Hierarchical and Dynamic k-Path Covers

Takuya Akiba, Yosuke Yano, Naoto Mizuno
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引用次数: 3

Abstract

A metric-independent data structure for spatial networks called k-all-path cover (k-APC) has recently been proposed. It involves a set of vertices that covers all paths of size k, and is a general indexing technique that can accelerate various path-related processes on spatial networks, such as route planning and path subsampling to name a few. Although it is a promising tool, it currently has drawbacks pertaining to its construction and maintenance. First, k-APCs, especially for large values of k, are computationally too expensive. Second, an important factor related to quality is ignored by a prevalent construction algorithm. Third, an existing algorithm only focuses on static networks. To address these issues, we propose novel k-APC construction and maintenance algorithms. Our algorithms recursively construct the layers of APCs, which we call the k-all-path cover hierarchy, by using vertex cover heuristics. This allows us to extract k-APCs for various values of k from the hierarchy. We also devise an algorithm to maintain k-APC hierarchies on dynamic networks. Our experiments showed that our construction algorithm can yield high solution quality, and has a short running time for large values of k. They also verified that our dynamic algorithm can handle an edge weight change within 40 ms.
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分层和动态k路径覆盖
最近提出了一种与度量无关的空间网络数据结构,称为k-全路径覆盖(k-APC)。它涉及一组覆盖大小为k的所有路径的顶点,是一种通用的索引技术,可以加速空间网络上各种与路径相关的过程,例如路线规划和路径子采样等等。虽然它是一个很有前途的工具,但它目前在构建和维护方面存在缺陷。首先,k- apc,特别是对于较大的k值,在计算上过于昂贵。其次,普遍的构造算法忽略了与质量相关的一个重要因素。第三,现有算法只关注静态网络。为了解决这些问题,我们提出了新的k-APC构建和维护算法。我们的算法通过使用顶点覆盖启发式递归地构建apc层,我们称之为k-全路径覆盖层次结构。这允许我们从层次结构中提取不同k值的k- apc。我们还设计了一种在动态网络上保持k-APC层次结构的算法。我们的实验表明,我们的构造算法可以产生高的解质量,并且对于大k值具有短的运行时间。他们还验证了我们的动态算法可以在40 ms内处理边缘权值的变化。
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