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Competing with Wild Prediction Rules

机译:与野性预测规则竞争

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摘要

We consider the problem of on-line prediction competitive with a benchmark class of continuous but highly irregular prediction rules. It is known that if the benchmark class is a reproducing kernel Hilbert space, there exists a prediction algorithm whose average loss over the first N examples does not exceed the average loss of any prediction rule in the class plus a "regret term" of O(N~(-1/2)). The elements of some natural benchmark classes, however, are so irregular that these classes are not Hilbert spaces. In this paper we develop Banach-space methods to construct a prediction algorithm with a regret term of O(N~(-1/p)), where p ∈ [2, ∞) and p - 2 reflects the degree to which the benchmark class fails to be a Hilbert space.
机译:我们认为在线预测问题与连续但高度不规则的预测规则的基准类竞争。已知如果基准类是可再生内核Hilbert空间,则存在一种预测算法,该算法的前N个示例的平均损失不超过该类中任何预测规则的平均损失加上O(“ retret term”) N〜(-1/2))。但是,某些自然基准类的元素是如此不规则,以致这些类不是希尔伯特空间。在本文中,我们开发了Banach空间方法来构造一个后悔为O(N〜(-1 / p))的预测算法,其中p∈[2,∞),p-2反映了基准的程度类不能成为希尔伯特空间。

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