Explainability Versus Accuracy of Machine Learning Models: The Role of Task Uncertainty and Need for Interaction with the Machine Learning Model

被引:0
|
作者
Hammann, Dominik [1 ]
Wouters, Marc [1 ,2 ]
机构
[1] Karlsruhe Inst Technol, Dept Econ & Management, Kaiserstr 89, D-76133 Karlsruhe, Germany
[2] Univ Amsterdam, Amsterdam Business Sch, Amsterdam, Netherlands
关键词
Machine learning; Explainability; Cost estimation; Task uncertainty; ARTIFICIAL NEURAL-NETWORKS; MANAGEMENT CONTROL-SYSTEMS; SUPPORT VECTOR MACHINES; FUZZY FRONT-END; PRODUCT DEVELOPMENT; COST ESTIMATION; INCREMENTAL INNOVATION; TRADE-OFF; INTELLIGENCE; DESIGN;
D O I
10.1080/09638180.2025.2463961
中图分类号
F8 [财政、金融];
学科分类号
0202 ;
摘要
This paper investigates the importance of explainability versus accuracy of machine learning (ML) models. We propose that greater task uncertainty makes people want to interact more with the ML model, which increases the importance of explainability relative to accuracy. We focus on the use of ML models for product cost estimation during new product development. The paper provides mixed-methods evidence on the trade-off between explainability and accuracy of ML models. Specifically, we find support for an inverse relationship between explainability and accuracy from the perspective of cost experts. We also find that the accurate but complex and less explainable ML model of gradient boosted regression (GBR) was preferred in only a few situations; mostly, the more basic, better explainable models of multiple linear regression (MLR) and case-based reasoning (CBR) were preferred, although these were less accurate. This suggests that lack of explainability can indeed be a major limitation for the application of ML models. Furthermore, we investigate specific characteristics that could increase task uncertainty and the importance of explainability in our context: project unpredictability, product cost granularity, predecessor product availability, target cost gap, and product development phase.
引用
收藏
页数:34
相关论文
共 50 条
  • [1] Accuracy and explainability of statistical and machine learning xG models in football
    Cefis, Mattia
    Carpita, Maurizio
    STATISTICS, 2025, 59 (02) : 426 - 445
  • [2] Explainability of Machine Learning Models for Bankruptcy Prediction
    Park, Min Sue
    Son, Hwijae
    Hyun, Chongseok
    Hwang, Hyung Ju
    IEEE ACCESS, 2021, 9 : 124887 - 124899
  • [3] Adversarial Robustness and Explainability of Machine Learning Models
    Gafur, Jamil
    Goddard, Steve
    Lai, William K. M.
    PRACTICE AND EXPERIENCE IN ADVANCED RESEARCH COMPUTING 2024, PEARC 2024, 2024,
  • [4] Interpretability and Explainability of Machine Learning Models: Achievements and Challenges
    Henriques, J.
    Rocha, T.
    de Carvalho, P.
    Silva, C.
    Paredes, S.
    INTERNATIONAL CONFERENCE ON BIOMEDICAL AND HEALTH INFORMATICS 2022, ICBHI 2022, 2024, 108 : 81 - 94
  • [6] Accuracy and uncertainty of geostatistical models versus machine learning for digital mapping of soil calcium and potassium
    Amin Sharififar
    Environmental Monitoring and Assessment, 2022, 194
  • [7] Tuning machine learning dropout for subsurface uncertainty model accuracy
    Maldonado-Cruz, Eduardo
    Pyrcz, Michael J.
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2021, 205
  • [8] The Role of Explainability in Assuring Safety of Machine Learning in Healthcare
    Jia, Yan
    McDermid, John
    Lawton, Tom
    Habli, Ibrahim
    IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING, 2022, 10 (04) : 1746 - 1760
  • [9] Transparency, auditability, and explainability of machine learning models in credit scoring
    Buecker, Michael
    Szepannek, Gero
    Gosiewska, Alicja
    Biecek, Przemyslaw
    JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 2022, 73 (01) : 70 - 90
  • [10] Task Completion Time Prediction Scaled by Machine Learning Model Uncertainty
    Kawaguchi, Shumpei
    Ohsita, Yuichi
    Kawashima, Masahisa
    Shimonishi, Hideyuki
    2024 20TH INTERNATIONAL CONFERENCE ON NETWORK AND SERVICE MANAGEMENT, CNSM 2024, 2024,