frávikagreining
Frávikagreining, often translated as anomaly detection or outlier analysis, is a process used in statistics and machine learning to identify data points that deviate significantly from the expected or normal behavior of a dataset. These unusual observations are known as anomalies or outliers. The primary goal of frávikagreining is to distinguish between normal instances and rare events or instances that raise suspicion.
The concept of frávikagreining is applicable across various domains. In cybersecurity, it is used to detect
Various methods exist for performing frávikagreining. Statistical approaches often rely on assumptions about the underlying data
The effectiveness of frávikagreining depends heavily on the chosen method and the nature of the data. Defining