Fast Forecasting of Unstable Data Streams for On-Demand Service Platforms

IF 5 3区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Yu Jeffrey Hu, Jeroen Rombouts, Ines Wilms
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引用次数: 0

Abstract

Practice- and policy-oriented abstract:The success of on-demand service platforms crucially hinges upon their ability to make fast and accurate demand forecasts so that its workers are always at the right time and location to serve customers promptly. Yet demand forecasting is challenging for several reasons. First, demand data are typically released as high-frequency streaming time series, which requires an algorithm that has a fast processing time. Second, a digital platform often operates in many different geographic regions, thereby giving rise to a large heterogeneous geographical collection of high-frequency demand streams that need to be forecast and requiring a scalable algorithm. Third, a platform business usually operates in an unstable, rapidly changing environment and faces irregular growth patterns, which requires agility when forecasting demand because slow reactions to such instabilities causes forecast performance to break down. We offer a novel forecast framework called fast forecasting of unstable data streams that is fast and scalable and automatically assesses changing environments without human intervention. We test our framework on a unique data set from a leading European on-demand delivery platform and a U.S. bicycle sharing system and find strong (i) forecast performance gains, (ii) financial gains, and (ii) computing time reduction from using our framework against several industry benchmarks.
为按需服务平台快速预测不稳定数据流
以实践和政策为导向的摘要:按需服务平台的成功与否,关键在于其能否快速、准确地预测需求,从而使其员工始终在正确的时间和地点及时为客户提供服务。然而,由于以下几个原因,需求预测具有挑战性。首先,需求数据通常以高频流时间序列的形式发布,这就要求算法具有快速的处理时间。其次,数字平台通常在许多不同的地理区域运营,因此会产生大量需要预测的高频需求流的异构地理集合,这就需要一种可扩展的算法。第三,平台业务通常在不稳定、快速变化的环境中运营,并面临不规则的增长模式,这就要求在预测需求时具有敏捷性,因为对这种不稳定性的缓慢反应会导致预测性能下降。我们提供了一种名为 "不稳定数据流快速预测 "的新型预测框架,该框架快速、可扩展,无需人工干预即可自动评估不断变化的环境。我们在来自欧洲领先的按需配送平台和美国共享单车系统的独特数据集上测试了我们的框架,并发现使用我们的框架后,与多个行业基准相比,(i) 预测性能显著提高,(ii) 财务收益显著增加,(ii) 计算时间显著减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.10
自引率
8.20%
发文量
120
期刊介绍: ISR (Information Systems Research) is a journal of INFORMS, the Institute for Operations Research and the Management Sciences. Information Systems Research is a leading international journal of theory, research, and intellectual development, focused on information systems in organizations, institutions, the economy, and society.
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