clusterability
Clusterability refers to the inherent tendency of data points to form distinct groupings or clusters. It's a fundamental concept in cluster analysis, a machine learning technique used to discover natural groupings within datasets. Data that exhibits high clusterability means that there are clear separations between potential groups, making it easier for algorithms to identify and delineate these clusters. Conversely, data with low clusterability is characterized by ambiguity, where data points are intermingled and do not naturally form well-defined clusters.
Assessing clusterability is an important step before applying clustering algorithms. If data is not clusterable, attempting