Understanding High-Order Network Structure using Permissible Walks on Attributed Hypergraphs (2405.04559v1)
Abstract: Hypergraphs have been a recent focus of study in mathematical data science as a tool to understand complex networks with high-order connections. One question of particular relevance is how to leverage information carried in hypergraph attributions when doing walk-based techniques. In this work, we focus on a new generalization of a walk in a network that recovers previous approaches and allows for a description of permissible walks in hypergraphs. Permissible walk graphs are constructed by intersecting the attributed $s$-line graph of a hypergraph with a relation respecting graph. The attribution of the hypergraph's line graph commonly carries over information from categorical and temporal attributions of the original hypergraph. To demonstrate this approach on a temporally attributed example, we apply our framework to a Reddit data set composed of hyperedges as threads and authors as nodes where post times are tracked.
- Presented at JMM 2023.
- PUSHSHIFT, jan 2020, https://doi.org/https://doi.org/10.5281/zenodo.3608135. reddit-hazelnut prepared for the Social Network ProblemShop (Jan 24-Feb 4, 2022). Ottawa, Canada. Derivative of Reddit data obtained via pushshift.io API for the period January 1, 2019 to February 28, 2019.
- Temporal Networks.
- https://www.taylorfrancis.com/books/e/9780429204616/chapters/10.1201/9780203483930-14.
- Presented at JMM 2021.