Apprentissage par différence temporelle
Domaine
Définition
Termes privilégiés
Anglais
Temporal difference learning
Temporal difference (TD) learning is a prediction-based machine learning method. It has primarily been used for the reinforcement learning problem, and is said to be "a combination of Monte Carlo ideas and dynamic programming (DP) ideas."[1] TD resembles a Monte Carlo method because it learns by sampling the environment according to some policy[clarification needed], and is related to dynamic programming techniques as it approximates its current estimate based on previously learned estimates (a process known as bootstrapping). The TD learning algorithm is related to the temporal difference model of animal learning.[2]
Contributeurs: Evan Brach, Claire Gorjux, Claude Coulombe, Jacques Barolet, wiki