Thurley Kay
Department Biology II, Ludwig-Maximilians-Universität MünchenMünchen, Germany; Bernstein Center for Computational NeuroscienceMunich, Germany.
Front Integr Neurosci. 2016 Feb 16;10:6. doi: 10.3389/fnint.2016.00006. eCollection 2016.
Judgments of physical stimuli show characteristic biases; relatively small stimuli are overestimated whereas relatively large stimuli are underestimated (regression effect). Such biases likely result from a strategy that seeks to minimize errors given noisy estimates about stimuli that itself are drawn from a distribution, i.e., the statistics of the environment. While being conceptually well described, it is unclear how such a strategy could be implemented neurally. The present paper aims toward answering this question. A theoretical approach is introduced that describes magnitude estimation as two successive stages of noisy (neural) integration. Both stages are linked by a reference memory that is updated with every new stimulus. The model reproduces the behavioral characteristics of magnitude estimation and makes several experimentally testable predictions. Moreover, the model identifies the regression effect as a means of minimizing estimation errors and explains how this optimality strategy depends on the subject's discrimination abilities and on the stimulus statistics. The latter influence predicts another property of magnitude estimation, the so-called range effect. Beyond being successful in describing decision-making, the present work suggests that noisy integration may also be important in processing magnitudes.
对物理刺激的判断呈现出特征性偏差;相对较小的刺激被高估,而相对较大的刺激被低估(回归效应)。这种偏差可能源于一种策略,即在对本身从分布中抽取的刺激进行有噪声估计的情况下,该策略试图将误差最小化,即环境的统计信息。虽然在概念上描述得很清楚,但尚不清楚这种策略如何在神经层面上得以实现。本文旨在回答这个问题。引入了一种理论方法,将大小估计描述为噪声(神经)整合的两个连续阶段。这两个阶段通过一个参考记忆相联系,该参考记忆会随着每个新刺激而更新。该模型再现了大小估计的行为特征,并做出了几个可通过实验验证的预测。此外,该模型将回归效应识别为最小化估计误差的一种手段,并解释了这种最优策略如何取决于受试者的辨别能力和刺激统计信息。后者的影响预测了大小估计的另一个特性,即所谓的范围效应。除了成功描述决策过程外,本研究表明噪声整合在处理大小方面可能也很重要。