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Intrinsic complexity of learning geometrical concepts from positive data

机译:从正向数据学习几何概念的内在复杂性

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Intrinsic complexity is used to measure the complexity of learning areas limited by broken-straight lines (called open semi-hulls) and intersections of such areas. Any strategy learning such geometrical concepts can be viewed as a sequence of primitive basic strategies. Thus, the length of such a sequence together with the complexities of the primitive strategies used can be regarded as the complexity of learning the concepts in question. We obtained the best possible lower and upper bounds on learning open semi-hulls, as well as matching upper and lower bounds on the complexity of learning intersections of such areas. Surprisingly, upper bounds in both cases turn out to be much lower than those provided by natural learning strategies. Another surprising result is that learning intersections of open semi-hulls turns out to be easier than learning open semi-hulls themselves.
机译:内在复杂性用于测量受折线(称为开放半壳)和此类区域的交点限制的学习区域的复杂性。任何学习此类几何概念的策略都可以视为一系列原始基本策略。因此,这种序列的长度以及所用原始策略的复杂性可以被视为学习所讨论概念的复杂性。我们在学习开放半船体时获得了最佳的上下限,并在学习此类区域的交叉点的复杂度上匹配了上下限。令人惊讶的是,两种情况的上限都远远低于自然学习策略提供的上限。另一个令人惊讶的结果是,学习开放式半壳的交集比学习开放式半壳本身更容易。

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