Delay Prediction for Managing Multiclass Service Systems: An Investigation of Queueing Theory and Machine Learning Approaches

被引:7
作者
Chocron, Elisheva [1 ]
Cohen, Izack [2 ]
Feigin, Paul [1 ]
机构
[1] Technion Israel Inst Technol, IL-3200003 Hefa, Israel
[2] Bar Ilan Univ, Fac Engn, IL-5290002 Ramat Gan, Israel
关键词
Delay prediction; machine learning; service systems; queueing theory; NETWORKS;
D O I
10.1109/TEM.2022.3222094
中图分类号
F [经济];
学科分类号
02 ;
摘要
Customer waiting time prediction is key to managing service systems. Predicting how long a customer will wait for service at the time of their arrival can provide important information to the customer and serve as a tool for the operations manager. Recent studies that suggested machine learning algorithms for waiting time prediction as an alternative to the standard queueing theory approaches investigated specific systems with mixed results regarding the superiority of a particular approach. We provide a systematic investigation of common violations of queueing theory assumptions on waiting time prediction in the context of single-queue many-server systems. These violations include nonstationarity, nonexponential service times, state-dependent service times, abandonments, and customers with different priorities. Using different machine learning models as well as queueing-theory-based methods, we seek to determine under what regimes machine learning prediction is to be preferred to queueing-theory-based predictors. Our results suggest that queueing theory models produce comparable and frequently better predictions versus machine learning algorithms at a much lower computational cost. Under other assumptions, such as high priority for a specific type of customer, machine learning predictions may outperform queueing theory predictions. Our results may guide the selection of a delay prediction approach for service systems.
引用
收藏
页码:4469 / 4479
页数:11
相关论文
共 39 条
  • [1] Ambati Pradeep, 2020, PROCEEDINGS OF SC20: THE INTERNATIONAL CONFERENCE FOR HIGH PERFORMANCE COMPUTING, NETWORKING, STORAGE AND ANALYSIS (SC20)
  • [2] Accurate Emergency Department Wait Time Prediction
    Ang, Erjie
    Kwasnick, Sara
    Bayati, Mohsen
    Plambeck, Erica L.
    Aratow, Michael
    [J]. M&SOM-MANUFACTURING & SERVICE OPERATIONS MANAGEMENT, 2016, 18 (01) : 141 - 156
  • [3] The Big Data Newsvendor: Practical Insights from Machine Learning
    Ban, Gah-Yi
    Rudin, Cynthia
    [J]. OPERATIONS RESEARCH, 2019, 67 (01) : 90 - 108
  • [4] Towards a real-time prediction of waiting times in emergency departments: A comparative analysis of machine learning techniques
    Benevento, Elisabetta
    Aloini, Davide
    Squicciarini, Nunzia
    [J]. INTERNATIONAL JOURNAL OF FORECASTING, 2023, 39 (01) : 192 - 208
  • [5] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [6] Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
  • [7] Statistical analysis of a telephone call center: A queueing-science perspective
    Brown, L
    Gans, N
    Mandelbaum, A
    Sakov, A
    Shen, HP
    Zeltyn, S
    Zhao, L
    [J]. JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2005, 100 (469) : 36 - 50
  • [8] Cross-item learning for volatile demand forecasting: An intervention with predictive analytics
    Chuang, Howard Hao-Chun
    Chou, Yen-Chun
    Oliva, Rogelio
    [J]. JOURNAL OF OPERATIONS MANAGEMENT, 2021, 67 (07) : 828 - 852
  • [9] Minimizing mortality in a mass casualty event: fluid networks in support of modeling and staffing
    Cohen, Izack
    Mandelbaum, Avishai
    Zychlinski, Noa
    [J]. IIE TRANSACTIONS, 2014, 46 (07) : 728 - 741
  • [10] Cooper Robert B, 1981, Proceedings of the ACM'81 conference, P119