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
  • [31] Interpretable machine learning for dermatological disease detection: Bridging the gap between accuracy and explainability
    Nasir, Yusra
    Kadian, Karuna
    Sharma, Arun
    Dwivedi, Vimal
    Computers in Biology and Medicine, 2024, 179
  • [32] Explainability and extrapolation of machine learning models for predicting the glass transition temperature of polymers
    Babbar, Agrim
    Ragunathan, Sriram
    Mitra, Debirupa
    Dutta, Arnab
    Patra, Tarak K.
    JOURNAL OF POLYMER SCIENCE, 2024, 62 (06) : 1175 - 1186
  • [33] Enhancing the accuracy of metocean hindcasts with machine learning models
    Costa, Mariana O.
    Campos, Ricardo M.
    Soares, C. Guedes
    OCEAN ENGINEERING, 2023, 287
  • [34] Understanding the Effect of Accuracy on Trust in Machine Learning Models
    Yin, Ming
    Vaughan, Jennifer Wortman
    Wallach, Hanna
    CHI 2019: PROCEEDINGS OF THE 2019 CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS, 2019,
  • [35] AI Explainability 360: An Extensible Toolkit for Understanding Data and Machine Learning Models
    Arya, Vijay
    Bellamy, Rachel K. E.
    Chen, Pin-Yu
    Dhurandhar, Amit
    Hind, Michael
    Hoffman, Samuel C.
    Houde, Stephanie
    Liao, Q. Vera
    Luss, Ronny
    Mojsilovic, Aleksandra
    Mourad, Sami
    Pedemonte, Pablo
    Raghavendra, Ramya
    Richards, John T.
    Sattigeri, Prasanna
    Shanmugam, Karthikeyan
    Singh, Moninder
    Varshney, Kush R.
    Wei, Dennis
    Zhang, Yunfeng
    JOURNAL OF MACHINE LEARNING RESEARCH, 2020, 21
  • [36] Uncertainty quantification driven machine learning for improving model accuracy in imbalanced regression tasks
    Dolar, Tuba
    Chen, Jie
    Chen, Wei
    EXPERT SYSTEMS WITH APPLICATIONS, 2025, 261
  • [37] The Price of Explainability in Machine Learning Models for 100-Day Readmission Prediction in Heart Failure: Retrospective, Comparative, Machine Learning Study
    Soliman, Amira
    Agvall, Bjorn
    Etminani, Kobra
    Hamed, Omar
    Lingman, Markus
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2023, 25
  • [38] A Robust Learning Methodology for Uncertainty-Aware Scientific Machine Learning Models
    Costa, Erbet Almeida
    Rebello, Carine de Menezes
    Fontana, Marcio
    Schnitman, Leizer
    Nogueira, Idelfonso Bessa dos Reis
    MATHEMATICS, 2023, 11 (01)
  • [39] Justificatory explanations: a step beyond explainability in machine learning
    Guersenzvaig, A.
    Casacuberta, D.
    EUROPEAN JOURNAL OF PUBLIC HEALTH, 2023, 33
  • [40] Exploring the Explainability of Machine Learning Algorithms for Prostate Cancer
    Provenzano, Destie
    Rao, Yuan James
    Loew, Murray
    Haji-Momenian, Shawn
    2022 IEEE APPLIED IMAGERY PATTERN RECOGNITION WORKSHOP, AIPR, 2022,