Topological Data Analysis for Neural Networks Topological Data Analysis for Neural Networks
SpringerBriefs in Computer Science

Topological Data Analysis for Neural Networks

Rubén Ballester und andere
    • 42,99 €
    • 42,99 €

Beschreibung des Verlags

This book offers a comprehensive presentation of methods from topological data analysis applied to the study of neural network structure and dynamics. Using topology-based tools such as persistent homology and the Mapper algorithm, the authors explore the intricate structures and behaviors of fully connected feedforward and convolutional neural networks. 

The authors discuss various strategies for extracting topological information from data and neural networks, synthesizing insights and results from over 40 research articles, including their own contributions to the study of activations in complete neural network graphs. Furthermore, they examine how this topological information can be leveraged to analyze properties of neural networks such as their generalization capacity or expressivity. Practical implications of the use of topological data analysis in deep learning are also discussed, with a focus on areas including adversarial detection and model selection. The authors conclude with a summary of key insights along with a discussion of current challenges and potential future developments in the field.

This monograph is ideally suited for mathematicians with a background in topology who are interested in the applications of topological data analysis in artificial intelligence, as well as for computer scientists seeking to explore the practical use of topological tools in deep learning.

GENRE
Wissenschaft und Natur
ERSCHIENEN
2026
1. Januar
SPRACHE
EN
Englisch
UMFANG
115
Seiten
VERLAG
Springer Nature Switzerland
ANBIETERINFO
Springer Science & Business Media LLC
GRÖSSE
10,2
 MB
The Amazing Journey of Reason The Amazing Journey of Reason
2019
Manifold Learning Manifold Learning
2024
The Mathematical Theory of Semantic Communication The Mathematical Theory of Semantic Communication
2025
Developing Sustainable and Energy-Efficient Software Systems Developing Sustainable and Energy-Efficient Software Systems
2023
Objective Information Theory Objective Information Theory
2023
Distributed Hash Table Distributed Hash Table
2013