biasillelike
Biasillelike is a term that appears in discussions of algorithmic bias to describe a bias pattern that resembles known biases but arises from the interaction of multiple components within a system rather than from a single source. It is not a standard or formally defined term in core literatures, and its usage varies across writers and contexts.
In practice, biasillelike is used to refer to bias that shifts with context, task, or evaluation metric,
The term is often argued to be a heuristic rather than a precise technical definition. Proponents say
See also: algorithmic bias, fairness in machine learning, calibration, disparate impact, Simpson’s paradox.