This document presents a fast clustering-based feature subset selection algorithm designed for high-dimensional data. The proposed algorithm operates in two steps: clustering features with graph-theoretic methods and selecting the most representative feature from each cluster. Experimental results demonstrate that this algorithm yields smaller subsets of features while enhancing classifier performance compared to other representative algorithms.