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On the learnability of monotone functions.

机译:关于单调函数的可学习性。

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摘要

A longstanding lacuna in the held of computational learning theory is the learnability of succinctly representable monotone Boolean functions, i.e., functions that preserve the given order of the input. This thesis makes significant progress towards understanding both the possibilities and the limitations of learning various classes of monotone functions by carefully considering the complexity measures used to evaluate them.;We show that Boolean functions computed by polynomial-size monotone circuits are hard to learn assuming the existence of one-way functions. Having shown the hardness of learning general polynomial-size monotone circuits, we show that the class of Boolean functions computed by polynomial-size depth-3 monotone circuits are hard to learn using statistical queries. As a counterpoint, we give a statistical query learning algorithm that can learn random polynomial-size depth-2 monotone circuits (i.e., monotone DNF formulas).;As a preliminary step towards a fully polynomial-time, proper learning algorithm for learning polynomial-size monotone decision trees, we also show the relationship between the average depth of a monotone decision tree, its average sensitivity, and its variance.;Finally, we return to monotone DNF formulas, and we show that they are teachable (a different model of learning) in the average case. We also show that non-monotone DNF formulas, juntas, and sparse GF 2 formulas are teachable in the average case.
机译:在计算学习理论中,长期存在的空白是简洁可表示的单调布尔函数(即保留输入给定顺序的函数)的可学习性。通过仔细考虑用于评估它们的复杂性度量,本论文在理解学习各种类别的单调函数的可能性和局限性方面取得了重大进展。;我们证明了由多项式大小的单调电路计算的布尔函数很难学习单向功能的存在。展示了学习一般多项式大小的单调电路的难度后,我们证明了由多项式大小的depth-3单调电路计算的布尔函数类别很难使用统计查询来学习。作为对策,我们提供了一种统计查询学习算法,该算法可以学习随机多项式大小的depth-2单调电路(即,单调DNF公式)。大小单调决策树,我们还展示了单调决策树的平均深度,平均灵敏度及其方差之间的关系;最后,我们返回到单调DNF公式,并表明它们是可教导的(不同的模型学习)。我们还显示,在一般情况下,非单调DNF公式,juntas和稀疏GF 2公式是可教导的。

著录项

  • 作者

    Lee, Homin K.;

  • 作者单位

    Columbia University.;

  • 授予单位 Columbia University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:31

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