Personnaliser

OK

Aujourd'hui seulement ! 25? offerts* dès 249? d'achat sur tout le site avec le code : RAKUTEN25

En profiter

Continual Learning as Computationally Constrained Reinforcement Learning - Kumar, Saurabh

Note : 0

0 avis
  • Soyez le premier à donner un avis

Vous en avez un à vendre ?

Vendez-le-vôtre
Aucun vendeur ne propose ce produit

Soyez informé(e) par e-mail dès l'arrivée de cet article

Créer une alerte prix
Publicité
 
Vous avez choisi le retrait chez le vendeur à
  • Payez directement sur Rakuten (CB, PayPal, 4xCB...)
  • Récupérez le produit directement chez le vendeur
  • Rakuten vous rembourse en cas de problème

Gratuit et sans engagement

Félicitations !

Nous sommes heureux de vous compter parmi nos membres du Club Rakuten !

En savoir plus

Retour

Horaires

      Note :


      Avis sur Continual Learning As Computationally Constrained Reinforcement Learning Format Broché  - Livre Informatique

      Note : 0 0 avis sur Continual Learning As Computationally Constrained Reinforcement Learning Format Broché  - Livre Informatique

      Les avis publiés font l'objet d'un contrôle automatisé de Rakuten.


      Présentation Continual Learning As Computationally Constrained Reinforcement Learning Format Broché

       - Livre Informatique

      Livre Informatique - Kumar, Saurabh - 01/08/2025 - Broché - Langue : Anglais

      . .

    • Auteur(s) : Kumar, Saurabh - Marklund, Henrik - Rao, Ashish
    • Editeur : Emerald Publishing Limited (Now Publishers)
    • Langue : Anglais
    • Parution : 01/08/2025
    • Format : Moyen, de 350g à 1kg
    • Nombre de pages : 160.0
    • ISBN : 1638285780



    • Résumé :
      An agent that accumulates knowledge to develop increasingly sophisticated skills over a long lifetime could advance the frontier of artificial intelligence capabilities. The design of such agents, which remains a long-standing challenge, is addressed by the subject of continual learning. This monograph clarifies and formalizes concepts of continual learning, introducing a framework and tools to stimulate further research. We also present a range of empirical case studies to illustrate the roles of forgetting, relearning, exploration, and auxiliary learning. Metrics presented in previous literature for evaluating continual learning agents tend to focus on particular behaviors that are deemed desirable, such as avoiding catastrophic forgetting, retaining plasticity, relearning quickly, and maintaining low memory or compute footprints. In order to systematically reason about design choices and compare agents, a coherent, holistic objective that encompasses all such requirements would be helpful. To provide such an objective, we cast continual learning as reinforcement learning with limited compute resources. In particular, we pose the continual learning objective to be the maximization of infinite-horizon average reward subject to a computational constraint. Continual supervised learning, for example, is a special case of our general formulation where the reward is taken to be negative log-loss or accuracy. Among the implications of maximizing average reward are that remembering all information from the past is unnecessary, forgetting nonrecurring information is not catastrophic, and learning about how an environment changes over time is useful. Computational constraints give rise to informational constraints in the sense that they limit the amount of information used to make decisions. A consequence is that, unlike in more common framings of machine learning in which per-timestep regret vanishes as an agent accumulates information, the regret experienced in continual learning typically persists. Related to this is that even in stationary environments, informational constraints can incentivize perpetual adaptation. Informational constraints also give rise to the familiar stability-plasticity dilemma, which we formalize in information-theoretic terms....

      Le choixNeuf et occasion
      Minimum5% remboursés
      La sécuritéSatisfait ou remboursé
      Le service clientsÀ votre écoute
      LinkedinFacebookTwitterInstagramYoutubePinterestTiktok
      visavisa
      mastercardmastercard
      klarnaklarna
      paypalpaypal
      floafloa
      americanexpressamericanexpress
      Rakuten Logo
      • Rakuten Kobo
      • Rakuten TV
      • Rakuten Viber
      • Rakuten Viki
      • Plus de services
      • À propos de Rakuten
      Rakuten.com