Network-Normative Belief Updating in High-Dimensional Ideological Space
Chico Q. Camargo

TL;DR
This paper introduces a network-theoretic framework to analyze high-dimensional belief updates across multiple policy issues, revealing that cross-issue attitude changes are detectable at fine resolutions.
Contribution
It develops a hierarchy of null models for benchmarking belief movement in high-dimensional ideological space, highlighting the importance of representation resolution.
Findings
Observed attitude movement exceeds baseline models significantly.
Cross-issue updating is detectable only at fine resolutions.
Network-normative attraction varies systematically with resolution.
Abstract
Most mathematical models of opinion dynamics treat attitudes as scalar quantities or positions on a low-dimensional ideological axis. Empirical attitudes, however, are bundles of positions across many policy issues, and the geometry of the resulting high-dimensional belief space is non-trivial. This paper develops a network-theoretic framework for analysing how individuals move through such a space between two measurement waves. Continuous attitude profiles in are discretised onto regular grids of resolution , occupied positions form a network whose adjacency is defined by single-issue unit moves, and densely populated regions are interpreted as network-normative: empirically common configurations of attitudes in the population. We introduce a hierarchy of null models against which observed movement can be benchmarked: a closed-form coverage baseline requiring no…
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