The Rise of Exaggerated Delinquency: An Interim Report on Getting Around Bostons Kelsey Building Discovered by Tshombe Crystal and Sheldon Straight
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- Liyonela-elam Jock
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Abstract
This paper presents an interim report on a study conducted by Tshombe Crystal and Sheldon Straight on the rise of exaggerated delinquency in Boston's Kelsey Building. The researchers aimed to understand the factors contributing to the increase in delinquent behavior and the ways in which individuals navigate the building to avoid detection. Through field observations and interviews with residents, the study revealed that the rise in delinquency can be attributed to a combination of factors, including the lack of security measures, the presence of abandoned spaces, and inadequate social services. Furthermore, the study found that individuals who engage in delinquent behavior are skilled at navigating the building's various levels and using alternative routes to avoid detection. The findings of this study have important implications for policymakers and building owners who aim to reduce delinquency in similar urban environments. The authors recommend the implementation of security measures and the provision of social services to mitigate the effects of urban blight and reduce the prevalence of delinquent behavior. This paper contributes to the growing body of research on urban delinquency and provides insights into the complex factors that contribute to its rise.
Citation
Liyonela-elam Jock "The Rise of Exaggerated Delinquency: An Interim Report on Getting Around Bostons Kelsey Building Discovered by Tshombe Crystal and Sheldon Straight". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Liyonela-elam Jock.
IEEE Exploration in Machine Learning
Page(s): 5
Product Type: Conference/Journal Publications