论文标题
汤:时空需求预测和竞争性供应
SOUP: Spatial-Temporal Demand Forecasting and Competitive Supply
论文作者
论文摘要
我们考虑一个设置,其中包含不断发展的请求,以便在截止日期之前从原点到目的地运输到目的地,以及一套能够为请求服务的代理。在这种情况下,任务授权是将代理分配给请求,以便将代理的平均空闲时间最小化。一个例子是安排出租车(代理商)来满足传入的旅行请求,同时确保出租车尽可能少。在本文中,我们研究了空间需求预测和竞争性供应(汤)的问题。我们通过两个步骤解决问题。首先,我们构建了一个颗粒模型,该模型提供了请求的时空预测。具体而言,我们提出了一个空间图卷积顺序学习(ST-GCSL)算法,该算法可以预测跨位置和时间插槽的服务请求。其次,我们提供了路由代理人要求起源的方法,同时避免了代理商之间的竞争。特别是,我们开发了一种需求感知的路线计划(DROP)算法,该算法既考虑到时空预测和供应数字。我们报告了对现实世界和合成数据的广泛实验,这些实验可洞悉解决方案的性能,并表明它能够超过最先进的建议。
We consider a setting with an evolving set of requests for transportation from an origin to a destination before a deadline and a set of agents capable of servicing the requests. In this setting, an assignment authority is to assign agents to requests such that the average idle time of the agents is minimized. An example is the scheduling of taxis (agents) to meet incoming requests for trips while ensuring that the taxis are empty as little as possible. In this paper, we study the problem of spatial-temporal demand forecasting and competitive supply (SOUP). We address the problem in two steps. First, we build a granular model that provides spatial-temporal predictions of requests. Specifically, we propose a Spatial-Temporal Graph Convolutional Sequential Learning (ST-GCSL) algorithm that predicts the service requests across locations and time slots. Second, we provide means of routing agents to request origins while avoiding competition among the agents. In particular, we develop a demand-aware route planning (DROP) algorithm that considers both the spatial-temporal predictions and the supplydemand state. We report on extensive experiments with realworld and synthetic data that offer insight into the performance of the solution and show that it is capable of outperforming the state-of-the-art proposals.