Collective Bias Models in Two-Tier Voting Systems and the Democracy Deficit
Werner Kirsch, Gabor Toth

TL;DR
This paper models two-tier voting systems considering collective biases within and across groups, deriving optimal voting weights that minimize the democracy deficit and analyzing conditions for their positivity.
Contribution
It introduces a comprehensive collective bias model for two-tier voting, deriving unique optimal weights in large populations and exploring the impact of inter-group correlations.
Findings
Optimal weights are unique under certain conditions.
Weights consist of a common constant plus a group-proportional term.
Conditions for negative weights and their implications are analyzed.
Abstract
We analyse optimal voting weights in two-tier voting systems. In our model, the overall population (or union) is split in groups (or member states) of different sizes. The individuals comprising the overall population constitute the first tier, and the council is the second tier. Each group has a representative in the council that casts votes on their behalf. By "optimal weights", we mean voting weights in the council which minimise the democracy deficit, i.e. the expected deviation of the council vote from a (hypothetical) popular vote. We assume that the voters within each group interact via what we call a local collective bias or common belief (through tradition, common values, strong religious beliefs, etc.). We allow in addition an interaction across group borders via a global bias. Thus, the voting behaviour of each voter depends on the behaviour of all other voters. This…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Game Theory and Voting Systems · Electoral Systems and Political Participation
