A new two-stage method for the construction of a decision tree is developed. The first stage is based on the definition of a minimum query set, which is the smallest set of attribute-value pairs for which any two objects can be distinguished. To obtain this set, an appropriate linear programming model is proposed. The queries from this set are building blocks of the second stage in which we try to find an optimal decision tree using a genetic algorithm. In a series of experiments, we show that for some databases, our approach should be considered as an alternative method to classical ones (CART, C4.5) and other heuristic approaches in terms of classification quality.
CITATION STYLE
Wieczorek, W., Kozak, J., Strak, Ł., & Nowakowski, A. (2021). Minimum Query Set for Decision Tree Construction. Entropy, 23(12). https://doi.org/10.3390/e23121682
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