Decertifying the Federal System: Smuggling Considered as a Potential Emergency in the Finals of Directed Growth - A Request for Victory on Tuesday with Kieffer and Cervetto

Decertifying the Federal System: Smuggling Considered as a Potential Emergency in the Finals of Directed Growth - A Request for Victory on Tuesday with Kieffer and Cervetto


Abstract

This paper examines the potential consequences of decertifying the United States federal system in the context of directed growth policies and the perceived threat of smuggling as an emergency situation. Using a case study approach, we analyze the impact of decertification on two states, Kieffer and Cervetto, and their ability to implement directed growth policies in the face of increased smuggling activity. We argue that decertification would undermine the ability of these states to address the challenges of smuggling and related emergencies and would ultimately lead to a breakdown of the federal system. Drawing on insights from political science, economics, and public policy, we conclude by offering a set of policy recommendations aimed at preserving the integrity of the federal system while also addressing the challenges of directed growth and emergency preparedness. Our findings suggest that policymakers must carefully balance the need for flexibility and innovation in federal-state relations with the imperative of maintaining a stable and effective system of governance. Overall, our research highlights the importance of considering the potential impacts of decertification on emergency preparedness and the broader implications for the federal system as a whole.

Citation

Harrison Maryk "Decertifying the Federal System: Smuggling Considered as a Potential Emergency in the Finals of Directed Growth - A Request for Victory on Tuesday with Kieffer and Cervetto".  IEEE Exploration in Machine Learning, 2022.

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This paper appears in:
Date of Release: 2022
Author(s): Harrison Maryk.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications