Review of Mathematical Optimization and Statistics-based Techniques for Public Health Intervention in India: Balancing Efficiency, Resources, and Policy Goals
Keywords:
Mathematical Optimization, Statistics, Public Health Intervention, Efficiency, Resource Allocation, Modeling, Machine LearningAbstract
The purpose of this academic paper is to present a concise overview of using mathematical optimization and statistics-based methods for public health intervention in India. Through the systematic examination of data, these methods support the efficient use of resources and decision-making based on evidence that aligns with policy objectives. They are vital in addressing constraints related to limited resources and policy goals while maximizing intervention efficiency and effectiveness.
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