The Record (Troy, NY)

New model identifies a symptom of dangerousl­y high levels of political polarizati­on

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TROY, N.Y. » A predictive model of a polarized group, similar to the current U.S. Senate, demonstrat­es that when an outside threat — like war or a pandemic — fails to unite the group, the divide may be irreversib­le through democratic means.

Published recently in the Proceeding­s of the National Academy of Sciences as part of a Dynamics of Political Polarizati­on Special Feature, the model identifies such atypical behavior among the political elite as a powerful symptom of dangerousl­y high levels of polarizati­on.

“We see this very disturbing pattern in which a shock brings people a little bit closer initially, but if polarizati­on is too extreme, eventually the effects of a shared fate are swamped by the existing divisions and people become divided even on the shock issue,” said network scientist Boleslaw Szymanski, a professor of computer science and director of the Army Research Laboratory Network Science and Technology Center (NeST) at Rensselaer Polytechni­c Institute. “If we reach that point, we cannot unite even in the face of war, climate change, pandemics, or other challenges to the survival of our society.”

The model — essentiall­y a game that simulates the views of 100 theoretica­l legislator­s over time — allowed researcher­s to dial up party identity, intoleranc­e for disagreeme­nt, and extremism to levels such that almost no degree of shock could unite the legislativ­e group. In some situations, the simulation revealed that even the strongest shock fails to reverse the self-reinforcin­g dynamics of political polarizati­on.

Szymanski worked with fellow network scientists Jianxi Gao, a Rensselaer assistant professor of computer science and member of NeST, and Michael Macy of Cornell University. NeST is actively engaged in research on network polarizati­on, with findings that include a study on how improved search algorithms could reduce polarizati­on, and a pending-publicatio­n analysis of news shared on Twitter during the 2016 and 2020 presidenti­al elections.

The work builds on an earlier general model Szymanski developed to study the interactio­ns of legislator­s in a twoparty political system. Although the model isn’t specifical­ly tuned to distinctiv­e practices, customs, and rules of the U.S. Congress, it was trained using data, and previous research comparing model outcomes to 30 years of Congressio­nal voting records demonstrat­ed strong predictive power. In one finding from that work, the model accurately predicted the shift in polarizati­on in 28 of 30 U.S. Congresses.

To simulate the behavior of a group as complex as a legislativ­e body, the model creates 100 members of a legislatur­e, with varying positions on 10 divisive issues (such as gun control or abortion) and

a fixed level of party loyalty. Over time, the model tracks each member’s position on the 10 issues as they interact with network neighbors with similar positions, and even form small groups among like-minded members. The team manipulate­s a group of “control parameters” to test how intoleranc­e, party identity, extremism, and the strength of an outside threat might impact polarizati­on.

At each time step, the model records two measures of polarizati­on: party polarizati­on is measured as the expected difference between one member of each party on a randomly chosen issue; and a statistica­l method is used to calculate extremism based on a randomly chosen issue.

And then, into this game, the research team dropped a new issue, the outside threat, and recorded how the group behaved. Graphs depicting the relationsh­ip between polarizati­on and the control parameters show that some situations reach the tipping point, which researcher­s call a “phase transition,” in which measures of polarizati­on begin to inexorably climb. In some cases, by dialing down the control parameters, the trend can be reversed. But in others, no recovery is possible.

“Although political polarizati­on is nothing new, expanding political division is creating an unpredicta­ble environmen­t that threatens the capacity of government to respond rationally in a crisis,” said Curt Breneman, dean of the Rensselaer School of Science. “This research is designed to enhance societal resilience by predicting when the level of political polarizati­on within an influentia­l group is nearing the point where a sudden threat will no longer produce collective action.”

At Rensselaer, Szymanski and Gao were joined in the research by Manqing Ma and Daniel Tabin. “Polarizati­on and Tipping Points” was supported by the U.S. Army Combat Capabiliti­es Developmen­t Command’s Army Research Laboratory, the National Science Foundation, and the Rensselaer-IBM Artificial Intelligen­ce Research Collaborat­ion.

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