首页|Data Driven Smart Machine Learning Optimization to Explore Challenges of Urban Safety: Exploring Future Directions with Transformers and Intelligent Agents

Data Driven Smart Machine Learning Optimization to Explore Challenges of Urban Safety: Exploring Future Directions with Transformers and Intelligent Agents

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Urban safety is a critical concern for both states and individuals, yet it often remains vulnerable, compromised by the very citizens it seeks to protect. Effective urban safety management is crucial, and mental health stands out as a significant factor among the challenges. Poor mental health, often linked to unemployment, can lead to increased crime rates, driven by the frustration of those struggling to find stability. This manuscript explores, for the first time, the intricate relationship between urban safety, mental health, and unemployment. We propose a novel approach utilizing advanced machine learning techniques, particularly time series analysis with neural networks, to investigate these connections. By examining the influence of employment satisfaction on mental health and urban safety, we aim to uncover patterns and predictive indicators that can inform more effective urban management strategies. Our research aligns directly with the United Nations Sustainable Development Goals (SDGs), particularly SDG 3 (Good Health and Well-being) and SDG 11 (Sustainable Cities and Communities). (c) 2025 L&H Scientific Publishing, LLC. All rights reserved.

Urban safetyMental healthUnemploymentCrime rateNARX modelLSTM modelTime series analysisSocioeconomic factorsData modelingSustainable development goals (SDGs)Predictive analyticsResiliencePolicy makingUrban planningIntegrated interventionsAgents and transformersDEPRESSIONUNEMPLOYMENTPOPULATIONPREVALENCEPAKISTANSTRESSSCALE

Arshad, Arooba、Sohail, A.、Jalal, M.、Zhang, Ying

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COMSATS University Islamabad - Vehari Campus Department of Mathematics

The University of Sydney School of Mathematics and Statistics

Natl Univ Sci & Technol NUST H12

The University of Sydney School of Public Health

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2025

Journal of environmental accounting and management

Journal of environmental accounting and management

ISSN:2325-6192
年,卷(期):2025.13(3)
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