A thesis on utilizing machine learning models to predict material hardship
Abstract
This thesis addresses the concern of material hardship, defined by a paucity in resources
necessary to fulfil fundamental needs, especially affecting children and families. Drawing
insights from studies on the determinants of material hardship, including low income,
unemployment, single parenthood, and financial literacy, the research employs a
comprehensive methodology. It incorporates the integration of machine learning techniques
to enhance the predictive capacity of identifying at-risk populations. The methodology
advocates for a holistic approach, incorporating the transformative potential of machine
learning techniques such as Logistic Regression, Non-Linear Support Vector Machine Model,
Decision Tree etc. This paper highlights the transformative potential of machine learning in
proficiently analyzing extensive datasets to recognize complex patterns. The positive
correlation established between higher financial literacy, bill paying tendency, management
of finances and improved economic outcomes stresses the potential impact of targeted
financial education initiatives. Moreover, the research emphasizes the need for a proactive
stance, advocating for the development of predictive models using historical evidence to
anticipate and address material hardship in a timely manner. The inferences emphasize the
necessity for targeted interventions and proactive measures, promoting social equity,
resilience, and contributing to broader poverty reduction strategies