TL;DR
MPSE is a novel visualization method that embeds high-dimensional data in 3D while providing multiple 2D views, preserving various pairwise distances, and enabling diverse analysis scenarios.
Contribution
This paper introduces MPSE, a new multi-view embedding technique that simultaneously preserves multiple distance matrices in 3D with fixed or variable projections.
Findings
Effective in visualizing high-dimensional data from multiple perspectives
Demonstrates high-quality embeddings across various datasets
Flexible approach adaptable to different analysis scenarios
Abstract
We describe MPSE: a Multi-Perspective Simultaneous Embedding method for visualizing high-dimensional data, based on multiple pairwise distances between the data points. Specifically, MPSE computes positions for the points in 3D and provides different views into the data by means of 2D projections (planes) that preserve each of the given distance matrices. We consider two versions of the problem: fixed projections and variable projections. MPSE with fixed projections takes as input a set of pairwise distance matrices defined on the data points, along with the same number of projections and embeds the points in 3D so that the pairwise distances are preserved in the given projections. MPSE with variable projections takes as input a set of pairwise distance matrices and embeds the points in 3D while also computing the appropriate projections that preserve the pairwise distances. The…
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