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首页> 外文期刊>Neuron >Probabilistic population codes for Bayesian decision making.
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Probabilistic population codes for Bayesian decision making.

机译:贝叶斯决策的概率人口代码。

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摘要

When making a decision, one must first accumulate evidence, often over time, and then select the appropriate action. Here, we present a neural model of decision making that can perform both evidence accumulation and action selection optimally. More specifically, we show that, given a Poisson-like distribution of spike counts, biological neural networks can accumulate evidence without loss of information through linear integration of neural activity and can select the most likely action through attractor dynamics. This holds for arbitrary correlations, any tuning curves, continuous and discrete variables, and sensory evidence whose reliability varies over time. Our model predicts that the neurons in the lateral intraparietal cortex involved in evidence accumulation encode, on every trial, a probability distribution which predicts the animal's performance. We present experimental evidence consistent with this prediction and discuss other predictions applicable to more general settings.
机译:做出决定时,通常必须随着时间的流逝而积累证据,然后选择适当的行动。在这里,我们提出了一个决策的神经模型,该模型可以最佳地执行证据积累和行动选择。更具体地说,我们表明,给定类似峰值的Poisson分布,生物神经网络可以通过线性整合神经活动来积累证据而不会丢失信息,并且可以通过吸引子动力学选择最可能的行为。这适用于任意相关性,任何调整曲线,连续和离散变量以及其可靠性随时间变化的感官证据。我们的模型预测,在每次试验中,参与证据积累的外侧顶内皮层神经元都会编码预测动物行为的概率分布。我们提供与该预测一致的实验证据,并讨论适用于更一般设置的其他预测。

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