Adobe Inc.
GENERATING A HIGH-DIMENSIONAL NETWORK GRAPH FOR DATA VISUALIZATION UTILIZING LANDMARK DATA POINTS AND MODULARITY-BASED MANIFOLD TEARING

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Abstract:

The present disclosure relates to systems, methods, and non-transitory computer-readable media that generate interactive visual shape representation of digital datasets. For example, the disclosed systems can generate an augmented nearest neighbor network graph from a sampled subset of digital data points using a nearest neighbor model and witness complex model. The disclosed system can further generate a landmark network graph based on the augmented nearest neighbor network graph utilizing a plurality of random walks. The disclosed systems can also generate a loop-augmented spanning network graph based on a partition of the landmark network graph by adding community edges between communities of landmark groups based on modularity and to complete community loops. Based on the loop-augmented spanning network graph, the disclosed systems can generate an interactive visual shape representation for display on a client device.

Status:
Application
Type:

Utility

Filling date:

16 Apr 2020

Issue date:

21 Oct 2021