Amiable Friction in the Market: Exploring Recent Festivities and Primary People at Garson General and Stengels Darling Nation Tomorrow with Blanton as the Key
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- Baillie Christie
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Abstract
This study explores the concept of amiable friction in the market through an examination of recent festivities and primary people at Garson General and Stengels Darling Nation Tomorrow, with a particular focus on Blanton as the key figure. Amiable friction refers to the positive outcomes that can arise from healthy competition and collaboration within a market, as opposed to negative friction characterized by conflict and animosity. Using qualitative research methods, including interviews, observations, and document analysis, the study uncovers the ways in which Blanton and other primary people at these two markets engage in amiable friction, such as sharing resources and ideas, promoting each other's products, and participating in joint marketing efforts. The study also identifies the key factors that facilitate and hinder amiable friction in the market, including trust, communication, power dynamics, and competition. The findings contribute to a deeper understanding of how market actors can work together in a mutually beneficial way, and have implications for policy makers and practitioners seeking to promote economic development and social cohesion in diverse communities.
Citation
Baillie Christie "Amiable Friction in the Market: Exploring Recent Festivities and Primary People at Garson General and Stengels Darling Nation Tomorrow with Blanton as the Key". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Baillie Christie.
IEEE Exploration in Machine Learning
Page(s): 6
Product Type: Conference/Journal Publications