Multiway Alignment of Political Attitudes (2408.00139v2)
Abstract: The related concepts of partisan belief systems, issue alignment, and partisan sorting are central to our understanding of politics. These phenomena have been studied using measures of alignment between pairs of topics, or how much individuals' attitudes toward a topic reveal about their attitudes toward another topic. We introduce a higher-order measure that extends the assessment of alignment beyond pairs of topics by quantifying the amount of information individuals' opinions on one topic reveal about a set of topics simultaneously. Applying this approach to legislative voting behavior shows that parliamentary systems typically exhibit similar multiway alignment characteristics, but can change in response to shifting intergroup dynamics. In American National Election Studies surveys, our approach reveals a growing significance of party identification together with a consistent rise in multiway alignment over time.
- (2021). Voteview: Congressional roll-call votes database.
- (2022). Eduskunta - avoin data.
- Abdallah, S. A. and M. D. Plumbley (2012). A measure of statistical complexity based on predictive information with application to finite spin systems. Physics Letters A 376(4), 275–281.
- Congressional bills project.
- American National Election Studies (2021). Anes 2020 time series study full release.
- Bafumi, J. and R. Y. Shapiro (2009). A new partisan voter. The journal of politics 71(1), 1–24.
- Partisans without constraint: Political polarization and trends in american public opinion. American Journal of Sociology 114(2), 408–446.
- Networks beyond pairwise interactions: Structure and dynamics. Physics Reports 874, 1–92. Networks beyond pairwise interactions: Structure and dynamics.
- Bell, A. J. (2003). The co-information lattice. In Proceedings of the fifth international workshop on independent component analysis and blind signal separation: ICA, Volume 2003.
- Bougher, L. D. (2017). The correlates of discord: identity, issue alignment, and political hostility in polarized america. Political Behavior 39, 731–762.
- Brabec, D. (2020). The disintegration of kdu-čsl in 2009: The network analysis of co-voting strategies of the kdu-čsl deputies. Politics in Central Europe 16(2), 547–563.
- Polarization of climate politics results from partisan sorting: Evidence from finnish twittersphere. Global Environmental Change 71, 102348.
- Political polarization on twitter. In Proceedings of the international aaai conference on web and social media, Volume 5, pp. 89–96.
- Converse, P. E. (2006). The nature of belief systems in mass publics (1964). Critical review 18(1-3), 1–74.
- Davies, D. L. and D. W. Bouldin (1979). A cluster separation measure. IEEE transactions on pattern analysis and machine intelligence (2), 224–227.
- Eduskunta.fi (2020, 3). Perussuomalaiset vetää pois välikysymyksen koronatilanteen takia.
- A density-based algorithm for discovering clusters in large spatial databases with noise. In kdd, Volume 96, pp. 226–231.
- Fishman, N. and N. T. Davis (2022). Change we can believe in: Structural and content dynamics within belief networks. American Journal of Political Science 66(3), 648–663.
- Politicians polarize and experts depolarize public support for covid-19 management policies across countries. Proceedings of the National Academy of Sciences 119(3), e2117543119.
- Quantifying controversy on social media. ACM Transactions on Social Computing 1(1), 1–27.
- Hetherington, M. J. (2009). Putting polarization in perspective. British Journal of Political Science 39(2), 413–448.
- Multiway alignment of twitter networks from 2019 and 2023 finnish parliamentary elections [data set].
- Anatomy of a bit: Information in a time series observation. Chaos: An Interdisciplinary Journal of Nonlinear Science 21(3).
- A fast and high quality multilevel scheme for partitioning irregular graphs. SIAM Journal on scientific Computing 20(1), 359–392.
- Kozlowski, A. C. and J. P. Murphy (2021). Issue alignment and partisanship in the american public: Revisiting the ‘partisans without constraint’ thesis. Social Science Research 94, 102498.
- Navigating pandemic waves: Consensus, polarisation and pluralism in the finnish parliament during covid-19. Politics, 02633957241259085.
- The dynamics of political polarization. Proceedings of the National Academy of Sciences 118(50), e2116950118.
- Attitude networks as intergroup realities: Using network-modelling to research attitude-identity relationships in polarized political contexts. British Journal of Social Psychology 63(1), 37–51.
- Meilă, M. (2003). Comparing clusterings by the variation of information. In Learning Theory and Kernel Machines: 16th Annual Conference on Learning Theory and 7th Kernel Workshop, COLT/Kernel 2003, Washington, DC, USA, August 24-27, 2003. Proceedings, pp. 173–187. Springer.
- Improved mutual information measure for clustering, classification, and community detection. Physical Review E 101(4), 042304.
- Centralized leadership, ministerial dominance, and improvised instruments: The governance of covid in finland. Nordisk Administrativt Tidsskrift 99(2), 1––19.
- Quantifying high-order interdependencies via multivariate extensions of the mutual information. Physical Review E 100(3), 032305.
- V-measure: A conditional entropy-based external cluster evaluation measure. In Proceedings of the 2007 joint conference on empirical methods in natural language processing and computational natural language learning (EMNLP-CoNLL), pp. 410–420.
- Rousseeuw, P. J. (1987). Silhouettes: a graphical aid to the interpretation and validation of cluster analysis. Journal of computational and applied mathematics 20, 53–65.
- Separating polarization from noise: comparison and normalization of structural polarization measures. Proceedings of the ACM on human-computer interaction 6(CSCW1), 1–33.
- Anatomy of elite and mass polarization in social networks. arXiv:2406.12525.
- Sun, T. (1975). Linear dependence structure of the entropy space. Inf Control 29(4), 337–68.
- The partisan brain: An identity-based model of political belief. Trends in cognitive sciences 22(3), 213–224.
- Information theoretic measures for clusterings comparison: is a correction for chance necessary? In Proceedings of the 26th annual international conference on machine learning, pp. 1073–1080.
- Watanabe, S. (1960). Information theoretical analysis of multivariate correlation. IBM Journal of research and development 4(1), 66–82.
- The tie that divides: Cross-national evidence of the primacy of partyism. European Journal of Political Research 57(2), 333–354.
- YLE (2020a, 3). Finland closes schools, declares state of emergency over coronavirus.
- YLE (2020b, 3). Finland shuts down uusimaa to fight coronavirus.