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What controls gain in gain control? Mismatch negativity (MMN), priors and system biases

机译:什么控制增益控制中的增益?失配负值(MMN),先验和系统偏差

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摘要

Repetitious patterns enable the auditory system to form prediction models specifying the most likely characteristics of subsequent sounds. Pattern deviations elicit mismatch negativity (MMN), the amplitude of which is modulated by the size of the deviation and confidence in the model. Todd et al. (Neuropsychologia 49:3399-3405, 2011; J Neurophysiol 109:99-105, 2013) demonstrated that a multi-timescale sequence reveals a bias that profoundly distorts the impact of local sound statistics on the MMN amplitude. Two sounds alternate roles as repetitious "standard" and rare "deviant" rapidly (every 0.8 min) or slowly (every 2.4 min). The bias manifests as larger MMN to the sound first encountered as deviant in slow compared to fast changing sequences, but no difference for the sound first encountered as a standard. We propose that the bias is due to how Bayesian priors shape filters of sound relevance. By examining the time-course of change in MMN amplitude we show that the bias manifests immediately after roles change but rapidly disappears thereafter. The bias was reflected in the response to deviant sounds only (not in response to standards), consistent with precision estimates extracted from second order patterns modulating gain differentially for the two sounds. Evoked responses to deviants suggest that pattern extraction and reactivation of priors can operate over tens of minutes or longer. Both MMN and deviant responses establish that: (1) priors are defined by the most proximally encountered probability distribution when one exists but; (2) when no prior exists, one is instantiated by sequence onset characteristics; and (3) priors require context interruption to be updated.
机译:重复的模式使听觉系统能够形成指定后续声音最可能特征的预测模型。模式偏差会引起失配负值(MMN),其幅度由偏差的大小和模型的置信度来调节。托德等。 (Neuropsychologia 49:3399-3405,2011; J Neurophysiol 109:99-105,2013)证明,多时标序列揭示了一种偏向,该偏向极大地扭曲了本地声音统计数据对MMN振幅的影响。两种声音交替出现,分别是重复的“标准”和罕见的“异常”(每0.8分钟)或缓慢(每2.4分钟)。与快速变化的序列相比,偏向表现为与缓慢变化的声音相比,首先遇到缓慢变慢的声音的MMN较大,但是对于作为标准的第一次遇到的声音,则没有差异。我们认为偏差是由于贝叶斯先验如何塑造声音相关性的滤波器。通过检查MMN振幅变化的时间过程,我们发现偏差在角色变化后立即显现,但此后迅速消失。偏差仅反映在对异常声音的响应中(而不是对标准的响应),这与从对两种声音进行差分增益调制的二阶模式提取的精度估计值一致。引发的对偏差的反应表明,模式提取和先验激活可以在数十分钟或更长时间内进行。 MMN和偏差响应都建立:(1)先验是由存在时最接近的概率分布定义的,但是; (2)当不存在先验时,通过序列起始特征实例化; (3)先验要求更新上下文中断。

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