Decision Trees
نویسنده
چکیده
Decision trees find use in a wide range of application domains. They are used in many different disciplines including diagnosis, cognitive science, artificial intelligence, game theory, engineering and data mining. Decision Trees model has two goals: producing an accurate classifier and understanding the predictive structure of the problem. The classification accuracy of decision trees has been a subject of numerous studies. In this paper I presented the results of some recent research which showed that decision tree algorithms are very useful in any area.
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