Description
Efficient Clustering Algorithms for Multivariate Data: A Computational Approach As the scale and complexity of multivariate datasets grow across scientific disciplines, the need for robust, scalable, and computationally efficient analysis methods has never been more urgent. This book introduces a novel, hybrid algorithmic framework that bridges the gap between dimensionality reduction and cluster validation to uncover the hidden structures within large datasets. At the core of this methodology is a powerful integration of Factor Analysis and K-Means clustering, optimized through the automated utilization of the Silhouette index. By leveraging the advanced algebraic and computational capabilities of Mathematica, the author provides a step-by-step blueprint for executing high-dimensional data partitioning without sacrificing mathematical precision.