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Learning Bayesian networks by Ant Colony Optimisation: searching in two different spaces.

Luis M. de CamposJosé A. GámezJosé M. Puerta — 2002

Mathware and Soft Computing

The most common way of automatically learning Bayesian networks from data is the combination of a scoring metric, the evaluation of the fitness of any given candidate network to the data base, and a search procedure to explore the search space. Usually, the search is carried out by greedy hill-climbing algorithms, although other techniques such as genetic algorithms, have also been used. A recent metaheuristic, Ant Colony Optimisation (ACO), has been successfully applied to solve a great...

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