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Hierarchical Design of Fast Minimum Disagreement Algorithms

机译:快速最小分歧算法的层次设计

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We compose a toolbox for the design of Minimum Disagreement algorithms. This box contains general procedures which transform (without much loss of efficiency) algorithms that are successful for some d-dimensional (geometric) concept class C into algorithms which are successful for a (d + 1)-dimensional extension of C. An iterative application of these transformations has the potential of starting with a base algorithm for a trivial problem and ending up at a smart algorithm for a non-trivial problem. In order to make this working, it is essential that the algorithms are not proper, i.e., they return a hypothesis that is not necessarily a member of C. However, the "price" for using a super-class H of C is so low that the resulting time bound for achieving accuracy ε in the model of agnostic learning is significantly smaller than the time bounds achieved by the up to date best (proper) algorithms. We evaluate the transformation technique for d = 2 on both artificial and real-life data sets and demonstrate that it provides a fast algorithm, which can successfully solve practical problems on large data sets.
机译:我们撰写了一个工具箱,用于设计最小分歧算法。此框包含常规程序(无需大量效率损失)算法,该算法是成功的算法成功,该算法是成功的算法,该算法是C.一种迭代应用程序的(D + 1)的延伸这些变换具有从基本算法开始的潜力,以实现微不足道的问题,并以智能算法结束以进行非琐碎问题。为了使这项工作,算法是必要的,即,它们返回一个不一定是C的构件的假设。然而,使用C的超级H的“价格”是如此之低在不可知学习模型中实现精度ε的所得到的时间被明显小于最新(适当)算法所实现的时间范围。我们在人工和现实生活数据集中评估D = 2的转换技术,并证明它提供了一种快速算法,可以成功解决大数据集的实际问题。

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