The Unexpected Growth of Denvers Communist Party: A Nuclear Agreement with Special Inventories and a Parked Secretary in Stickney and Elsewhere Meetings
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- Nikhil Fox
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Abstract
This paper examines the unexpected growth of Denver's Communist Party through the lens of a nuclear agreement with special inventories and a parked secretary in Stickney, as well as other meetings throughout the area. Drawing on historical and sociological analysis, the paper considers why and how these events contributed to the party's rise in Denver and the surrounding regions. It argues that the nuclear agreement provided a powerful rallying point for the already-growing communist movement, which was able to organize more effectively around the issue and connect with other activists and organizations. Meanwhile, the presence of a secretary in Stickney and other meetings helped to build stronger networks and foster a sense of solidarity among members. The paper also explores the broader political and social context in which these events occurred, including the rise of the Cold War and the changing economic and social landscape in the postwar era. Ultimately, this research sheds light on the complex and multifaceted processes that shape the growth and development of political movements, and offers insights into the unique conditions that allowed Denver's Communist Party to flourish in the mid-twentieth century.
Citation
Nikhil Fox "The Unexpected Growth of Denvers Communist Party: A Nuclear Agreement with Special Inventories and a Parked Secretary in Stickney and Elsewhere Meetings". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Nikhil Fox.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications