Dierkes, JoelStelter, DanielRössl, ChristianTheisel, HolgerBousseau, AdrienDay, Angela2025-05-092025-05-0920251467-8659https://doi.org/10.1111/cgf.70063https://diglib.eg.org/handle/10.1111/cgf70063Finding projections of multidimensional data domains to the 2D screen space is a well-known problem. Multidimensional data often comes with the property that the dimensions are measured in different physical units, which renders the ratio between dimensions, i.e., their scale, arbitrary. The result of common projections, like PCA, t-SNE, or MDS, depends on this ratio, i.e., these projections are variant to scaling. This results in an undesired subjective view of the data, and thus, their projection. Simple solutions like normalization of each dimension are widely used, but do not always give high-quality results. We propose to visually analyze the space of all scalings and to find optimal scalings w.r.t. the quality of the visualization. For this, we evaluate different quality criteria on scatter plots. Given a quality criterion, our approach finds scalings that yield good visualizations with little to no user input using numerical optimization. Simultaneously, our method results in a scaling invariant projection, proposing an objective view to the projected data. We show for several examples that such an optimal scaling can significantly improve the visualization quality.Attribution 4.0 International LicenseCCS Concepts: Human-centered computing → Visualization techniques; Visualization systems and toolsHuman centered computing → Visualization techniquesVisualization systems and toolsTowards Scaling-Invariant Projections for Data Visualization10.1111/cgf.7006312 pages