Exploring the Impact of Prejudicial Presidential Proposals on Multnomahs Finest: A Periodic Estimate of the Resulting Interstate Assignments and Driving Servants in Newark and Beyond
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- Quinn Danny
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Abstract
This study aimed to explore the impact of prejudicial presidential proposals on law enforcement officers, referred to as Multnomah's Finest. Using a periodic estimate approach, the study examined the resulting interstate assignments and driving services of these officers in Newark and beyond. Data was collected through surveys and interviews with Multnomah's Finest and other law enforcement personnel, as well as through an analysis of official records and media reports. Findings revealed a significant negative impact on the morale and professional reputation of Multnomah's Finest, as well as on their ability to effectively carry out their duties. The study also highlighted the potential for such presidential proposals to contribute to a broader erosion of trust and cooperation between law enforcement and the communities they serve. Recommendations for policy and practice were discussed, including the need for greater attention to the potential impact of presidential proposals on law enforcement personnel and the communities they serve, as well as the need for proactive efforts to promote positive relationships and mutual understanding between law enforcement and diverse communities.
Citation
Quinn Danny "Exploring the Impact of Prejudicial Presidential Proposals on Multnomahs Finest: A Periodic Estimate of the Resulting Interstate Assignments and Driving Servants in Newark and Beyond". IEEE Exploration in Machine Learning, 2018.
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This paper appears in:
Date of Release: 2018
Author(s): Quinn Danny.
IEEE Exploration in Machine Learning
Page(s): 8
Product Type: Conference/Journal Publications