Topological Data Analysis
Topological Data Analysis (TDA) is a field that uses tools from topology to analyze the shape and structure of complex data, aiming to extract meaningful information beyond traditional geometric approaches. Current research focuses on applying TDA to diverse areas, including graph representation learning (using algorithms like persistent homology and novel embeddings like TopER), improving deep learning models (through feature extraction, knowledge distillation, and robustness optimization), and analyzing various data types such as time series (EEG, sensor data), images (medical, satellite), and networks (social, molecular). The significance of TDA lies in its ability to reveal hidden structures and relationships in high-dimensional data, leading to improved performance in machine learning tasks, enhanced interpretability of models, and novel insights in diverse scientific domains.
Papers
Can Persistent Homology provide an efficient alternative for Evaluation of Knowledge Graph Completion Methods?
Anson Bastos, Kuldeep Singh, Abhishek Nadgeri, Johannes Hoffart, Toyotaro Suzumura, Manish Singh
Curvature Filtrations for Graph Generative Model Evaluation
Joshua Southern, Jeremy Wayland, Michael Bronstein, Bastian Rieck
Topological data analysis on noisy quantum computers
Ismail Yunus Akhalwaya, Shashanka Ubaru, Kenneth L. Clarkson, Mark S. Squillante, Vishnu Jejjala, Yang-Hui He, Kugendran Naidoo, Vasileios Kalantzis, Lior Horesh
A novel approach for wafer defect pattern classification based on topological data analysis
Seungchan Ko, Dowan Koo
A topological analysis of cointegrated data: a Z24 Bridge case study
Tristan Gowdridge, Elizabeth Cross, Nikolaos Dervilis, Keith Worden
On topological data analysis for SHM; an introduction to persistent homology
Tristan Gowdridge, Nikolaos Devilis, Keith Worden
On topological data analysis for structural dynamics: an introduction to persistent homology
Tristan Gowdridge, Nikolaos Dervilis, Keith Worden