Using Machine Learning to extract Models of human control skills
نویسنده
چکیده
Experimental results are presented of experiments on using Machine Learning algorithms to extract a model of a human control skill The con trol task to be modeled is that of a pilot ying a F ight simulation on a levelled left turn Machine Learning algorithms used include C as a decision tree representative and FOIL and Indlog as Inductive Logic Pro gramming representatives Improvements on the methodology of previous experiments are presented An extension to decision trees is proposed to solve some of the shortcomings ILP systems are being used to improve the extended decision tree results
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