asendatavus
Asendatavus is a theoretical construct used in discussions of data persistence and pattern recurrence in computational systems. The term denotes a tendency for historical patterns, biases, or information to reappear in outputs after changes to data, models, or training processes, even when explicit efforts are made to remove them. It is used to frame questions about how legacy data, model priors, and feedback loops influence current behavior.
Etymology for the term is not standardized; it is a coined word intended to evoke ancestry (atavus)
In practice, asendatavus is invoked to describe scenarios such as the recurrences of old biases after fine-tuning,
Applications and debates around the concept are primarily in the realm of thought experiments and theoretical
See also: concept drift, data drift, model drift, dataset decay, feedback loop.