An efficient top-down search algorithm for learning Boolean networks of gene expression
作者:Dougu Nam, Seunghyun Seo, Sangsoo Kim
摘要
Boolean networks provide a simple and intuitive model for gene regulatory networks, but a critical defect is the time required to learn the networks. In recent years, efficient network search algorithms have been developed for a noise-free case and for a limited function class. In general, the conventional algorithm has the high time complexity of O(22k mnk+1) where m is the number of measurements, n is the number of nodes (genes), and k is the number of input parents. Here, we suggest a simple and new approach to Boolean networks, and provide a randomized network search algorithm with average time complexity O (mnk+1/ (log m)(k−1)). We show the efficiency of our algorithm via computational experiments, and present optimal parameters. Additionally, we provide tests for yeast expression data.
论文关键词:Boolean network, Data consistency, Random superset selection, Core search, Coupon collection problem
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论文官网地址:https://doi.org/10.1007/s10994-006-9014-z