Machine learning applied to diagnosis of sport injuries
Several machine learning algorithms were used in the development of an expert system for diagnosing sport injuries. The applied methods include variants of the Assistant algorithm for top-down induction of decision trees, and variants of the Bayesian classifier. Since the available dataset turned out to be insufficent for reliable diagnosis of selected sport injuries, expert-defined diagnostic rules were added and used in combination with classifiers induced by machine learning systems. Experimental results show that the classification accuracy and the explanation capability of the naive Bayesian classifier with the fuzzy discretization of numerical attributes was superior to other methods and therefore the most appropriate for practical use in our application.
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