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Decision Tree Approximations of Boolean Functions

机译:布尔函数的决策树近似

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摘要

Decision trees are popular representations of Boolean functions. We show that, given an alternative representation of a Boolean function f, say as a read-once branching program, one can find a decision tree T which approximates f to any desired amount of accuracy. Moreover, the size of the decision tree is at most that of the smallest decision tree which can represent f and this construction can be obtained in quasi-polynomial time. We also extend this result to the case where one has access only to a source of random evaluations of the Boolean function f instead of a complete representation. In this case, we show that a similar approximation can be obtained with any specified amount of confidence (as opposed to the absolute certainty of the former case.) This latter result implies proper PAC-learnability of decision trees under the uniform distribution without using membership queries.
机译:决策树是布尔函数的流行表示。我们表明,给定布尔函数f的另一种表示形式,例如作为一次读取分支程序,可以找到决策树T,该决策树T将f近似为任何所需的精度。此外,决策树的大小最多是可以表示f的最小决策树的大小,并且这种构造可以在准多项式时间内获得。我们还将这一结果扩展到只有一个人可以访问布尔函数f的随机评估源而不是一个完整表示的情况。在这种情况下,我们表明可以在任何指定的置信度下(与前一种情况的绝对确定性相对)获得相似的近似值。后一种结果暗示在均匀分布下无需使用隶属关系的决策树具有适当的PAC可学习性查询。

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