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Limits on support recovery with probabilistic models: An information-theoretic framework

机译:概率模型对支持恢复的限制:信息理论框架

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The support recovery problem consists of determining a sparse subset of a set of variables that is relevant in generating a set of observations, and arises in a diverse range of settings such as group testing, compressive sensing, and subset selection in regression. In this paper, we provide a unified approach to support recovery problems, considering general probabilistic observation models relating a sparse data vector to an observation vector. We study the information-theoretic limits for both exact and partial support recovery, taking a novel approach motivated by thresholding techniques in channel coding. We provide general achievability and converse bounds characterizing the trade-off between the error probability and number of measurements, and we specialize these bounds the linear and 1-bit compressive sensing models. Our conditions not only provide scaling laws, but also explicit matching or near-matching constant factors. Moreover, our converse results not only provide conditions under which the error probability fails to vanish, but also conditions under which it tends to one.
机译:支持恢复问题包括确定在生成一组观察中相关的一组变量的稀疏子集,并且在不同的设置范围内产生,例如群体测试,压缩感测和回归中的子集选择。在本文中,考虑到将稀疏数据向量与观察向量相关的一般概率观察模型,提供了支持恢复问题的统一方法。我们研究了精确和部分支持恢复的信息 - 理论极限,采用通道编码中的阈值技术激励的新方法。我们提供了一般的成就性和兼容界,其特征在于误差概率和测量次数之间的权衡,我们专门化线性和1位压缩传感模型。我们的条件不仅提供缩放法律,还可以明确匹配或接近匹配的恒定因素。此外,我们的匡益结果不仅提供了错误概率未能消失的条件,还提供了它往往的误差概率。

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