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Optimal Prediction of Moving Sound Source Direction in the Owl

机译:猫头鹰中移动声源方向的最佳预测

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摘要

Capturing nature’s statistical structure in behavioral responses is at the core of the ability to function adaptively in the environment. Bayesian statistical inference describes how sensory and prior information can be combined optimally to guide behavior. An outstanding open question of how neural coding supports Bayesian inference includes how sensory cues are optimally integrated over time. Here we address what neural response properties allow a neural system to perform Bayesian prediction, i.e., predicting where a source will be in the near future given sensory information and prior assumptions. The work here shows that the population vector decoder will perform Bayesian prediction when the receptive fields of the neurons encode the target dynamics with shifting receptive fields. We test the model using the system that underlies sound localization in barn owls. Neurons in the owl’s midbrain show shifting receptive fields for moving sources that are consistent with the predictions of the model. We predict that neural populations can be specialized to represent the statistics of dynamic stimuli to allow for a vector read-out of Bayes-optimal predictions.
机译:捕获行为反应中自然的统计结构是在环境中自适应运行的能力的核心。贝叶斯统计推断描述了如何将感官信息和先验信息进行最佳组合以指导行为。关于神经编码如何支持贝叶斯推理的一个悬而未决的悬而未决的问题包括,如​​何随着时间的流逝最佳地整合感官线索。在这里,我们讨论了哪些神经反应特性允许神经系统执行贝叶斯预测,即在给定感官信息和先前假设的情况下预测源在不久的将来会在哪里。此处的工作表明,当神经元的感受野用转移的感受野对目标动力学进行编码时,种群矢量解码器将执行贝叶斯预测。我们使用在谷仓猫头鹰中进行声音定位的系统来测试模型。猫头鹰中脑中的神经元显示出移动源的转移感受野与模型的预测相一致。我们预测神经种群可以专门代表动态刺激的统计数据,以允许贝叶斯最优预测的矢量读出。

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