Balance in Signed Bipartite Networks
Tyler Derr, Cassidy Johnson, Yi Chang, Jiliang Tang

TL;DR
This paper explores the application of balance theory to signed bipartite networks, analyzing their unique structures and developing sign prediction methods based on signed butterflies, with promising results on real-world data.
Contribution
It provides the first comprehensive analysis of balance theory in signed bipartite networks and introduces new sign prediction methods leveraging signed butterflies.
Findings
Balance theory applies to signed bipartite networks through signed butterflies.
Sign prediction accuracy improves using butterfly-based methods.
Experimental results on real networks validate the approach.
Abstract
A large portion of today's big data can be represented as networks. However, not all networks are the same, and in fact, for many that have additional complexities to their structure, traditional general network analysis methods are no longer applicable. For example, signed networks contain both positive and negative links, and thus dedicated theories and algorithms have been developed. However, previous work mainly focuses on the unipartite setting where signed links connect any pair of nodes. Signed bipartite networks on the one hand, are commonly found, but have primarily been overlooked. Their complexities of having two node types where signed links can only form across the two sets introduce challenges that prevent most existing literature on unipartite signed and unsigned bipartite networks from being applied. On the other hand, balance theory, a key signed social theory, has been…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Graph Neural Networks · Opinion Dynamics and Social Influence
