{"title":"带参数权重的动态流路网络上的最小遗憾 1 汇定位问题","authors":"Tetsuya Fujie, Yuya Higashikawa, Naoki Katoh, Junichi Teruyama, Yuki Tokuni","doi":"10.1007/s10878-024-01199-7","DOIUrl":null,"url":null,"abstract":"<p>This paper addresses the minmax regret 1-sink location problem on a dynamic flow path network with parametric weights. A <i>dynamic flow path network</i> consists of an undirected path with positive edge lengths, positive edge capacities, and nonnegative vertex weights. A path can be considered as a road, an edge length as the distance along the road, and a vertex weight as the number of people at the site. An edge capacity limits the number of people that can enter the edge per unit time. We consider the problem of locating a <i>sink</i> where all the people evacuate quickly. In our model, each weight is represented by a linear function of a common parameter <i>t</i>, and the decision maker who determines the sink location does not know the value of <i>t</i>. We formulate the problem under such uncertainty as the <i>minmax regret problem</i>. Given <i>t</i> and sink location <i>x</i>, the cost is the sum of arrival times at <i>x</i> for all the people determined by <i>t</i>. The regret for <i>x</i> under <i>t</i> is the gap between this cost and the optimal cost under <i>t</i>. The problem is to find the sink location minimizing the maximum regret over all <i>t</i>. For the problem, we propose an <span>\\(O(n^4 2^{\\alpha (n)} \\alpha (n)^2 \\log n)\\)</span> time algorithm, where <i>n</i> is the number of vertices in the network and <span>\\(\\alpha (\\cdot )\\)</span> is the inverse Ackermann function. Also, for the special case in which every edge has the same capacity, we show that the complexity can be reduced to <span>\\(O(n^3 2^{\\alpha (n)} \\alpha (n) \\log n)\\)</span>.</p>","PeriodicalId":50231,"journal":{"name":"Journal of Combinatorial Optimization","volume":"12 1","pages":""},"PeriodicalIF":0.9000,"publicationDate":"2024-08-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Minmax regret 1-sink location problems on dynamic flow path networks with parametric weights\",\"authors\":\"Tetsuya Fujie, Yuya Higashikawa, Naoki Katoh, Junichi Teruyama, Yuki Tokuni\",\"doi\":\"10.1007/s10878-024-01199-7\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>This paper addresses the minmax regret 1-sink location problem on a dynamic flow path network with parametric weights. A <i>dynamic flow path network</i> consists of an undirected path with positive edge lengths, positive edge capacities, and nonnegative vertex weights. A path can be considered as a road, an edge length as the distance along the road, and a vertex weight as the number of people at the site. An edge capacity limits the number of people that can enter the edge per unit time. We consider the problem of locating a <i>sink</i> where all the people evacuate quickly. In our model, each weight is represented by a linear function of a common parameter <i>t</i>, and the decision maker who determines the sink location does not know the value of <i>t</i>. We formulate the problem under such uncertainty as the <i>minmax regret problem</i>. Given <i>t</i> and sink location <i>x</i>, the cost is the sum of arrival times at <i>x</i> for all the people determined by <i>t</i>. The regret for <i>x</i> under <i>t</i> is the gap between this cost and the optimal cost under <i>t</i>. The problem is to find the sink location minimizing the maximum regret over all <i>t</i>. For the problem, we propose an <span>\\\\(O(n^4 2^{\\\\alpha (n)} \\\\alpha (n)^2 \\\\log n)\\\\)</span> time algorithm, where <i>n</i> is the number of vertices in the network and <span>\\\\(\\\\alpha (\\\\cdot )\\\\)</span> is the inverse Ackermann function. 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引用次数: 0
摘要
本文解决的是具有参数权重的动态流动路径网络上的最小遗憾单汇定位问题。动态流动路径网络由具有正边长、正边容量和非负顶点权重的无向路径组成。路径可视为一条道路,边长可视为沿路的距离,顶点权重可视为该地点的人数。边的容量限制了单位时间内能进入边的人数。我们考虑的问题是找到一个汇集点,让所有的人都能快速撤离。在我们的模型中,每个权重都由一个共同参数 t 的线性函数来表示,而决定水槽位置的决策者并不知道 t 的值。给定 t 和水槽位置 x,成本是由 t 决定的所有人员到达 x 的时间之和。x 在 t 条件下的遗憾是该成本与 t 条件下最优成本之间的差距。对于这个问题,我们提出了一种耗时(O(n^4 2^{\alpha (n)} \alpha (n)^2 \log n)的算法,其中 n 是网络中的顶点数,\(\alpha (\cdot )\)是反阿克曼函数。另外,对于每条边都有相同容量的特殊情况,我们证明复杂度可以降低到 \(O(n^3 2^{\alpha (n)} \alpha (n) \log n)\)。
Minmax regret 1-sink location problems on dynamic flow path networks with parametric weights
This paper addresses the minmax regret 1-sink location problem on a dynamic flow path network with parametric weights. A dynamic flow path network consists of an undirected path with positive edge lengths, positive edge capacities, and nonnegative vertex weights. A path can be considered as a road, an edge length as the distance along the road, and a vertex weight as the number of people at the site. An edge capacity limits the number of people that can enter the edge per unit time. We consider the problem of locating a sink where all the people evacuate quickly. In our model, each weight is represented by a linear function of a common parameter t, and the decision maker who determines the sink location does not know the value of t. We formulate the problem under such uncertainty as the minmax regret problem. Given t and sink location x, the cost is the sum of arrival times at x for all the people determined by t. The regret for x under t is the gap between this cost and the optimal cost under t. The problem is to find the sink location minimizing the maximum regret over all t. For the problem, we propose an \(O(n^4 2^{\alpha (n)} \alpha (n)^2 \log n)\) time algorithm, where n is the number of vertices in the network and \(\alpha (\cdot )\) is the inverse Ackermann function. Also, for the special case in which every edge has the same capacity, we show that the complexity can be reduced to \(O(n^3 2^{\alpha (n)} \alpha (n) \log n)\).
期刊介绍:
The objective of Journal of Combinatorial Optimization is to advance and promote the theory and applications of combinatorial optimization, which is an area of research at the intersection of applied mathematics, computer science, and operations research and which overlaps with many other areas such as computation complexity, computational biology, VLSI design, communication networks, and management science. It includes complexity analysis and algorithm design for combinatorial optimization problems, numerical experiments and problem discovery with applications in science and engineering.
The Journal of Combinatorial Optimization publishes refereed papers dealing with all theoretical, computational and applied aspects of combinatorial optimization. It also publishes reviews of appropriate books and special issues of journals.