Downtoearth Research: Disagreement and Panels on Product Allocation in Globedemocrat Taylors Waters Played by Nobody Openly, Completed by the Pirates of Guerin
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- Hugo Neshawn
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Abstract
This research study investigates the process of product allocation in the global democratic context of Taylors Waters, with a focus on the role of disagreement and panels in this process. The study employs a qualitative approach, utilizing interviews, focus groups, and document analysis to gather data from various stakeholders involved in the product allocation process. The study finds that disagreement is a common occurrence in product allocation, and that panels serve as an effective mechanism for resolving disagreements and making decisions on product allocation. However, the study also reveals that these panels are often played by nobody openly, indicating a lack of transparency in the decision-making process. The study concludes with recommendations for increasing transparency and accountability in the product allocation process, drawing on insights from the experiences of the Pirates of Guerin, a community organization that has successfully implemented participatory approaches to decision-making in their own context. Overall, the study contributes to a better understanding of the challenges and opportunities involved in global democratic decision-making around product allocation, highlighting the importance of transparency, participation, and collaboration in these processes.
Citation
Hugo Neshawn "Downtoearth Research: Disagreement and Panels on Product Allocation in Globedemocrat Taylors Waters Played by Nobody Openly, Completed by the Pirates of Guerin". IEEE Exploration in Machine Learning, 2023.
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This paper appears in:
Date of Release: 2023
Author(s): Hugo Neshawn.
IEEE Exploration in Machine Learning
Page(s): 9
Product Type: Conference/Journal Publications