Max Planck Institute for Biological Cybernetics, Tübingen, Germany.
Nat Neurosci. 2013 Feb;16(2):235-42. doi: 10.1038/nn.3309. Epub 2013 Jan 13.
The activity of cortical neurons in sensory areas covaries with perceptual decisions, a relationship that is often quantified by choice probabilities. Although choice probabilities have been measured extensively, their interpretation has remained fraught with difficulty. We derive the mathematical relationship between choice probabilities, read-out weights and correlated variability in the standard neural decision-making model. Our solution allowed us to prove and generalize earlier observations on the basis of numerical simulations and to derive new predictions. Notably, our results indicate how the read-out weight profile, or decoding strategy, can be inferred from experimentally measurable quantities. Furthermore, we developed a test to decide whether the decoding weights of individual neurons are optimal for the task, even without knowing the underlying correlations. We confirmed the practicality of our approach using simulated data from a realistic population model. Thus, our findings provide a theoretical foundation for a growing body of experimental results on choice probabilities and correlations.
感觉区域皮质神经元的活动与知觉决策相关,这种关系通常通过选择概率来量化。尽管选择概率已经被广泛测量,但它们的解释仍然充满困难。我们从标准神经决策模型中推导出选择概率、读出权重和相关变异性之间的数学关系。我们的解决方案允许我们在数值模拟的基础上证明和推广早期的观察结果,并推导出新的预测。值得注意的是,我们的结果表明,如何从实验可测量的量中推断出读出权重分布或解码策略。此外,我们开发了一种测试来决定单个神经元的解码权重是否对任务是最优的,即使不知道潜在的相关性。我们使用来自现实群体模型的模拟数据证实了我们方法的实用性。因此,我们的发现为大量关于选择概率和相关性的实验结果提供了理论基础。