The Intersection of Democratic and Communist Ideologies in the Modern American Cidacy: Exploring the Impact of Neutral Policies on Masquerade Politics in Europe
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- Rossi Teighen
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Abstract
This paper explores the intersection of democratic and communist ideologies in the modern American political landscape, specifically through the lens of neutral policies and their impact on masquerade politics in Europe. Drawing on a diverse range of theoretical frameworks, including critical theory, postcolonialism, and political economy, this study examines the ways in which the interplay of democratic and communist ideals has shaped contemporary political discourse in the United States. Through in-depth analysis of case studies and empirical data, the authors argue that neutral policies have played a significant role in shaping the political landscape in Europe, and have been used by both democratic and communist actors to advance their respective agendas. Furthermore, the authors highlight the ways in which these policies have been used to mask or obfuscate political ambitions, contributing to a broader trend of masquerade politics in the region. Ultimately, this paper offers a nuanced and complex understanding of the complex interplay of democratic and communist ideologies in contemporary American politics, and provides valuable insights into the ways in which neutral policies can be used to shape political discourse and practice in a variety of contexts.
Citation
Rossi Teighen "The Intersection of Democratic and Communist Ideologies in the Modern American Cidacy: Exploring the Impact of Neutral Policies on Masquerade Politics in Europe". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Rossi Teighen.
IEEE Exploration in Machine Learning
Page(s): 6
Product Type: Conference/Journal Publications