IBA Laboratory
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Summary of Different Estimation of Distribution
Algorithms
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Name of EDA |
Reference |
Salient feature (s) |
Application |
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UMDA |
[7] |
Works well on linear problems of independent variables but requires extension as well as application of local heuristics for combinatorial optimizations. |
Feature Subset Selection, Classifier System etc. |
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PBIL |
[1] |
Very good for the problems of independent variables in binary search space. It uses vector probabilities instead of population. |
Optimal Weights between nodes in Neural Network, Genetic Programming, Intelligent Vehicle Domains |
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CGA |
[5] |
Processes each variable independently and requires less memory than Simple Genetic Algorithm (SGA). |
Intrinsic Evolution of Continuous Time Recurrent Neural Networks |
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MIMIC |
[3] |
Searches in each generation the best permutation of the variables to find the probability distribution using Kullback-Leibler distance. |
Can be applied to the problems with variables having at most two-order dependencies |
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COMIT |
[2] |
Estimation of probability distribution is done using a tree structured Bayesian Network learnt by Maximum Weight Spanning Tree (MWST) Algorithm. |
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BMDA |
[10] |
It is based on the construction of a dependency graph, which is acyclic but does not necessarily have to be a connected graph. |
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FDA |
[8] |
It requires Additively Decomposed Function (ADF) and the factorization of the joint probability distribution remains same for all iterations. It combines evolutionary algorithm and simulated annealing. |
Additively decomposable problems |
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BOA |
[9] |
It uses Bayesian Network and Bayesian Dirichlet (BD) metric to estimate joint probability distribution. It can incorporate prior information about the problem. |
Decomposable problems of bounded difficulty |
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ECGA |
[4] |
It factorizes the joint probability distribution as a product of marginal distributions of variable size. |
Silicon Cluster Optimization problem |
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EBNA |
[6] |
It uses Bayesian Network for the factorization of the joint probability distribution. It uses BIC score, K2+Penalized score or PC algorithm for guiding the search of good model structure |
Feature Subset Selection, Featuring weighting in K-NN, Job Shop Scheduling, TSP etc. |
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[1]
Baluja, S. (1994). Population based incremental learning: A method for
integrating genetic search based function optimization and competitive
learning. Technical Report No. CMU-CS-94-163, Carnegie Mellon University,
Pittsburgh, Pennsylvania.
[2] Baluja, S. and Davies, S.(1997). Using
optimal dependency trees for combinatorial optimization: Learning the structure
of search space. Technical Report CMU-CS-97-107, Carnegie Mellon
University, Pittsburgh, Pennsylvania
[3] De Bonet, J.S., Isbell,C.L. and Viola,
P.(1997). MIMIC: Finding Optima by estimating probability densities.
Advances in Neural Information Processing Systems, Vol. 9
[4] Harik, G.(1999).Linkage learning via
probabilistic modeling in the ECGA. Illigal
Report No. 99010,Illinois Genetic Algorithm Laboratory, University of Illinois,
Urbana, Illinois.
[5] Harik,G. R., Lobo, F.G. and Goldberg,
D.E.(1998).The compact genetic algorithm. In Proceedings of the IEEE
Conference on Evolutionary Computation, 523-528
[6] Larraňaga,P., Etxeberria, R.,
Lozano,J.A. and Peňa, J.M.(2000). Combinatorial
Optimization by learning and simulation of Bayesian networks. In
Proceedings of the Sixteenth Conference on Uncertainty in Artificial
Intelligence, Stanford, 343-352
[7] Mühlenbein, H. (1998). The equation for
response to selection and its use for prediction. Evolutionary Computation,
5(3): 303-346.
[8] Mühlenbein,H. and Mahnig,T.(1999). The
Factorized Distribution Algorithm for additively decomposed functions. Proceedings
of the 1999 Congress on Evolutionary Computation, IEEE press,752-759.
[9] Pelikan, M.,Goldberg,D.E. and Cantú-paz,
E.(2000). LinkageProblem, Distribution Estimation and Bayesian Networks. Evolutionary
Computation 8(3):311-340.
[10] Pelikan,M. and Mühlenbein, H.(1999).The
bivariate marginal distribution algorithm. Advances in Soft
Computing-Engineering Design and Manufacturing, 521-535.
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updated 2002/11/20