metarobustnost
Metarobustnost is a term used in statistics and machine learning to describe a system or model's ability to perform well across a wide range of different environments or data distributions. It goes beyond simple robustness, which typically refers to resilience against noise or outliers within a single, assumed distribution. Metarobustness implies an even higher level of adaptability, suggesting that the system can function effectively even when the underlying rules or characteristics of the data change significantly.
A metarobust model would not only handle variations in the data itself but would also be insensitive