An Improved Method for Finding Attractors of Large-Scale Asynchronous Boolean Networks

Giang V. Trinh, K. Hiraishi
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引用次数: 4

Abstract

Attractor detection in Asynchronous Boolean Networks (ABNs) is very challenging due to the high complexity of the state transition graph of an ABN. Recently, an efficient method (called FVS-ARBN) has been proposed for exactly finding attractors of an ABN. FVS-ARBN uses a Feedback Vertex Set (FVS) to get a candidate set of states, then filters out this set by checking the reachability in ABNs. This method gives promising results; however, it still needs to be improved to handle larger networks. In this paper, we propose a new method (named iFVS-ABN) that includes two improvements to FVS-ARBN. First, we propose a reasonable combination of multiple existing techniques to efficiently check the reachability in ABNs. Second, we formally state and prove a relation between a Negative Feedback Vertex Set (NFVS) and the dynamics of an ABN. Based on this relation, we propose to use an NFVS instead of an FVS to get the candidate set of states. Experimental results show that the two improvements are effective and the improved method outperforms the original one.
一种寻找大规模异步布尔网络吸引子的改进方法
由于异步布尔网络的状态转移图的高度复杂性,异步布尔网络中的吸引子检测非常具有挑战性。最近,人们提出了一种精确寻找ABN吸引子的有效方法(称为FVS-ARBN)。FVS- arbn使用反馈顶点集(FVS)获得候选状态集,然后通过检查abn中的可达性来过滤掉该候选状态集。该方法给出了令人满意的结果;然而,它仍然需要改进以处理更大的网络。在本文中,我们提出了一种新的方法(命名为iFVS-ABN),它包含了对FVS-ARBN的两个改进。首先,我们提出了多种现有技术的合理组合,以有效地检查abn的可达性。其次,我们正式陈述并证明了负反馈顶点集(NFVS)与ABN动力学之间的关系。基于这种关系,我们建议使用NFVS来代替FVS来获得候选状态集。实验结果表明,两种改进方法都是有效的,改进后的方法优于原方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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