Hsu Yi-Fang, Waszak Florian, Hämäläinen Jarmo A
Department of Educational Psychology and Counselling, National Taiwan Normal University, Taipei, Taiwan.
Institute for Research Excellence in Learning Sciences, National Taiwan Normal University, Taipei, Taiwan.
Front Hum Neurosci. 2019 Feb 15;13:30. doi: 10.3389/fnhum.2019.00030. eCollection 2019.
The predictive coding model of perception proposes that successful representation of the perceptual world depends upon canceling out the discrepancy between prediction and sensory input (i.e., prediction error). Recent studies further suggest a distinction to be made between prediction error triggered by non-predicted stimuli of different prior precision (i.e., inverse variance). However, it is not fully understood how prediction error with different precision levels is minimized in the predictive process. Here, we conducted a magnetoencephalography (MEG) experiment which orthogonally manipulated prime-probe relation (for contextual precision) and stimulus repetition (for perceptual learning which decreases prediction error). We presented participants with cycles of tone quartets which consisted of three prime tones and one probe tone of randomly selected frequencies. Within each cycle, the three prime tones remained identical while the probe tones changed once at some point (e.g., from repetition of 123X to repetition of 123Y). Therefore, the repetition of probe tones can reveal the development of perceptual inferences in low and high precision contexts depending on their position within the cycle. We found that the two conditions resemble each other in terms of N1m modulation (as both were associated with N1m suppression) but differ in terms of N2m modulation. While repeated probe tones in low precision context did not exhibit any modulatory effect, repeated probe tones in high precision context elicited a suppression and rebound of the N2m source power. The differentiation suggested that the minimization of prediction error in low and high precision contexts likely involves distinct mechanisms.
感知的预测编码模型提出,对感知世界的成功表征取决于消除预测与感官输入之间的差异(即预测误差)。最近的研究进一步表明,由具有不同先验精度(即逆方差)的非预测刺激引发的预测误差之间存在差异。然而,对于在预测过程中如何最小化不同精度水平的预测误差,目前尚未完全理解。在此,我们进行了一项脑磁图(MEG)实验,该实验正交操纵了启动-探测关系(用于情境精度)和刺激重复(用于减少预测误差的感知学习)。我们向参与者呈现了由三个启动音和一个随机选择频率的探测音组成的音四元组循环。在每个循环中,三个启动音保持不变,而探测音在某个点会改变一次(例如,从123X的重复变为123Y的重复)。因此,探测音的重复可以揭示在低精度和高精度情境中感知推理的发展,这取决于它们在循环中的位置。我们发现,这两种情况在N1m调制方面相似(因为两者都与N1m抑制相关),但在N2m调制方面不同。虽然在低精度情境中重复的探测音没有表现出任何调制效应,但在高精度情境中重复的探测音引发了N2m源功率的抑制和反弹。这种差异表明,在低精度和高精度情境中最小化预测误差可能涉及不同的机制。