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Recursive Teaching Dimension, Learning Complexity, and Maximum Classes

机译:递归教学维度,学习复杂性和最大课程

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摘要

This paper is concerned with the combinatorial structure of concept classes that can be learned from a small number of examples. We show that the recently introduced notion of recursive teaching dimension (RTD, reflecting the complexity of teaching a concept class) is a relevant parameter in this context. Comparing the RTD to self-directed learning, we establish new lower bounds on the query complexity for a variety of query learning models and thus connect teaching to query learning. For many general cases, the RTD is upper-bounded by the VC-dimension, e.g., classes of VC-dimension 1, (nested differences of) intersection-closed classes, "standard" boolean function classes, and finite maximum classes. The RTD thus is the first model to connect teaching to the VC-dimension. The combinatorial structure defined by the RTD has a remarkable resemblance to the structure exploited by sample compression schemes and hence connects teaching to sample compression. Sequences of teaching sets defining the RTD coincide with unlabeled compression schemes both (i) resulting from Rubinstein and Rubinstein's corner-peeling and (ii) resulting from Kuzmin and Warmuth's Tail Matching algorithm.
机译:本文关注的是概念类的组合结构,可以从少量示例中学到。我们表明,最近引入的递归教学维度(RTD,反映了概念课教学的复杂性)的概念在此情况下是一个相关参数。将RTD与自主学习进行比较,我们为各种查询学习模型建立了查询复杂度的新下限,从而将教学与查询学习联系起来。对于许多一般情况,RTD在VC维度的上限,例如VC维度1的类((嵌套嵌套的)相交封闭类,“标准”布尔函数类和有限最大类)。因此,RTD是第一个将教学与VC维度联系起来的模型。 RTD定义的组合结构与样本压缩方案所利用的结构非常相似,因此将教学与样本压缩联系起来。定义RTD的示教集序列与未标记的压缩方案相吻合(i)由Rubinstein和Rubinstein的角剥离产生,以及(ii)由Kuzmin和Warmuth的尾部匹配算法产生。

著录项

  • 来源
    《Algorithmic learning theory》|2010年|p.209-223|共15页
  • 会议地点 Canberra(AU);Canberra(AU)
  • 作者单位

    Fakultat fuer Mathematik, Ruhr-Universitat Bochum D-44780 Bochum, Germany;

    Fakultat fuer Mathematik, Ruhr-Universitat Bochum D-44780 Bochum, Germany;

    Department of Computer Science, University of Regina Regina, SK, Canada S4S 0A2;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

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