Explainable machine learning for project management control

被引:8
|
作者
Ignacio Santos, Jose [1 ]
Pereda, Maria [2 ,3 ]
Ahedo, Virginia [1 ]
Manuel Galan, Jose [1 ]
机构
[1] Univ Burgos, Escuela Politecn Super, Dept Ingn Org, Ave Cantabria S-N, Burgos 09006, Spain
[2] Univ Politecn Madrid, Escuela Tecn Super Ingn Ind, Dept Ingn Org Adm empresas & Estadist, Grp Invest Ingn Org & Logist IOL, C Jose Gutierrez Abascal 2, Madrid 28006, Spain
[3] Grp Interdisciplinar Sistemas Complejos GISC, Madrid, Spain
关键词
Project management; Stochastic project control; Earned value management; Shapley values; Explainable machine learning; SHAP; EARNED VALUE MANAGEMENT; TOLERANCE LIMITS; RISK ANALYSIS; DURATION; PERFORMANCE; COST; CLASSIFICATIONS; UNCERTAINTY; REGRESSION; EXTENSION;
D O I
10.1016/j.cie.2023.109261
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Project control is a crucial phase within project management aimed at ensuring -in an integrated manner- that the project objectives are met according to plan. Earned Value Management -along with its various refinements- is the most popular and widespread method for top-down project control. For project control under uncertainty, Monte Carlo simulation and statistical/machine learning models extend the earned value framework by allowing the analysis of deviations, expected times and costs during project progress. Recent advances in explainable machine learning, in particular attribution methods based on Shapley values, can be used to link project control to activity properties, facilitating the interpretation of interrelations between activity characteristics and control objectives. This work proposes a new methodology that adds an explainability layer based on SHAP -Shapley Additive exPlanations- to different machine learning models fitted to Monte Carlo simulations of the project network during tracking control points. Specifically, our method allows for both prospective and retrospective analyses, which have different utilities: forward analysis helps to identify key relationships between the different tasks and the desired outcomes, thus being useful to make execution/ replanning decisions; and backward analysis serves to identify the causes of project status during project progress. Furthermore, this method is general, model-agnostic and provides quantifiable and easily interpretable information, hence constituting a valuable tool for project control in uncertain environments.
引用
收藏
页数:20
相关论文
共 50 条
  • [1] Explainable Machine Learning in Credit Risk Management
    Bussmann, Niklas
    Giudici, Paolo
    Marinelli, Dimitri
    Papenbrock, Jochen
    COMPUTATIONAL ECONOMICS, 2021, 57 (01) : 203 - 216
  • [2] Explainable Machine Learning in Credit Risk Management
    Niklas Bussmann
    Paolo Giudici
    Dimitri Marinelli
    Jochen Papenbrock
    Computational Economics, 2021, 57 : 203 - 216
  • [3] Machine learning control - explainable and analyzable methods
    Quade, Markus
    Isele, Thomas
    Abel, Markus
    PHYSICA D-NONLINEAR PHENOMENA, 2020, 412
  • [4] Explainable Machine Learning
    Garcke, Jochen
    Roscher, Ribana
    MACHINE LEARNING AND KNOWLEDGE EXTRACTION, 2023, 5 (01): : 169 - 170
  • [5] An Explainable Machine Learning Model for Chronic Wound Management Decisions
    Mombini, Haadi
    Tulu, Bengisu
    Strong, Diane
    Agu, Emmanuel
    Lindsay, Clifford
    Loretz, Lorraine
    Pedersen, Peder
    Dunn, Raymond
    DIGITAL INNOVATION AND ENTREPRENEURSHIP (AMCIS 2021), 2021,
  • [6] Explainable Machine Learning in Deployment
    Bhatt, Umang
    Xiang, Alice
    Sharma, Shubham
    Weller, Adrian
    Taly, Ankur
    Jia, Yunhan
    Ghosh, Joydeep
    Puri, Ruchir
    Moura, Jose M. F.
    Eckersley, Peter
    FAT* '20: PROCEEDINGS OF THE 2020 CONFERENCE ON FAIRNESS, ACCOUNTABILITY, AND TRANSPARENCY, 2020, : 648 - 657
  • [7] Leveraging explainable machine learning for enhanced management of lake water quality
    Hasani, Sajad Soleymani
    Arias, Mauricio E.
    Nguyen, Hung Q.
    Tarabih, Osama M.
    Welch, Zachariah
    Zhang, Qiong
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2024, 370
  • [8] An Explainable Machine Learning Model for Material Backorder Prediction in Inventory Management
    Ntakolia, Charis
    Kokkotis, Christos
    Karlsson, Patrik
    Moustakidis, Serafeim
    SENSORS, 2021, 21 (23)
  • [9] An explainable machine learning pipeline for backorder prediction in inventory management systems
    Charis, Ntakolia
    Christos, Kokkotis
    Serafeim, Moustakidis
    Elpiniki, Papageorgiou
    25TH PAN-HELLENIC CONFERENCE ON INFORMATICS WITH INTERNATIONAL PARTICIPATION (PCI2021), 2021, : 229 - 234
  • [10] Explainable Machine Learning for Credit Risk Management When Features are Dependent
    Do, Thanh Thuy
    Babaei, Golnoosh
    Pagnottoni, Paolo
    MEASUREMENT-INTERDISCIPLINARY RESEARCH AND PERSPECTIVES, 2024, 22 (04) : 315 - 340