Switch to: References

Add citations

You must login to add citations.
  1. PRM inference using Jaffray & Faÿ’s Local Conditioning.Christophe Gonzales & Pierre-Henri Wuillemin - 2011 - Theory and Decision 71 (1):33-62.
    Probabilistic Relational Models (PRMs) are a framework for compactly representing uncertainties (actually probabilities). They result from the combination of Bayesian Networks (BNs), Object-Oriented languages, and relational models. They are specifically designed for their efficient construction, maintenance and exploitation for very large scale problems, where BNs are known to perform poorly. Actually, in large-scale problems, it is often the case that BNs result from the combination of patterns (small BN fragments) repeated many times. PRMs exploit this feature by defining these patterns (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Controlled generation of hard and easy Bayesian networks: Impact on maximal clique size in tree clustering.Ole J. Mengshoel, David C. Wilkins & Dan Roth - 2006 - Artificial Intelligence 170 (16-17):1137-1174.
    Download  
     
    Export citation  
     
    Bookmark   2 citations  
  • Topological parameters for time-space tradeoff.Rina Dechter & Yousri El Fattah - 2001 - Artificial Intelligence 125 (1-2):93-118.
    Download  
     
    Export citation  
     
    Bookmark   5 citations  
  • Recursive conditioning.Adnan Darwiche - 2001 - Artificial Intelligence 126 (1-2):5-41.
    Download  
     
    Export citation  
     
    Bookmark   12 citations  
  • Complexity of probabilistic reasoning in directed-path singly-connected Bayes networks.Solomon E. Shimony & Carmel Domshlak - 2003 - Artificial Intelligence 151 (1-2):213-225.
    Download  
     
    Export citation  
     
    Bookmark   2 citations