| نویسندگان | Seyed-Hamid Zahiri, |
| نشریه | Journal of Electrical and Computer Engineering Innovations |
| شماره صفحات | 1-14 |
| شماره سریال | 12 |
| شماره مجلد | 1 |
| نوع مقاله | Full Paper |
| تاریخ انتشار | 2024 |
| نوع نشریه | چاپی |
| کشور محل چاپ | ایران |
| نمایه نشریه | isc |
چکیده مقاله
Background and Objectives: In this paper, a new version of the particle swarm
optimization (PSO) algorithm using a linear ranking function is proposed for
clustering uncertain data. In the proposed Uncertain Particle Swarm Clustering
method, called UPSC method, triangular fuzzy numbers (TFNs) are used to
represent uncertain data. Triangular fuzzy numbers are a good type of fuzzy
numbers and have many applications in the real world.
Methods: In the UPSC method input data are fuzzy numbers. Therefore, to
upgrade the standard version of PSO, calculating the distance between the fuzzy
numbers is necessary. For this purpose, a linear ranking function is applied in the
fitness function of the PSO algorithm to describe the distance between fuzzy
vectors.
Results: The performance of the UPSC is tested on six artificial and nine benchmark
datasets. The features of these datasets are represented by TFNs.
Conclusion: The experimental results on fuzzy artificial datasets show that the
proposed clustering method (UPSC) can cluster fuzzy datasets like or superior to
other standard uncertain data clustering methods such as Uncertain K-Means
Clustering (UK-means) and Uncertain K-Medoids Clustering (UK-medoids)
algorithms. Also, the experimental results on fuzzy benchmark datasets
demonstrate that in all datasets except Libras, the UPSC method provides better
results in accuracy when compared to other methods. For example, in iris data,
the clustering accuracy has increased by 2.67% compared to the UK-means
method. In the case of wine data, the accuracy increased with the UPSC method is
1.69%. As another example, it can be said that the increase in accuracy for abalone
data was 4%. Comparing the results with the rand index (RI) also shows the
superiority of the proposed clustering method.
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