具有约束分布的非二值序列的序列通用建模

M. Drmota, G. Shamir, W. Szpankowski
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引用次数: 0

摘要

顺序概率分配和通用压缩是齐头并进的。我们提出了具有经验分布的非二进制(和大字母表)序列的顺序概率分配,其参数已知在有限区间内有界。序列概率分配算法在许多需要快速准确估计最大序列概率的应用中是必不可少的。这些应用包括学习、回归、信道估计和解码、预测和通用压缩。另一方面,约束分布引入了有趣的理论转折,为了呈现有效的顺序算法,必须克服这些转折。在这里,我们专注于无内存源的通用压缩,并给出了约束分布的最大最小最大值和平均最小最大值的精确分析。我们证明了基于改进Krichevsky-Trofimov (KT)估计量的序列算法对于最大冗余和平均冗余都是渐近最优的,可达$O(1)$。本文遵循并解决了\cite{stw08}中提出的挑战,即“二进制情况的结果为研究更大的字母奠定了基础”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Universal Modeling for Non-Binary Sequences with Constrained Distributions
Sequential probability assignment and universal compression go hand in hand. We propose sequential probability assignment for non-binary (and large alphabet) sequences with empirical distributions whose parameters are known to be bounded within a limited interval. Sequential probability assignment algorithms are essential in many applications that require fast and accurate estimation of the maximizing sequence probability. These applications include learning, regression, channel estimation and decoding, prediction, and universal compression. On the other hand, constrained distributions introduce interesting theoretical twists that must be overcome in order to present efficient sequential algorithms. Here, we focus on universal compression for memoryless sources, and present precise analysis for the maximal minimax and the average minimax for constrained distributions. We show that our sequential algorithm based on modified Krichevsky-Trofimov (KT) estimator is asymptotically optimal up to $O(1)$ for both maximal and average redundancies. This paper follows and addresses the challenge presented in \cite{stw08} that suggested "results for the binary case lay the foundation to studying larger alphabets".
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