Center for Computational Neuroscience, Flatiron Institute, Simons Foundation, New York, NY 10010.
Center for Neural Science, New York University, New York, NY 10003.
Proc Natl Acad Sci U S A. 2024 Jun 18;121(25):e2312293121. doi: 10.1073/pnas.2312293121. Epub 2024 Jun 10.
The perception of sensory attributes is often quantified through measurements of sensitivity (the ability to detect small stimulus changes), as well as through direct judgments of appearance or intensity. Despite their ubiquity, the relationship between these two measurements remains controversial and unresolved. Here, we propose a framework in which they arise from different aspects of a common representation. Specifically, we assume that judgments of stimulus intensity (e.g., as measured through rating scales) reflect the mean value of an internal representation, and sensitivity reflects a combination of mean value and noise properties, as quantified by the statistical measure of Fisher information. Unique identification of these internal representation properties can be achieved by combining measurements of sensitivity and judgments of intensity. As a central example, we show that Weber's law of perceptual sensitivity can coexist with Stevens' power-law scaling of intensity ratings (for all exponents), when the noise amplitude increases in proportion to the representational mean. We then extend this result beyond the Weber's law range by incorporating a more general and physiology-inspired form of noise and show that the combination of noise properties and sensitivity measurements accurately predicts intensity ratings across a variety of sensory modalities and attributes. Our framework unifies two primary perceptual measurements-thresholds for sensitivity and rating scales for intensity-and provides a neural interpretation for the underlying representation.
感觉属性的感知通常通过测量敏感度(检测小刺激变化的能力)以及直接判断外观或强度来量化。尽管它们无处不在,但这两种测量方法之间的关系仍然存在争议且尚未解决。在这里,我们提出了一个框架,其中它们来自于共同表示的不同方面。具体来说,我们假设刺激强度的判断(例如,通过评分量表测量)反映了内部表示的平均值,而敏感度反映了平均值和噪声特性的组合,如 Fisher 信息统计量所量化的。通过结合敏感度测量和强度判断,可以实现这些内部表示特性的独特识别。作为一个中心示例,我们表明,当噪声幅度与表示平均值成比例增加时,感知敏感度的韦伯定律可以与强度等级的斯蒂文斯幂律(对于所有指数)共存。然后,我们通过纳入更一般和受生理学启发的噪声形式来扩展这个结果超出韦伯定律范围,并表明噪声特性和敏感度测量的组合可以准确预测各种感觉模态和属性的强度等级。我们的框架统一了两种主要的感知测量——敏感度的阈值和强度的评分量表,并为基础表示提供了神经解释。