Aprendizado supervisionado incremental de redes bayesianas para mineração de dados
Resumen
The objective of this work is to introduce two algorithms for supervised Bayesian network incremental learning, AIP (Algorithm for simple Bayesian network numerical parameters supervised incremental learning) and ABC
(Algorithm for Bayesian network supervised incremental learning in layers). In order to develop these algorithms we studied relevant works about the Bayesian networks concepts, the algorithms for supervised Bayesian network learning and the algorithms for incremental supervised Bayesian network learning. To improve the performance of the ABC algorithm, we studied the AD-Tree structure and
implemented it on the algorithm. To measure the quality of the networks learned by the algorithms we used these networks learnt to classify a test set, resulting in the correct classification rate (ICC). To do that we studied the test set classification process and the propagation of evidences along the Bayesian network. The result
of the studies is described on this work, along with the results and discussions about the experiments made with the introduced algorithms.