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Efficient and Trustworthy Federated Learning-Based Explainable Anomaly Detection: Challenges, Methods, and Future Directions

In: Artificial Intelligence for Smart Manufacturing

Author

Listed:
  • Do Thu Ha

    (University of Lille, ENSAIT, ULR 2461 - GEMTEX - Génie et Matériaux Textiles)

  • Ta Phuong Bac

    (International Research Institute for Artificial Intelligence and Data Science, Dong A University)

  • Kim Duc Tran

    (International Research Institute for Artificial Intelligence and Data Science, Dong A University)

  • Kim Phuc Tran

    (University of Lille, ENSAIT, ULR 2461 - GEMTEX - Génie et Matériaux Textiles)

Abstract

Artificial Intelligence (AI) and especially Machine Learning (ML) are the driving energy behind industrial and technological transformation. With the transition from industry 4.0 to 5.0, smart manufacturing proves the efficiency in industry, where systems become increasingly complex, producing massive data, necessitating more demand for transparency, privacy, and performance. Federated learning has demonstrated its effectiveness in various applications, however, there are still exist certain challenges that should be addressed. Thus, in this chapter, a comprehensive perspective on federated learning-based anomaly detection is provided. The problems have posed concerns and should be taken into account when researching and deploying. Then, our perspectives about efficient and trustworthy federated learning-based explainable anomaly detection systems are demonstrated as an end-to-end unified framework. Finally, to provide a complete picture of future research direction, the quantum aspect is introduced in the subject of machine learning.

Suggested Citation

  • Do Thu Ha & Ta Phuong Bac & Kim Duc Tran & Kim Phuc Tran, 2023. "Efficient and Trustworthy Federated Learning-Based Explainable Anomaly Detection: Challenges, Methods, and Future Directions," Springer Series in Reliability Engineering, in: Kim Phuc Tran (ed.), Artificial Intelligence for Smart Manufacturing, pages 145-166, Springer.
  • Handle: RePEc:spr:ssrchp:978-3-031-30510-8_8
    DOI: 10.1007/978-3-031-30510-8_8
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