Causal-Discovery-Based Root-Cause Analysis (CD-RCA) is a novel method for identifying the root causes of prediction errors in machine learning models by leveraging causal relationships between variables, outperforming traditional heuristic methods.
Explainable AI is effective in identifying and mitigating feature corruptions that lead to prediction anomalies in machine learning models.