大规模生物网络定位的随机坐标下降Frank-Wolfe算法

Yijie Wang, Xiaoning Qian
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引用次数: 1

摘要

随着生物医学研究中可用的“大”数据越来越多,从这些大数据中获得准确和可重复的生物学知识给计算带来了巨大的挑战。在本文中,我们提出了一种高度可扩展的随机坐标下降Frank-Wolfe算法,用于紧凑凸约束的凸优化,该算法在分析生物医学数据以更好地理解细胞和疾病机制方面具有多种应用。我们专注于实现衍生的随机坐标下降算法,以对齐蛋白质-蛋白质相互作用网络,以识别基于IsoRank的保守功能途径。随机算法自然会降低每次迭代的计算成本。更重要的是,我们证明了它达到了线性收敛速率。数值实验结果表明,该方法能够有效地解决大规模生物网络的定位问题。
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Stochastic coordinate descent Frank-Wolfe algorithm for large-scale biological network alignment
With increasingly "big" data available in biomédical research, deriving accurate and reproducible biology knowledge from such big data imposes enormous computational challenges. In this paper, we propose a highly scalable randomized coordinate descent Frank-Wolfe algorithm for convex optimization with compact convex constraints, which has diverse applications in analyzing biomédical data for better understanding cellular and disease mechanisms. We focus on implementing the derived stochastic coordinate descent algorithm to align protein-protein interaction networks for identifying conserved functional pathways based on IsoRank. The stochastic algorithm naturally leads to the decreased computational cost for each iteration. More importantly, we show that it achieves a linear convergence rate. Our numerical test confirms the improved efficiency of this technique for the large-scale biological network alignment problem.
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