2023 graduate level students projects

Enhancing Trading Strategy Robustness through Anomaly Detection

This project explores the use of anomaly detection techniques, such as One-Class SVM, to identify the conditions under which algorithmic trading strategies are likely to succeed, ensuring their applicability and extending the approach to portfolio-wide strategy optimization.

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Graph-Based and Time-Series Hybrid Modeling for Fraud Detection

This project develops a hybrid fraud detection model by combining graph-based learning and time-series analysis to capture complex transaction relationships, aiming to enhance fraud prediction accuracy while minimizing false positives in large-scale payment datasets.

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