This paper addresses the minmax regret 1-sink location problem on dynamic flow path networks with parametric weights. We are given a dynamic flow network consisting 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 in the network, to which all the people evacuate from the vertices as quickly as possible. In our model, each weight is represented by a linear function in a common parameter $t$, and the decision maker who determines the location of a sink does not know the value of $t$. We formulate the sink location problem under such uncertainty as the minmax regret problem. Given $t$ and a sink location $x$, the cost of $x$ under $t$ 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 the cost of $x$ under $t$ and the optimal cost under $t$. The task of the problem is formulated as the one to find a sink location that minimizes the maximum regret over all $t$. For the problem, we propose an $O(n^4 2^{\alpha(n)} \alpha(n) \log n)$ 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 $O(n^3 2^{\alpha(n)} \alpha(n) \log n)$.
翻译:本文用参数重量处理动态流路网中的最小马克斯遗憾 1 sink 位置问题。 我们得到一个动态流网络, 由一条无方向路径组成, 边长正, 边缘能力和非负顶部重量。 路径可以被视为一条道路, 路边距离的边缘长度, 和点内人数的顶点重量。 边能力限制每单位时间进入边缘的人数。 我们考虑在网络中找到一个水槽的问题, 所有人尽快从顶端撤离。 在我们的模型中, 每一个重量由共同参数$的线性函数代表 。 确定水槽位置的决策人并不了解美元的价值。 我们把汇位置问题放在像微粒遗憾这样的不确定性之下。 美元和美元下方位的费用是美元, 美元下方的费用是美元。 最坏的是, 美元下方的汇率是美元, 方位下方成本是美元, 方位是美元。