A paired-algorithm clustering model for describing field staff Deployment in non-governmental organizations (ngos).
Date
2025
Authors
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Journal ISSN
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Publisher
KCA University
Abstract
This research addresses the inefficiencies and challenges faced by non-governmental
organizations (NGOs) in deploying field staff, focusing on the manual processes prevalent in
the current systems and leveraging on the possibilities offered by predictive machine learning
algorithms. The problem stems from time-consuming and error-prone manual data entry
methods, hindering optimal resource allocation. Our objective is to develop and implement a
machine learning clustering algorithm to automate the field staff deployment process. By
leveraging data analytics – hierarchical and k-means machine learning algorithms – we aim to
enhance the efficiency and accuracy of deployment, leading to improved allocation of
personnel and resources. The expected outcome is a streamlined deployment system that
significantly reduces errors, minimizes time consumption, and maximizes overall operational
efficiency in NGO field operations. The project outcomes will also inform advances in the use
of combined methods in clustering machine learning algorithms and data analytics.
Description
Keywords
Combined Machine learning clustering algorithm, Machine Learning in NGOs, Hierarchical Clustering, K-means clustering, NGOs, Staff Deployment.