Treffer: The Role of Advanced Anomaly Detection in Transforming Program Management in Government with Scikit-Learn, A Machine Learning Library in Python
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Government agencies increasingly face challenges in managing programs efficiently, especially in preventing fraud, abuse, and resource waste. Traditional oversight techniques often struggle to detect early signs of problems such as resource misallocation, project delays, and budget overruns. This paper explores how anomaly detection, powered by Scikit-learn, a machine learning library in Python, can improve government program management. Using Isolation Forest, One-Class Support Vector Machine (SVM), and Local Outlier Factor models, we illustrate how advanced anomaly detection can monitor budgets, timelines, and resource utilization. Our findings show that these approaches can enhance program efficiency, enable agile risk management, and support data-driven decisions through a hypothetical example focused on government project data. Beyond improving technical oversight, this research explores how the integration of advanced anomaly detection techniques, enabled by Scikit-learn’s machine learning capabilities, can fundamentally transform program management practices within government agencies. Recognizing that program managers may not necessarily be programmers, the work highlights practical pathways for them to either collaborate closely with data scientists or develop foundational skills in interpreting machine learning outputs, fostering a stronger, analytics-driven management culture. This shift encourages a new governance model where data-driven insights enhance budgeting, scheduling, and resource allocation decisions. Furthermore, the reviewed literature provides a foundation for positioning machine learning anomaly detection as a strategic instrument for strengthening oversight, enhancing operational performance, and promoting proactive decision-making across government initiatives.