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按需服务平台不稳定数据流的快速预测

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

Information Systems Research · 2024
被引 1
人大 AFT50UTD24ABS 4*

中文导读

针对按需服务平台需求预测面临的快速处理、可扩展性和环境不稳定三大挑战,提出了一种名为快速预测不稳定数据流的新框架,并在欧洲配送平台和美国共享单车数据上验证了其性能提升和计算时间减少。

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.

需求预测数据流挖掘按需服务平台运营管理