a computational framework to identify and characterize cell niches from spatial omics data at single-cell resolution
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Updated
Aug 11, 2025 - Jupyter Notebook
a computational framework to identify and characterize cell niches from spatial omics data at single-cell resolution
A comprehensive (masked) graph autoencoders benchmark.
This project models the GitHub collaboration network to predict potential partnerships. It applies Social Network Analysis (SNA) and a Graph Autoencoder (GAE) to tackle the link prediction task, identifying future collaborators with high accuracy.
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