pointssuch
Pointssuch is a conceptual term used in data analysis and visualization to denote a scoring method that assigns a saliency or informativeness value to individual data points within a dataset. A pointssuch score aims to reflect how representative, influential, or distinctive a point is with respect to a chosen task, such as clustering, anomaly detection, or interactive exploration. The framework emphasizes point-level evaluation rather than aggregate dataset summaries.
The term is an informal blend of "points" and "such" and does not refer to a single
Typical methods for computing a pointssuch score include distance-based criteria (how far a point lies from
Pointssuch scoring supports tasks such as refining clusters, identifying outliers, guiding data cleaning, and enabling interactive
In a two-dimensional scatter plot, points with high pointssuch scores may lie near cluster centers or at