What does the public want their local government to hear? A data-driven case study of public comments across the state of Michigan

Authors

  • Chang Ge University of Michigan
  • Justine Zhang University of Michigan
  • Haofei Xu Washington University in St. Louis
  • Yanna Krupnikov University of Michigan
  • Jenna Bednar University of Michigan
  • Sabina Tomkins University of Michigan

DOI:

https://doi.org/10.51685/jqd.2025.023

Keywords:

local government, natural language processing, Public Discourse, political communication

Abstract

City council meetings are vital sites for civic participation where the public can speak directly to their local government. By addressing city officials and calling on them to take action, public commenters can potentially influence policy decisions spanning a broad range of concerns, from housing, to sustainability, to social justice. Yet studies of these meetings have often been limited by the availability of large-scale, geographically-diverse data. Relying on local governments’ increasing use of YouTube and other technologies to archive their public meetings, we propose a framework that characterizes comments along two dimensions: local concerns (e.g., housing, election administration), and societal concerns (e.g., functional democracy, anti-racism). Based on a large record of public comments we collect from 15 cities in Michigan, we produce data-driven taxonomies of the local concerns and societal concerns that these comments cover, and employ machine learning methods to scalably apply our taxonomies across the entire dataset. We then demonstrate how our framework allows us to examine the salient local concerns and societal concerns that arise in our data, as well as how these aspects interact.

Downloads

Published

2026-01-04

Issue

Section

Articles

How to Cite

Ge, C., Zhang, J., Xu, H., Krupnikov, Y., Bednar, J., & Tomkins, S. (2025). What does the public want their local government to hear? A data-driven case study of public comments across the state of Michigan. Journal of Quantitative Description: Digital Media, 5. https://doi.org/10.51685/jqd.2025.023