Program of Neuroscience, Worcester Polytechnic Institute, Worcester, MA, USA.
Department of Communication Sciences and Disorders, University of Wisconsin-Madison, Madison, WI, USA.
Behav Res Methods. 2024 Apr;56(4):3606-3618. doi: 10.3758/s13428-023-02281-4. Epub 2023 Dec 4.
Uncovering cognitive representations is an elusive goal that is increasingly pursued using the reverse correlation method, wherein human subjects make judgments about ambiguous stimuli. Employing reverse correlation often entails collecting thousands of stimulus-response pairs, which severely limits the breadth of studies that are feasible using the method. Current techniques to improve efficiency bias the outcome. Here we show that this methodological barrier can be diminished using compressive sensing, an advanced signal processing technique designed to improve sampling efficiency. Simulations are performed to demonstrate that compressive sensing can improve the accuracy of reconstructed cognitive representations and dramatically reduce the required number of stimulus-response pairs. Additionally, compressive sensing is used on human subject data from a previous reverse correlation study, demonstrating a dramatic improvement in reconstruction quality. This work concludes by outlining the potential of compressive sensing to improve representation reconstruction throughout the fields of psychology, neuroscience, and beyond.
揭示认知表象是一个难以企及的目标,目前越来越多的研究人员开始使用反向相关方法来实现这一目标,该方法要求人类受试者对模棱两可的刺激做出判断。使用反向相关方法通常需要收集数千个刺激-反应对,这极大地限制了该方法可行的研究范围。当前提高效率的技术往往会产生偏差。在这里,我们表明,可以使用压缩感知来减少这种方法上的障碍,压缩感知是一种先进的信号处理技术,旨在提高采样效率。通过模拟演示,我们证明了压缩感知可以提高重建认知表象的准确性,并显著减少所需的刺激-反应对数量。此外,还将压缩感知技术应用于之前的反向相关研究中的人类受试者数据,结果表明重建质量有了显著提高。最后,本文通过概述压缩感知在心理学、神经科学等领域以及其他领域改善表象重建的潜力,对全文进行了总结。