Topological Representational Similarity Analysis in Brains and Beyond
Baihan Lin

TL;DR
This paper introduces Topological RSA (tRSA), a new framework that combines geometric and topological properties to better analyze neural representations, improving robustness and revealing new insights into brain function and models.
Contribution
The work presents several novel methods integrating topology into RSA, including tRSA, AGTDM, pMDS, tTDA, and scTSA, advancing neural data analysis and model comparison.
Findings
tRSA effectively identifies neural computational signatures
Methods are robust to noise and individual differences
Reveals developmental and complexity trajectories in neural data
Abstract
Understanding how the brain represents and processes information is crucial for advancing neuroscience and artificial intelligence. Representational similarity analysis (RSA) has been instrumental in characterizing neural representations, but traditional RSA relies solely on geometric properties, overlooking crucial topological information. This thesis introduces Topological RSA (tRSA), a novel framework combining geometric and topological properties of neural representations. tRSA applies nonlinear monotonic transforms to representational dissimilarities, emphasizing local topology while retaining intermediate-scale geometry. The resulting geo-topological matrices enable model comparisons robust to noise and individual idiosyncrasies. This thesis introduces several key methodological advances: (1) Topological RSA (tRSA) for identifying computational signatures and testing topological…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Cell Image Analysis Techniques
