Graph-Based Approaches for Prediction and Similarity Analysis
dataset
posted on 2024-05-04, 11:36authored byLin Xing
This thesis explores graph-based approaches for prediction and similarity analysis problems within networks and hypergraphs. While existing algorithms for link prediction in networks predominantly target the existence or weights of edges, our study expands the scope by delving into the prediction of both vertex and edge weights using metric geometry and machine learning approaches. Additionally, our investigation extends into weight prediction in higher-order networks, often referred to as hypergraphs. We propose a novel notion of neighborhood for hyperedges, utilizing the topological structures of hypergraphs and weights of hyperedges from a given training set. We construct metric spaces on the set of hyperedges based on the neighborhood information. Furthermore, we explore the practical application of graph similarity algorithms in DNA sequence analysis, introducing an accurate and computationally efficient approach to analyze the similarities among DNA sequences. Our proposed methods were tested on diverse real-world datasets and yielded promising results. The main implication of our research is offering a more comprehensive framework for prediction tasks in networks and hypergraphs, providing alternative avenues to gain a deeper understanding of the intricate relationships within complex networks.
History
Date Created
2024-04-10
Date Modified
2024-05-01
Defense Date
2024-03-26
CIP Code
27.9999
Research Director(s)
Zhiliang Xu
Committee Members
Changbo Zhu
Xiufan Yu
Degree
Doctor of Philosophy
Degree Level
Doctoral Dissertation
Language
English
Library Record
006583077
OCLC Number
1432329913
Publisher
University of Notre Dame
Additional Groups
Applied and Computational Mathematics and Statistics
Program Name
Applied and Computational Mathematics and Statistics