Machine learning in prognosis of the femoral neck fracture recovery

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We compare the performance of several machine learning algorithms in the problem of prognostics of the femoral neck fracture recovery: the K-nearest neighbours algorithm, the semi-naive Bayesian classifier, backpropagation with weight elimination learning of the multilayered neural networks, the LFC (lookahead feature construction) algorithm, and the Assistant-I and Assistant-R algorithms for top down induction of decision trees using information gain and RELIEFF as search heuristics, respectively. We compare the prognostic accuracy and the explanation ability of different classifiers. Among the different algorithms the semi-naive Bayesian classifier and Assistant-R seem to be the most appropriate. We analyze the combination of decisions of several classifiers for solving prediction problems and show that the combined classifier improves both performance and the explanation ability.

论文关键词:Learning from examples,Estimating attributes,Explanation ability,Impurity function,Empirical comparison,Multiple knowledge

论文评审过程:Received 15 August 1995, Accepted 1 April 1996, Available online 23 March 1999.

论文官网地址:https://doi.org/10.1016/S0933-3657(96)00351-X