Crowd movement guidance has been a fascinating problem in various fields, such as easing traffic congestion in unusual events and evacuating people from an emergency-affected area. To grab the reins of crowds, there has been considerable demand for a decision support system that can answer a typical question: ``what will be the outcomes of each of the possible options in the current situation. In this paper, we consider the problem of estimating the effects of crowd movement guidance from past data. To cope with limited amount of available data biased by past decision-makers, we leverage two recent techniques in deep representation learning for spatial data analysis and causal inference. We use a spatial convolutional operator to extract effective spatial features of crowds from a small amount of data and use balanced representation learning based on the integral probability metrics to mitigate the selection bias and missing counterfactual outcomes. To evaluate the performance on estimating the treatment effects of possible guidance, we use a multi-agent simulator to generate realistic data on evacuation scenarios in a crowded theater, since there are no available datasets recording outcomes of all possible crowd movement guidance. The results of three experiments demonstrate that our proposed method reduces the estimation error by at most 56% from state-of-the-art methods.
翻译:人群移动指导在各个领域都是一个令人着迷的问题,例如缓解异常事件交通拥堵和将人们从受紧急情况影响地区疏散出来。为了抓住人群的圈套,对决策支持系统的需求很大,该系统可以回答一个典型的问题:“在当前形势下,每一种可能选择方案的结果是什么?在本文件中,我们考虑从过去的数据中估计人群移动指导的效果的问题。为了应对过去决策者偏差的有限可用数据,我们利用最近两个技术来进行深层代表性学习,用于空间数据分析和因果推断。我们使用空间革命操作员从少量数据中提取人群的有效空间特征,并使用均衡的代表性学习,根据综合概率指标来减少选择偏差和缺失的反事实结果。为了评估估计潜在指导的治疗效果的绩效,我们使用多试剂模拟器在拥挤的剧院生成关于疏散情景的现实数据,因为没有可用的数据集记录所有可能的人群移动指导结果。我们三个实验的结果表明,我们提议的方法是从状态方法中减少56%的估计误差。