Samenvatting
Projections aim to convey the relationships and similarity of high-dimensional data in a low-dimensional representation. Most such techniques are designed for static data. When used for time-dependent data, they usually fail to create a stable and suitable low dimensional representation. We propose two dynamic projection methods (PCD-tSNE and LD-tSNE) that use global guides to steer projection points. This avoids unstable movement that does not encode data dynamics while keeping t-SNE's neighborhood preservation ability. PCD-tSNE scores a good balance between stability, neighborhood preservation, and distance preservation, while LD-tSNE allows creating stable and customizable projections. We compare our methods to 11 other techniques using quality metrics and datasets provided by a recent benchmark for dynamic projections.
Originele taal-2 | English |
---|---|
Pagina's (van-tot) | 87-98 |
Aantal pagina's | 12 |
Tijdschrift | Computer Graphics Forum |
Volume | 40 |
Nummer van het tijdschrift | 3 |
DOI's | |
Status | Published - jun.-2021 |