A novel distributed semi-supervised fuzzy clustering method applied on dental X-ray images

Le Tuan Anh, Tran Manh Truong, To Huu Nguyen, Nguyen Truong Thang, Nguyen Nhu Son
Author affiliations

Authors

  • Le Tuan Anh Graduate University of Science and Technology, Vietnam Academy of Science and Technology, 18 Hoang Quoc Viet, Cau Giay, Ha Noi, Viet Nam
  • Tran Manh Truong Institute of Information Technology, Vietnam Academy of Science and Technology, 18 Hoang Quoc Viet, Cau Giay, Ha Noi, Viet Nam
  • To Huu Nguyen University of Information and Communication Technology, Thai Nguyen University, Quyet Thang, Thai Nguyen City, Thai Nguyen, Viet Nam
  • Nguyen Truong Thang Institute of Information Technology, Vietnam Academy of Science and Technology, 18 Hoang Quoc Viet, Cau Giay, Ha Noi, Viet Nam
  • Nguyen Nhu Son Institute of Information Technology, Vietnam Academy of Science and Technology, 18 Hoang Quoc Viet, Cau Giay, Ha Noi, Viet Nam https://orcid.org/0000-0002-3901-2514

DOI:

https://doi.org/10.15625/2525-2518/19648

Keywords:

Distributed clustering, semi-supervised clustering, master - slave model, additional information, dental X-ray images

Abstract

Semi-supervised clustering methods are applied in various fields. However, these methods have the limitations when the size of data is large. Thus, distributed clustering models are proposed. By separating data set into some parts, distributed models overcome the challenges of big size dataset. In this paper, a novel model, based on semi-supervised fuzzy clustering and distributed mechanism, is proposed. In our research, the method to define distributed additional information is introduced. This additional information is used to implement distributed semi-supervised fuzzy clustering model on three datasets. The main contribution in this paper is the proposal of distributed semi-supervised fuzzy clustering algorithm (denoted as DSSFCM) that performs on Master – Slave model on homogeneous datasets.

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References

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Published

28-02-2025

How to Cite

[1]
Le Tuan Anh, Tran Manh Truong, To Huu Nguyen, Nguyen Truong Thang, and Nguyen Nhu Son, “A novel distributed semi-supervised fuzzy clustering method applied on dental X-ray images”, Vietnam J. Sci. Technol., vol. 63, no. 1, pp. 149–160, Feb. 2025.

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Section

Electronics - Telecommunication

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