Financial Anomaly Detection for the Canadian Market
For financial analysts monitoring the Canadian stock market, this work compares anomaly detection methods but is incremental as it applies existing techniques to a new dataset.
The paper evaluates topological data analysis, PCA, and neural network methods for detecting financial anomalies in the TSX-60 Canadian market, finding that neural network and TDA methods achieve the strongest performance.
In this work we evaluate the performance of three classes of methods for detecting financial anomalies: topological data analysis (TDA), principal component analyis (PCA), and Neural Network-based approaches. We apply these methods to the TSX-60 data to identify major financial stress events in the Canadian stock market. We show how neural network-based methods (such as GlocalKD and One-Shot GIN(E)) and TDA methods achieve the strongest performance. The effectiveness of TDA in detecting financial anomalies suggests that global topological properties are meaningful in distinguishing financial stress events.