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On characterizing the evolution of embedding space of neural networks using algebraic topology.

Authors :
Suresh, S.
Das, B.
Abrol, V.
Dutta Roy, S.
Source :
Pattern Recognition Letters. Mar2024, Vol. 179, p165-171. 7p.
Publication Year :
2024

Abstract

We study how the topology of feature embedding space changes as it passes through the layers of a well-trained deep neural network (DNN) through Betti numbers. Motivated by existing studies using simplicial complexes on shallow fully connected networks (FCN), we present an extended analysis using Cubical homology instead, with a variety of popular deep architectures and real image datasets. We demonstrate that as depth increases, a topologically complicated dataset is transformed into a simple one, resulting in Betti numbers attaining their lowest possible value. The rate of decay in topological complexity (as a metric) helps quantify the impact of architectural choices on the generalization ability. Interestingly from a representation learning perspective, we highlight several invariances such as topological invariance of (1) an architecture on similar datasets; (2) embedding space of a dataset for architectures of variable depth; (3) embedding space to input resolution/size, and (4) data sub-sampling. In order to further demonstrate the link between expressivity & the generalization capability of a network, we consider the task of ranking pre-trained models for downstream classification task (transfer learning). Compared to existing approaches, the proposed metric has a better correlation to the actually achievable accuracy via fine-tuning the pre-trained model. • This paper categorizes the change in topological complexity through Betti-Numbers. • Attempts to characterize the learning ability of the DNNs through topological transformation of feature space. • Attempts to use the topological complexity of feature space for the task of ranking pre-trained models. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01678655
Volume :
179
Database :
Academic Search Index
Journal :
Pattern Recognition Letters
Publication Type :
Academic Journal
Accession number :
175871146
Full Text :
https://doi.org/10.1016/j.patrec.2024.02.003