informationmost
Informationmost is a term used in information theory and data analysis to describe a notion of maximal information content associated with a potential observation or feature. While not a standard term in mainstream theory, it is employed in discussions of surprisal and active learning to denote the element that would be most informative to observe under a given model or distribution.
Formal definition often frames informationmost in terms of self-information. For a discrete random variable X with
Interpretation and use are context-dependent. In Bayesian updating, observing an outcome with high self-information has the
Limitations include sensitivity to the chosen model and distribution; focusing solely on the rarest outcomes can
See also: surprisal, entropy, information gain, Bayesian updating, active learning.