Shift Bribery over Social Networks
Ashlesha Hota, Susobhan Bandopadhyay, Palash Dey

TL;DR
This paper explores the complexity of shift bribery in social networks, considering social influence effects, and provides algorithms and complexity results for various network structures and parameters.
Contribution
It introduces a new model of shift bribery over social networks, analyzing its computational complexity and offering algorithms for specific graph classes and parameters.
Findings
NP-Complete even with two candidates and unit costs
Polynomial-time algorithms for complete graphs and path graphs
Fixed-parameter tractable algorithms based on treewidth
Abstract
In shift bribery, a briber seeks to promote his preferred candidate by paying voters to raise their ranking. Classical models of shift bribery assume voters act independently, overlooking the role of social influence. However, in reality, individuals are social beings and are often represented as part of a social network, where bribed voters may influence their neighbors, thereby amplifying the effect of persuasion. We study Shift bribery over Networks, where voters are modeled as nodes in a directed weighted graph, and arcs represent social influence between them. In this setting, bribery is not confined to directly targeted voters its effects can propagate through the network, influencing neighbors and amplifying persuasion. Given a budget and individual cost functions for shifting each voter's preference toward a designated candidate, the goal is to determine whether a shift strategy…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Game Theory and Voting Systems · Complex Network Analysis Techniques
