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Efficient coding provides a direct link between prior and likelihood in perceptual Bayesian inference

机译:有效的编码在感知贝叶斯推理中提供了先验和似然之间的直接联系

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A common challenge for Bayesian models of perception is the fact that the two fundamental Bayesian components, the prior distribution and the likelihood function, are formally unconstrained. Here we argue that a neural system that emulates Bayesian inference is naturally constrained by the way it represents sensory information in populations of neurons. More specifically, we show that an efficient coding principle creates a direct link between prior and likelihood based on the underlying stimulus distribution. The resulting Bayesian estimates can show biases away from the peaks of the prior distribution, a behavior seemingly at odds with the traditional view of Bayesian estimation, yet one that has been reported in human perception. We demonstrate that our framework correctly accounts for the repulsive biases previously reported for the perception of visual orientation, and show that the predicted tuning characteristics of the model neurons match the reported orientation tuning properties of neurons in primary visual cortex. Our results suggest that efficient coding is a promising hypothesis in constraining Bayesian models of perceptual inference.
机译:贝叶斯感知模型的一个共同挑战是以下事实:形式上不受约束的是两个基本贝叶斯分量,即先验分布和似然函数。在这里,我们认为,模拟贝叶斯推理的神经系统自然受到其在神经元群体中代表感觉信息的方式的约束。更具体地说,我们表明,有效的编码原理会根据潜在的刺激分布在先验和可能性之间建立直接联系。所得的贝叶斯估计值可能显示偏离先验分布的峰值,这一行为似乎与贝叶斯估计值的传统观点不一致,但人类感知中已有报道。我们证明了我们的框架正确地解释了先前报道的视觉取向感知排斥力,并表明模型神经元的预测调节特性与初级视觉皮层中神经元的取向调节特性相匹配。我们的结果表明,有效的编码是约束感知推理的贝叶斯模型的有前途的假设。

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