Network effects complicate demand forecasting in general, and outlier detection in particular. For example, in transportation networks, sudden increases in demand for a specific destination will not only affect the legs arriving at that destination, but also connected legs nearby in the network. Network effects are particularly relevant when transport service providers, such as railway or coach companies, offer many multi-leg itineraries. In this paper, we present a novel method for generating automated outlier alerts, to support analysts in adjusting demand forecasts accordingly for reliable planning. To create such alerts, we propose a two-step method for detecting outlying demand from transportation network bookings. The first step clusters network legs to appropriately partition and pool booking patterns. The second step identifies outliers within each cluster to create a ranked alert list of affected legs. We show that this method outperforms analyses that independently consider each leg in a network, especially in highly-connected networks where most passengers book multi-leg itineraries. We illustrate the applicability on empirical data obtained from Deutsche Bahn and with a detailed simulation study. The latter demonstrates the robustness of the approach and quantifies the potential revenue benefits of adjusting for outlying demand in networks.
翻译:例如,在运输网络中,对特定目的地需求的突然增加不仅会影响到到达目的地的腿,而且会影响到网络附近的连接腿。当铁路或教练公司等运输服务提供商提供许多多腿路线时,网络效应特别相关。在本文中,我们提出了一个生成自动外围警报的新颖方法,以支持分析人员根据可靠规划对需求预测进行相应调整。为了创建这样的警报,我们建议了一种两步方法,以发现运输网络订票中的需求。第一步,集群网络腿,以适当分割和集合订票模式。第二步,确定每个集群内的外端,以建立受影响腿的排位警戒清单。我们表明,这种方法优于独立考虑网络中每条腿的分析,特别是在大多数乘客都记录多腿线路的网络中。我们说明了对从德意志-巴恩公司获得的经验数据的适用性,并进行了详细的模拟研究。后一步骤显示了方法的稳健性,并量化了在网络中调整外部需求的潜在收入效益。