« Probabilité algorithmique » : différence entre les versions


m (Remplacement de texte — « Termes privilégiés » par « Français »)
Ligne 9 : Ligne 9 :


== Français ==
== Français ==
probabilité algorithmique


== Anglais ==
== Anglais ==



Version du 29 janvier 2019 à 16:12

Domaine

Vocabulary

Définition

Français

probabilité algorithmique

Anglais

Algorithmic probability

In algorithmic information theory, algorithmic probability, also known as Solomonoff probability, is a mathematical method of assigning a prior probability to a given observation. It was invented by Ray Solomonoff in the 1960s.[1] It is used in inductive inference theory and analyses of algorithms. In his general theory of inductive inference, Solomonoff uses the prior[clarification needed] obtained by this formula[which?], in Bayes' rule for prediction [example needed][further explanation needed].[2]

In the mathematical formalism used, the observations have the form of finite binary strings, and the universal prior is a probability distribution over the set of finite binary strings[citation needed]. The prior is universal in the Turing-computability sense, i.e. no string has zero probability. It is not computable, but it can be approximated.[3]