Grin logo
de en es fr
Shop
GRIN Website
Publicación mundial de textos académicos
Go to shop › Ciencias de la computación - Aplicada

Improving K-Means Clustering Algorithm for Enhanced Performance in Big Data Analytics

Resumen Detalles

The rapid growth of big data has heightened the need for effective clustering techniques to derive actionable insights. While the K-Means clustering algorithm is popular for its simplicity and efficiency, it faces challenges such as sensitivity to initial centroid selection and scalability issues. This study seeks to enhance K-Means by integrating advanced initialization techniques and refining the clustering process, resulting in improved quality and computational efficiency in big data contexts.

As organizations in sectors like healthcare, finance, and marketing increasingly rely on data analysis, K-Means plays a crucial role in identifying patterns within large datasets. Our research addresses the algorithm's limitations by employing factor analysis for dimensionality reduction and utilizing Principal Component Analysis (PCA) to transform correlated variables, leading to greater accuracy in high-dimensional spaces. Through rigorous experimentation, we evaluate the improved algorithm against standard K-Means, demonstrating significant enhancements in clustering quality, particularly in applications such as customer segmentation and risk assessment. This work contributes meaningfully to data analytics by presenting a refined K-Means algorithm that effectively navigates the complexities of large-scale datasets, facilitating informed decision-making across various domains.

Comprar ahora

Título: Improving K-Means Clustering Algorithm for Enhanced Performance in Big Data Analytics

Texto Academico , 2025 , 5 Páginas

Autor:in: Elhadi Suiam (Autor)

Ciencias de la computación - Aplicada
Leer eBook

Detalles

Título
Improving K-Means Clustering Algorithm for Enhanced Performance in Big Data Analytics
Curso
Thesis
Autor
Elhadi Suiam (Autor)
Año de publicación
2025
Páginas
5
No. de catálogo
V1600454
ISBN (PDF)
9783389175774
Idioma
Inglés
Etiqueta
MATLAB PCA K-Means
Seguridad del producto
GRIN Publishing Ltd.
Citar trabajo
Elhadi Suiam (Autor), 2025, Improving K-Means Clustering Algorithm for Enhanced Performance in Big Data Analytics, Múnich, GRIN Verlag, https://www.grin.com/document/1600454
Leer eBook
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
  • Si ve este mensaje, la imagen no pudo ser cargada y visualizada.
Extracto de  5  Páginas
Grin logo
  • Grin.com
  • Envío
  • Contacto
  • Privacidad
  • Aviso legal
  • Imprint