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UOT 004
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| Biblioqrafik təsvir | | Aliguliyev , R.M. Performance comparison of k-means, parallel k-means and k-means++ / R.M. Aliguliyev , S.F. Tahirzada // Reliability: Theory and Applications. - 2025. - N: 7 (83), volume 20. - P. 169-176. | | Annotasiya | | K-means clustering is a fundamental unsupervised machine learning technique widely
applied in various domains such as data analysis, pattern recognition, and clustering-
based tasks. However, its efficiency and scalability can be challenged, particularly when
dealing with large-scale datasets and complex data structures. This thesis explores
strategies to improve the performance of the K-means clustering algorithm through
parallelism and iterative techniques. Parallelism leverages modern parallel computing
architectures, including multi-core processors and distributed frameworks like Apache
Spark, to enhance computational efficiency and scalability. On the other hand, an
iterative approach involves refining clustering results through multiple iterations,
adjusting cluster centroids, and optimizing convergence criteria. It delves into the design
frameworks of these approaches, highlighting their respective advantages and
limitations. Comparative analyses are conducted to evaluate the effectiveness of
parallelism and iterative techniques in terms of execution time, scalability, clustering
accuracy, and convergence speed. The findings contribute to advancing the
understanding of how parallelism and iterative strategies can significantly improve K-
means clustering performance, especially in the context of big data and complex
datasets. By comparatively analyzing parallelism and iterative approaches, this paper
aims to contribute to the development of more efficient and scalable clustering
algorithms in the Big Data context. | | Elektron variant | | Elektron variant |
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