错误Oracle下关节对齐的最优学习

Kasper Green Larsen, M. Mitzenmacher, Charalampos E. Tsourakakis
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引用次数: 3

摘要

我们考虑以下问题,这是有用的应用,如关节图像和形状对齐。目标是恢复n个离散变量gi∈{0,…,k−1}(直到某个全局偏移量)给定它们成对差异的一组噪声观测{(gi−gj) mod k};具体来说,对于某些δ > 0的情况,得到正确答案的概率为$\frac{1}{k} + \delta $,剩下的概率得到一致随机的错误答案。我们考虑一个基于学习的公式,其中可以执行查询来观察两两差异,目标是在获得确切的联合对齐时执行尽可能少的查询。我们提供了一种易于实现,时间效率高的算法,该算法执行$O\left( {\frac{{n\lg n}}{{k{\delta ^2}}}} \right)$查询,并以高概率恢复联合对齐。我们还通过证明一个适用于所有非自适应算法的一般下界来证明我们的算法是最优的。我们的工作大大改进了Chen和candimacs [CC16]最近的工作,他们将问题视为可以使用幂方法解决的约束主成分分析问题。具体来说,我们的方法在算法和分析方面都更简单,并提供了对问题结构的额外见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Learning of Joint Alignments with a Faulty Oracle
We consider the following problem, which is useful in applications such as joint image and shape alignment. The goal is to recover n discrete variables gi ∈ {0,...,k − 1} (up to some global offset) given noisy observations of a set of their pairwise differences {(gi − gj) mod k}; specifically, with probability $\frac{1}{k} + \delta $ for some δ > 0 one obtains the correct answer, and with the remaining probability one obtains a uniformly random incorrect answer. We consider a learning-based formulation where one can perform a query to observe a pairwise difference, and the goal is to perform as few queries as possible while obtaining the exact joint alignment. We provide an easy-to-implement, time efficient algorithm that performs $O\left( {\frac{{n\lg n}}{{k{\delta ^2}}}} \right)$ queries, and recovers the joint alignment with high probability. We also show that our algorithm is optimal by proving a general lower bound that holds for all non-adaptive algorithms. Our work improves significantly recent work by Chen and Candés [CC16], who view the problem as a constrained principal components analysis problem that can be solved using the power method. Specifically, our approach is simpler both in the algorithm and the analysis, and provides additional insights into the problem structure.
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