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Predicting survival in malignant skin melanoma using Bayesian networks automatically induced by genetic algorithms. An empirical comparison between different approaches.

作者信息

Sierra B, Larrañaga P

机构信息

Department of Computer Science and Artificial Intelligence, University of the Basque Country, San Sebastian, Spain.

出版信息

Artif Intell Med. 1998 Sep-Oct;14(1-2):215-30. doi: 10.1016/s0933-3657(98)00024-4.

DOI:10.1016/s0933-3657(98)00024-4
PMID:9779891
Abstract

In this work we introduce a methodology based on genetic algorithms for the automatic induction of Bayesian networks from a file containing cases and variables related to the problem. The structure is learned by applying three different methods: The Cooper and Herskovits metric for a general Bayesian network, the Markov blanket approach and the relaxed Markov blanket method. The methodologies are applied to the problem of predicting survival of people after 1, 3 and 5 years of being diagnosed as having malignant skin melanoma. The accuracy of the obtained models, measured in terms of the percentage of well-classified subjects, is compared to that obtained by the so-called Naive-Bayes. In the four approaches, the estimation of the model accuracy is obtained from the 10-fold cross-validation method.

摘要

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