RFOD: Random Forest-based Outlier Detection for Tabular Data
arXiv:2510.08747v1 Announce Type: new Abstract: Outlier detection in tabular data is crucial for safeguarding data integrity in high-stakes domains such as cybersecurity, financial fraud detection, and healthcare, where anomalies can cause serious operational and economic impacts. Despite advances in both…
