Visual Polarization Measurement Using Counterfactual Image Generation

70 Pages Posted: 28 Mar 2025

See all articles by Mohammad Mosaffa

Mohammad Mosaffa

Cornell University - Cornell Tech NYC

Omid Rafieian

Cornell University - Cornell Tech NYC; Cornell SC Johnson College of Business

Hema Yoganarasimhan

University of Washington

Date Written: March 11, 2025

Abstract

Political polarization is a significant issue in American politics, influencing public discourse, policy, and consumer behavior. While studies on polarization in news media have extensively focused on verbal content, non-verbal elements, particularly visual content, have received less attention due to the complexity and high dimensionality of image data. Traditional descriptive approaches often rely on feature extraction from images, leading to biased polarization estimates due to information loss. In this paper, we introduce the Polarization Measurement using Counterfactual Image Generation (PMCIG) method, which combines economic theory with generative models and multi-modal deep learning to fully utilize the richness of image data and provide a theoretically grounded measure of polarization in visual content. Applying this framework to a decade-long dataset featuring 30 prominent politicians across 20 major news outlets, we identify significant polarization in visual content, with notable variations across outlets and politicians. At the news outlet level, we observe significant heterogeneity in visual slant. Outlets such as Daily Mail, Fox News, and Newsmax tend to favor Republican politicians in their visual content, while The Washington Post, USA Today, and The New York Times exhibit a slant in favor of Democratic politicians. At the politician level, our results reveal substantial variation in polarized coverage, with Donald Trump and Barack Obama among the most polarizing figures, while Joe Manchin and Susan Collins are among the least. Finally, we conduct a series of validation tests demonstrating the consistency of our proposed measures with external measures of media slant that rely on non-image-based sources.

Keywords: Polarization, News Media, Politics, Generative Models, Computer Vision, Counterfactual Reasoning

JEL Classification: F50, L82

Suggested Citation

Mosaffa, Mohammad and Rafieian, Omid and Yoganarasimhan, Hema, Visual Polarization Measurement Using Counterfactual Image Generation (March 11, 2025). Cornell SC Johnson College of Business Research Paper Forthcoming, Available at SSRN: https://ssrn.com/abstract=5175092 or http://dx.doi.org/10.2139/ssrn.5175092

Mohammad Mosaffa

Cornell University - Cornell Tech NYC ( email )

Omid Rafieian (Contact Author)

Cornell University - Cornell Tech NYC ( email )

2 West Loop Rd.
New York, NY 10044
United States

Cornell SC Johnson College of Business ( email )

Ithaca, NY 14850
United States

Hema Yoganarasimhan

University of Washington ( email )

481 Paccar Hall
Seattle, WA 98195
United States

HOME PAGE: http://faculty.washington.edu/hemay/

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