Experimental Observations of the Topology of Convolutional Neural Network Activations
Emilie Purvine, Davis Brown, Brett Jefferson, Cliff Joslyn, Brenda, Praggastis, Archit Rathore, Madelyn Shapiro, Bei Wang, Youjia Zhou

TL;DR
This paper explores the use of topological data analysis to interpret convolutional neural networks, revealing structural insights into internal representations and layer differences.
Contribution
It applies TDA techniques to CNN activations, demonstrating their effectiveness in capturing meaningful structural information and aiding interpretability.
Findings
Persistent homology quantifies differences between layers.
Mapper graphs reveal hierarchical class organization.
TDA provides valuable insights into CNN internal structures.
Abstract
Topological data analysis (TDA) is a branch of computational mathematics, bridging algebraic topology and data science, that provides compact, noise-robust representations of complex structures. Deep neural networks (DNNs) learn millions of parameters associated with a series of transformations defined by the model architecture, resulting in high-dimensional, difficult-to-interpret internal representations of input data. As DNNs become more ubiquitous across multiple sectors of our society, there is increasing recognition that mathematical methods are needed to aid analysts, researchers, and practitioners in understanding and interpreting how these models' internal representations relate to the final classification. In this paper, we apply cutting edge techniques from TDA with the goal of gaining insight into the interpretability of convolutional neural networks used for image…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Clusterin in disease pathology
