Reciprocity in Social Networks with Capacity Constraints
Bo Jiang, Zhi-Li Zhang, Don Towsley

TL;DR
This paper investigates the limits of reciprocity in directed social networks with capacity constraints, revealing fundamental bounds, computational complexity, and real-world implications for social behavior.
Contribution
It introduces a theoretical framework for understanding maximum reciprocity under degree constraints and analyzes the computational complexity of achieving these bounds.
Findings
Maximum reciprocity depends on in- and out-degree sequences.
Deciding achievability of the upper bound is NP-complete.
Real networks often approach the theoretical reciprocity limit.
Abstract
Directed links -- representing asymmetric social ties or interactions (e.g., "follower-followee") -- arise naturally in many social networks and other complex networks, giving rise to directed graphs (or digraphs) as basic topological models for these networks. Reciprocity, defined for a digraph as the percentage of edges with a reciprocal edge, is a key metric that has been used in the literature to compare different directed networks and provide "hints" about their structural properties: for example, are reciprocal edges generated randomly by chance or are there other processes driving their generation? In this paper we study the problem of maximizing achievable reciprocity for an ensemble of digraphs with the same prescribed in- and out-degree sequences. We show that the maximum reciprocity hinges crucially on the in- and out-degree sequences, which may be intuitively interpreted as…
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Taxonomy
TopicsComplex Network Analysis Techniques · Cooperative Communication and Network Coding · Opinion Dynamics and Social Influence
