一种计算所有hss的新方法——二标号HSSE。该方法采用二进制数标记节点的实元素,并采用有效的剪枝和扩展策略,避免了hsse树的主要问题,即扩展节点和mhs超集随问题维数的爆炸式增长。此外,二进制数之间的计算可以避免在判断节点是否为MHS时遍历节点中的每个元素,这也有助于显著减少运行时间。最后,将二标号HSSE的数据结构由动态链表改为动态数组,进一步缩短了方法的运行时间。仿真结果表明,二标签HSSE方法比HSSE树方法节省了大量的空间和时间。
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