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The efficient partitioning of a finite-dimensional space by a decision tree, each node of which corresponds to a comparison involving a single variable, is a problem occurring in pattern classification, piecewise-constant approximation, and in the efficient programming of decision trees. A two-stage algorithm is proposed. The first stage obtains a sufficient partition suboptimally, either by methods suggested in the paper or developed elsewhere; the second stage optimizes the results of the first stage through a dynamic programming approach. In pattern classification, the resulting decision rule yields the minimum average number of calculations to reach a decision. In approximation, arbitrary accuracy for a finite number of unique samples is possible. In programming decision trees, the expected number of computations to reach a decision is minimized.
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William S. Meisel
D.A. Michalopoulos
IEEE Transactions on Computers
University of Southern California
California State University, Fullerton
Technology Service Corporation (United States)
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Meisel et al. (Mon,) studied this question.
www.synapsesocial.com/papers/6a0896c49a6c4ba6e610ba69 — DOI: https://doi.org/10.1109/t-c.1973.223603