Representation learning of dynamic networks
Haixu Wang, Jiguo Cao, Jian Pei

TL;DR
This paper introduces a new functional data analysis-based representation learning model for dynamic networks, capturing evolving relationships over time and enabling tasks like community detection and link prediction.
Contribution
The study develops a novel low-dimensional, continuous-time functional learning space for dynamic networks, accommodating asymmetric roles and improving inference of network evolution.
Findings
Effective in link prediction under data corruption
Captures roles and interactions in ant social networks
Aligns with known ant colony behaviors
Abstract
This study presents a novel representation learning model tailored for dynamic networks, which describes the continuously evolving relationships among individuals within a population. The problem is encapsulated in the dimension reduction topic of functional data analysis. With dynamic networks represented as matrix-valued functions, our objective is to map this functional data into a set of vector-valued functions in a lower-dimensional learning space. This space, defined as a metric functional space, allows for the calculation of norms and inner products. By constructing this learning space, we address (i) attribute learning, (ii) community detection, and (iii) link prediction and recovery of individual nodes in the dynamic network. Our model also accommodates asymmetric low-dimensional representations, enabling the separate study of nodes' regulatory and receiving roles. Crucially,…
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Taxonomy
TopicsNeural Networks and Applications · Advanced Graph Neural Networks
MethodsSparse Evolutionary Training · ALIGN
