projectionheavy
Projectionheavy is a term used in data analysis to describe representations, models, or visualizations in which most of the information, variance, or separability is captured by a small number of linear projections. In practice, a dataset or model is considered projectionheavy when the first few projection directions account for a large share of the variance or class separation, making the remaining directions relatively uninformative.
Origin and usage: The term is informal and not part of a formal methodological vocabulary; it arises
Characteristics: Typical signs include high explained variance in the leading components, prominent cluster separation along early
Applications and caveats: It can guide feature selection and model simplification, but analysts should assess whether
See also: dimensionality reduction, principal component analysis, projection pursuit, eigenvalue spectrum, variance explained.
Notes: The term is informal; usage varies and is not standardized across disciplines.