hibatrést
Hibatrést is a fictional term used in theoretical discussions of learning dynamics in artificial systems and cognitive models. It describes a transient phase during iterative problem solving when the system’s error rate falls temporarily after a period of higher or fluctuating error, before potentially rising again with new data or tasks.
Origin and etymology: The word combines Hungarian hiba ("error") and rés ("gap"), and was introduced in speculative
Definition: Hibatrést is characterized by a non-monotonic trajectory of performance: after an initial period of rapid
Mechanisms: It is attributed to a combination of implicit regularization, partial consolidation of internal representations, and
Implications: Identifying hibatrést can help researchers interpret complex training curves, optimize hyperparameters, and distinguish genuine generalization
Examples: In simulations of neural networks with noisy labels, a short window where misclassification drops noticeably
See also: Learning dynamics, regularization, annealing, non-monotonic optimization.