Author/Authors :
Ashraf M. Abdelbar، نويسنده , , Stephen T. Hedetniemi، نويسنده , , Sandra M. Hedetniemi، نويسنده ,
Abstract :
Probabilistic inference and maximum a posteriori (MAP) explanation are two important and related problems on Bayesian belief networks. Both problems are known to be NP-hard for both approximation and exact solution. In 1997, Dagum and Luby showed that efficiently approximating probabilistic inference is possible for belief networks in which all probabilities are bounded away from 0. In this paper, we show that the corresponding result for MAP explanation does not hold: finding, or approximating, MAPs for belief networks remains NP-hard for belief networks with probabilities bounded within the range [l,u] for any 0⩽l<0.5
Keywords :
Bayesian belief networks , Complexity , Local variance bound , Satisfiability , Bipartite networks
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence