Ensemble Learning Applications in Multiple Industries: A Review

Journal Title: Information Dynamics and Applications - Year 2022, Vol 1, Issue 1

Abstract

This study proposes a systematic review of the application of Ensemble learning (EL) in multiple industries. This study aims to review prevailing application in multiple industries to guide for the future landing application. This study also proposes a research method based on Systematic Literature Review (SLR) to address EL literature and help advance our understanding of EL for future optimization. The literature is divided three categories by the National Bureau of Statistics of China (NBSC): the primary industry, the secondary industry and the tertiary industry. Among existing problems in industrial management systems, the frequently discussed are quality control, prediction, detection, efficiency and satisfaction. In addition, given the huge potential in various fields, the gap and further directions are also suggested. This study is essential to industry managers and cross-disciplinary scholars to lead a guideline to solve the issues in practical work, as it provided a panorama of application domains and current problems. This is the first review of the application of EL in multiple industries in the literature. The paper has potential values to broaden the application area of EL, and to proposed a novel research method based SLR to sort out literature.

Authors and Affiliations

Kuo-Yi Lin, Chancy Huang

Keywords

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  • EP ID EP732622
  • DOI https://doi.org/10.56578/ida010106
  • Views 91
  • Downloads 0

How To Cite

Kuo-Yi Lin, Chancy Huang (2022). Ensemble Learning Applications in Multiple Industries: A Review. Information Dynamics and Applications, 1(1), -. https://europub.co.uk./articles/-A-732622