Department of Complex Systems, Institute of Computer Science of the Czech Academy of Sciences, Prague 18200, Czech Republic.
Consciousness Studies Programme, National Institute of Advanced Studies, Bengaluru 560012, India.
Phys Rev E. 2023 Mar;107(3-1):034308. doi: 10.1103/PhysRevE.107.034308.
Compressed sensing is a scheme that allows for sparse signals to be acquired, transmitted, and stored using far fewer measurements than done by conventional means employing the Nyquist sampling theorem. Since many naturally occurring signals are sparse (in some domain), compressed sensing has rapidly seen popularity in a number of applied physics and engineering applications, particularly in designing signal and image acquisition strategies, e.g., magnetic resonance imaging, quantum state tomography, scanning tunneling microscopy, and analog to digital conversion technologies. Contemporaneously, causal inference has become an important tool for the analysis and understanding of processes and their interactions in many disciplines of science, especially those dealing with complex systems. Direct causal analysis for compressively sensed data is required to avoid the task of reconstructing the compressed data. Also, for some sparse signals, such as for sparse temporal data, it may be difficult to discover causal relations directly using available data-driven or model-free causality estimation techniques. In this work, we provide a mathematical proof that structured compressed sensing matrices, specifically circulant and Toeplitz, preserve causal relationships in the compressed signal domain, as measured by Granger causality (GC). We then verify this theorem on a number of bivariate and multivariate coupled sparse signal simulations which are compressed using these matrices. We also demonstrate a real world application of network causal connectivity estimation from sparse neural spike train recordings from rat prefrontal cortex. In addition to demonstrating the effectiveness of structured matrices for GC estimation from sparse signals, we also show a computational time advantage of the proposed strategy for causal inference from compressed signals of both sparse and regular autoregressive processes as compared to standard GC estimation from original signals.
压缩感知是一种方案,允许使用比传统方法少得多的测量值来获取、传输和存储稀疏信号,传统方法采用奈奎斯特采样定理。由于许多自然发生的信号在某些域中是稀疏的,因此压缩感知在许多应用物理学和工程应用中迅速流行起来,特别是在设计信号和图像处理采集策略方面,例如磁共振成像、量子态层析成像、扫描隧道显微镜和模拟到数字转换技术。同时,因果推断已成为许多科学学科中分析和理解过程及其相互作用的重要工具,特别是在处理复杂系统的学科中。为了避免重建压缩数据的任务,需要对压缩感知数据进行直接因果分析。此外,对于一些稀疏信号,例如稀疏时间数据,可能很难直接使用可用的数据驱动或无模型因果关系估计技术来发现因果关系。在这项工作中,我们提供了一个数学证明,即结构压缩感知矩阵,特别是循环和 Toeplitz,在压缩信号域中保留了因果关系,如 Granger 因果关系 (GC) 所测量的那样。然后,我们在使用这些矩阵压缩的一些二元和多元耦合稀疏信号模拟中验证了这个定理。我们还展示了来自大鼠前额叶皮层稀疏神经尖峰记录的网络因果连通性估计的实际应用。除了证明结构矩阵在从稀疏信号估计 GC 方面的有效性外,我们还展示了与从原始信号进行标准 GC 估计相比,针对稀疏和规则自回归过程的压缩信号进行因果推断的提出策略在计算时间上的优势。