Efficient Algorithms for the Bee-Identification Problem

Han Mao Kiah;Alexander Vardy;Hanwen Yao
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引用次数: 3

Abstract

The bee-identification problem, formally defined by Tandon, Tan, and Varshney (2019), requires the receiver to identify “bees” using a set of unordered noisy measurements. In this previous work, Tandon, Tan, and Varshney studied error exponents and showed that decoding the measurements jointly results in a significantly larger error exponent. In this work, we study algorithms related to this joint decoder. First, we demonstrate how to perform joint decoding efficiently. By reducing to the problem of finding perfect matching and minimum-cost matchings, we obtain joint decoders that run in time quadratic and cubic in the number of “bees” for the binary erasure (BEC) and binary symmetric channels (BSC), respectively. Next, by studying the matching algorithms in the context of channel coding, we further reduce the running times by using classical tools like peeling decoders and list-decoders. In particular, we show that our identifier algorithms when used with Reed-Muller codes terminate in almost linear and quadratic time for BEC and BSC, respectively. Finally, for explicit codebooks, we study when these joint decoders fail to identify the “bees” correctly. Specifically, we provide practical methods of estimating the probability of erroneous identification for given codebooks.
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蜜蜂识别问题的有效算法
由Tandon, Tan和Varshney(2019)正式定义的蜜蜂识别问题要求接收器使用一组无序噪声测量来识别“蜜蜂”。在之前的工作中,Tandon、Tan和Varshney研究了误差指数,并表明联合解码测量结果会导致更大的误差指数。在这项工作中,我们研究了与该联合解码器相关的算法。首先,我们演示了如何有效地进行联合解码。通过简化到寻找完美匹配和最小代价匹配的问题,我们获得了二进制擦除(BEC)和二进制对称信道(BSC)的联合解码器,其运行时间分别为二次和三次的“蜜蜂”数量。接下来,通过研究信道编码背景下的匹配算法,我们使用剥离解码器和列表解码器等经典工具进一步减少运行时间。特别地,我们证明了我们的标识符算法在与Reed-Muller码一起使用时,分别在BEC和BSC的几乎线性和二次时间内终止。最后,对于显式密码本,我们研究了当这些联合解码器无法正确识别“蜜蜂”时。具体来说,我们提供了估计给定码本错误识别概率的实用方法。
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CiteScore
8.20
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