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Compression for quadratic similarity queries via shape-gain quantizers

机译:通过形状增益量化器压缩二次相似性查询

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We study the problem of compression of a Gaussian vector for the purpose of similarity identification, where similarity is defined by the mean square Euclidean distance between vectors. While the asymptotical fundamental limits of the problem - the minimal compression rate and the error exponent - were found in a previous work, in this paper we focus on the nonasymptotic domain. We first present a finite blocklength achievability bound based on shape-gain quantization: The gain (amplitude) of the vector is compressed via scalar quantization, and the shape (the projection on the unit sphere) is quantized using a spherical code. The results are numerically evaluated, and they converge to the asymptotic values as predicted by the error exponent. For a practical implementation of such a scheme, we use wrapped spherical codes, studied by Hamkins and Zeger, and use the Leech lattice as an example for an underlying lattice. As a side result, we obtain a bound on the covering angle of any wrapped spherical code, as a function of the covering radius of the underlying lattice.
机译:我们研究了高斯向量的压缩问题以获得相似性识别的目的,其中相似性由矢量之间的均方欧几里德距离限定。虽然问题的渐近基本限制 - 在本文中发现了最小的压缩率和错误指数 - 在本文中,我们专注于非对话域。我们首先介绍基于形状 - 增益量化的有限块长度达成的替换性:矢量的增益(幅度)通过标量量化压缩,并且使用球面代码量化形状(单元球上的投影)。结果在数值评估,它们会聚到误差指数预测的渐近值。对于这种方案的实际实施,我们使用Hamkins和Zeger研究的包装球形代码,并使用Leech格子作为底层格子的示例。作为侧面结果,我们获得任何包装球形代码的覆盖角的绑定,作为底层晶格的覆盖半径的函数。

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