Title :
Independence-Based MAP for Markov Networks Structure Discovery
Author :
Bromberg, Facundo ; Schlüter, Federico ; Edera, Alejandro
Author_Institution :
Dept. de Sist. de Inf., Univ. Tecnol. Nat., Mendoza, Argentina
Abstract :
This work presents IBMAP, an approach for robust learning of Markov network structures from data, together with IBMAP-HC, an efficient instantiation of the approach. Existing Score-Based (SB) and Independence-Based (IB) approaches must make concessions either on robustness or efficiency. IBMAP-HC improves robustness efficiently through an IB-SB hybrid approach based on the probabilistic Maximum-A-Posteriori (MAP) technique, and the IB-score, a tractable expression for computing posterior probabilities of Markov network structures. Performance is first tested against IB and SB competitors on synthetic datasets. Against IB competitors (GSMN algorithm and a version of the HHC algorithm adapted here for Markov networks discovery), IBMAP-HC showed reductions in edges Hamming distance with same order running times. Against SB competitors, both IBMAP-HC and our adaptation of HHC produced comparable Hamming distances, but with running times orders of magnitude faster. We also evaluated IBMAP-HC in a realistic, challenging test-bed: EDAs, evolutionary algorithms for optimization that estimate a distribution on each generation. Using IBMAP-HC to estimate distributions, EDAs converged to the optimum faster in all benchmark functions considered, reducing required fitness evaluations by up to 80%.
Keywords :
Markov processes; data mining; distributed algorithms; evolutionary computation; learning (artificial intelligence); maximum likelihood estimation; optimisation; statistical distributions; EDA; HHC; Hamming distance reduction; IB-SB hybrid approach; IB-score; IBMAP-HC; Markov network structure discovery; distribution algorithm estimation; evolutionary algorithms; independence-based MAP; optimization; posterior probability; probabilistic MAP technique; probabilistic maximum-a-posteriori technique; robust Markov network structure learning; score-based approach; synthetic datasets; Approximation methods; High definition video; Manganese; Markov random fields; Robustness; Runtime; Estimation of Distribution algorithms; Graphical Models; Markov networks; Structure Learning;
Conference_Titel :
Tools with Artificial Intelligence (ICTAI), 2011 23rd IEEE International Conference on
Conference_Location :
Boca Raton, FL
Print_ISBN :
978-1-4577-2068-0
Electronic_ISBN :
1082-3409
DOI :
10.1109/ICTAI.2011.81