Efficient algorithms for optimal homology problems and their applications

Kostiantyn Lyman
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Abstract

The multiscale simplicial flat norm (MSFN) of a d-cycle is a family of optimal homology problems indexed by a scale parameter {\lambda} >= 0. Each instance (mSFN) optimizes the total weight of a homologous d-cycle and a bounded (d + 1)-chain, with one of the components being scaled by {\lambda}.We propose a min-cost flow formulation for solving instances of mSFN at a given scale {\lambda} in polynomial time in the case of (d + 1)-dimensional simplicial complexes embedded in {R^(d + 1)} and homology over Z. Furthermore, we establish the weak and strong dualities for mSFN, as well as the complementary slackness conditions. Additionally, we prove optimality conditions for directed flow formulations with cohomology over Z+. Next, we propose an approach based on the multiscale flat norm, a notion of distance between objects defined in the field of geometric measure theory, to compute the distance between a pair of planar geometric networks. Using a triangulation of the domain containing the input networks, the flat norm distance between two networks at a given scale can be computed by solving a linear program. In addition, this computation automatically identifies the 2D regions (patches) that capture where the two networks are different. We demonstrate through 2D examples that the flat norm distance can capture the variations of inputs more accurately than the commonly used Hausdorff distance. As a notion of stability, we also derive upper bounds on the flat norm distance between a simple 1D curve and its perturbed version as a function of the radius of perturbation for a restricted class of perturbations. We demonstrate our approach on a set of actual power networks from a county in the USA. Our approach can be extended to validate synthetic networks created for multiple infrastructures such as transportation, communication, water, and gas networks.
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最优同调问题的高效算法及其应用
d 循环的多尺度简单平面规范(MSFN)是由尺度参数 {\lambda} >= 0 索引的最优同构问题族。每个实例(mSFN)优化同构 d 循环和有边(d + 1)链的总权重,其中一个分量的尺度为 {\lambda} 。在嵌入{R^(d + 1)}的 (d + 1)维简单复数和 Z 上同调的情况下,我们提出了一种最小成本流公式,用于在给定规模 {\lambda} 下以多项式时间求解 mSFN 的实例。此外,我们还证明了具有 Z+ 上同调的有向流公式的最优性条件。接下来,我们提出了一种基于多尺度平面规范的方法,即几何度量理论领域定义的对象间距离概念,来计算一对平面几何网络之间的距离。通过对包含输入网络的域进行三角剖分,可以通过求解线性方程来计算两个网络在给定尺度下的平面法线距离。此外,这种计算方法还能自动识别捕捉两个网络不同之处的二维区域(斑块)。作为稳定性的一个概念,我们还推导出了简单一维曲线与其扰动版本之间的平规范距离的上限,它是扰动半径对受限扰动类别的函数。我们在美国一个县的一组实际电力网络上演示了我们的方法。我们的方法可以扩展到验证为多种基础设施(如交通、通信、水和天然气网络)创建的合成网络。
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