复合顺序决策对抗消息灵通的对手

T. Weissman
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引用次数: 1

摘要

我们考虑相对于参考滤波器类对噪声损坏序列的分量进行因果估计(滤波)。要过滤的无噪声序列是由“消息灵通的拮抗剂”设计的,这意味着它可能根据滤波器未知的任意规律进化,其中包括基于过去的噪声序列成分。我们表明,这个公式比单个无噪声序列(又名“半随机”设置)更具挑战性,因为任何确定性滤波器,即使保证在每个无噪声单个序列上做得很好,在一些消息灵通的拮抗剂下失败。另一方面,我们构造地建立了一个随机滤波器的存在性,该随机滤波器在每个对手下都能与任意给定的有限参考滤波器竞争。我们的噪声模型允许其噪声输出依赖于过去通道输出(除了无噪声输入符号)的通道。取l = 0,得到无记忆通道作为模型的特殊情况。在这种情况下,我们的方案与最近显示的在半随机设置中与任意参考类竞争的方案一致。因此,我们的研究结果表明,后一种方案在信息充分的拮抗剂下也是普遍的。
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Compound Sequential Decisions Against the Well-Informed Antagonist
We consider causally estimating (filtering) the components of a noise-corrupted sequence relative to a reference class of filters. The noiseless sequence to be filtered is designed by a "well-informed antagonist", meaning it may evolve according to an arbitrary law, unknown to the filter, based, among other things, on past noisy sequence components. We show that this formulation is more challenging than that of an individual noiseless sequence (aka the "semi-stochastic" setting) in the sense that any deterministic filter, even one guaranteed to do well on every noiseless individual sequence, fails under some well-informed antagonist. On the other hand, we constructively establish the existence of a randomized filter which successfully competes with an arbitrary given finite reference class of filters, under every antagonist. Our noise model allows for channels whose noisy output depends on the l past channel outputs (in addition to the noiseless input symbol). Memoryless channels are obtained as a special case of our model by taking l = 0. In this case, our scheme coincides with one that was recently shown to compete with an arbitrary reference class in the semi-stochastic setting. Hence, our results show that the latter scheme is universal also under the well-informed antagonist.
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