Quadratic Similarity Queries on Compressed Data

A. Ingber, T. Courtade, T. Weissman
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引用次数: 7

Abstract

The problem of performing similarity queries on compressed data is considered. We study the fundamental tradeoff between compression rate, sequence length, and reliability of queries performed on compressed data. For a Gaussian source and quadratic similarity criterion, we show that queries can be answered reliably if and only if the compression rate exceeds a given threshold - the identification rate - which we explicitly characterize. When compression is performed at a rate greater than the identification rate, responses to queries on the compressed data can be made exponentially reliable. We give a complete characterization of this exponent, which is analogous to the error and excess-distortion exponents in channel and source coding, respectively. For a general source, we prove that the identification rate is at most that of a Gaussian source with the same variance. Therefore, as with classical compression, the Gaussian source requires the largest compression rate. Moreover, a scheme is described that attains this maximal rate for any source distribution.
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压缩数据的二次相似查询
考虑了对压缩数据执行相似度查询的问题。我们研究压缩率、序列长度和对压缩数据执行查询的可靠性之间的基本权衡。对于高斯源和二次相似准则,我们表明,当且仅当压缩率超过给定的阈值(识别率)时,查询可以可靠地回答,我们明确地描述了这一点。当压缩的执行速率大于识别速率时,对压缩数据的查询响应的可靠性就会呈指数级增长。我们给出了该指数的完整表征,它类似于信道编码中的误差指数和源编码中的过度失真指数。对于一般源,我们证明了具有相同方差的高斯源的识别率最多。因此,与经典压缩一样,高斯源需要最大的压缩率。此外,本文还描述了一种对任何源分布都能达到此最大速率的方案。
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