Validation of machine learning models through statistical field experiments

被引:0
|
作者
Toaldo, Alexsandro [1 ]
Filho, Arnaldo Rabello de Aguiar Vallim [2 ]
Oyadomari, Jose Carlos Tiomatsu [2 ]
Neto, Octavio Ribeiro de Mendonca [2 ]
机构
[1] Univ Presbiteriana Mackenzie, Financas & Controladoria, Sao Paulo, Brazil
[2] Univ Presbiteriana Mackenzie, Sao Paulo, Brazil
关键词
machine learning; interventionist research; statistical field experiment; industrial process efficiency; INTERVENTIONIST RESEARCH;
D O I
暂无
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
Objective - This article presents a practical application with the development of a statistical field experiment in a premium aluminum can industry in the United States, aiming to statistically validate results from machine learning (ML) models, built in a previous phase of the study. Methodology: This study uses concepts of interventionist research, which involves field experiments where the researcher and host organization work together seeking to experiment in the system under study, and through observation generate knowledge. Originality/Relevance: Regarding originality, it is not common to find ML models validated by planned field experiments, followed by rigorous statistical analysis. And the proposal relevance is due to its contribution to the literature and the possibilities of replicating the study on a larger scale, in the company itself or in any other company that faces similar challenges. Main Results: In a previous phase of the study, ML models identified the variables with the greatest impact on inefficiencies (scrap generation) in an aluminum can production process. These variables were validated in this phase of the study, through a statistical field experiment, confirming the statistical significance of the ML model results. Theoretical and Practical Contributions: The research contributes in practical and scientific terms, as the statistical validation of ML models by planned field experiments is a contribution to the applied science literature, in addition to practical possibilities. Likewise, despite being widely used in different areas, interventionist research still presents an important gap in applied social sciences, especially in the management of industrial processes.
引用
收藏
页数:28
相关论文
共 50 条
  • [31] Statistical and machine learning models for optimizing energy in parallel applications
    Endrei, Mark
    Jin, Chao
    Minh Ngoc Dinh
    Abramson, David
    Poxon, Heidi
    DeRose, Luiz
    de Supinski, Bronis R.
    INTERNATIONAL JOURNAL OF HIGH PERFORMANCE COMPUTING APPLICATIONS, 2019, 33 (06): : 1079 - 1097
  • [32] Accuracy and explainability of statistical and machine learning xG models in football
    Cefis, Mattia
    Carpita, Maurizio
    STATISTICS, 2025, 59 (02) : 426 - 445
  • [34] Machine learning and statistical models for analyzing multilevel patent data
    Qi, Sunyun
    Zhang, Yu
    Gu, Hua
    Zhu, Fei
    Gao, Meiying
    Liang, Hongxiao
    Zhang, Qifeng
    Gao, Yanchao
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [35] Machine learning and statistical models for predicting indoor air quality
    Wei, Wenjuan
    Ramalho, Olivier
    Malingre, Laeticia
    Sivanantham, Sutharsini
    Little, John C.
    Mandin, Corinne
    INDOOR AIR, 2019, 29 (05) : 704 - 726
  • [36] statistical regression and classification: from linear models to machine learning
    Maronna, Ricardo
    STATISTICAL PAPERS, 2020, 61 (02) : 917 - 918
  • [37] Machine learning and statistical models for analyzing multilevel patent data
    Sunyun Qi
    Yu Zhang
    Hua Gu
    Fei Zhu
    Meiying Gao
    Hongxiao Liang
    Qifeng Zhang
    Yanchao Gao
    Scientific Reports, 13
  • [38] Empirical Validation of Website Quality Using Statistical and Machine Learning Methods
    Dhiman, Poonam
    Anjali
    2014 5TH INTERNATIONAL CONFERENCE CONFLUENCE THE NEXT GENERATION INFORMATION TECHNOLOGY SUMMIT (CONFLUENCE), 2014, : 286 - 291
  • [39] Understanding the Magnetic Microstructure through Experiments and Machine Learning Algorithms
    Talapatra, Abhishek
    Gajera, Udaykumar
    Prasad, P. Syam
    Chelvane, Jeyaramane Arout
    Mohanty, Jyoti Ranjan
    ACS APPLIED MATERIALS & INTERFACES, 2022, 14 (44) : 50318 - 50330
  • [40] Validation of Acetylcholinesterase Inhibition Machine Learning Models for Multiple Species
    Vignaux, Patricia A.
    Lane, Thomas R.
    Urbina, Fabio
    Gerlach, Jacob
    Puhl, Ana C.
    Snyder, Scott H.
    Ekins, Sean
    CHEMICAL RESEARCH IN TOXICOLOGY, 2023, 36 (02) : 188 - 201