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首页> 外文期刊>Frontiers in Computational Neuroscience >Measuring the Performance of Neural Models
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Measuring the Performance of Neural Models

机译:测量神经模型的性能

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摘要

Good metrics of the performance of a statistical or computational model are essential for model comparison and selection. Here, we address the design of performance metrics for models that aim to predict neural responses to sensory inputs. This is particularly difficult because the responses of sensory neurons are inherently variable, even in response to repeated presentations of identical stimuli. In this situation, standard metrics (such as the correlation coefficient) fail because they do not distinguish between explainable variance (the part of the neural response that is systematically dependent on the stimulus) and response variability (the part of the neural response that is not systematically dependent on the stimulus, and cannot be explained by modeling the stimulus-response relationship). As a result, models which perfectly describe the systematic stimulus-response relationship may appear to perform poorly. Two metrics have previously been proposed which account for this inherent variability: Signal Power Explained ( SPE , Sahani and Linden, 2003 ), and the normalized correlation coefficient ( CC _( norm ), Hsu et al., 2004 ). Here, we analyze these metrics, and show that they are intimately related. However, SPE has no lower bound, and we show that, even for good models, SPE can yield negative values that are difficult to interpret. CC _( norm )is better behaved in that it is effectively bounded between ?1 and 1, and values below zero are very rare in practice and easy to interpret. However, it was hitherto not possible to calculate CC _( norm )directly; instead, it was estimated using imprecise and laborious resampling techniques. Here, we identify a new approach that can calculate CC _( norm )quickly and accurately. As a result, we argue that it is now a better choice of metric than SPE to accurately evaluate the performance of neural models.
机译:统计或计算模型的性能的良好度量对于模型比较和选择至关重要。在这里,我们针对旨在预测对感觉输入的神经反应的模型的性能指标进行设计。由于感觉神经元的反应固有地是可变的,所以这是特别困难的,即使是对相同刺激的重复呈现也是如此。在这种情况下,标准度量标准(例如相关系数)会失败,因为它们无法区分可解释的方差(系统性地依赖于刺激的神经反应部分)和响应性变异性(非响应性的神经反应部分)之间系统地依赖于刺激,因此无法通过对刺激-响应关系进行建模来解释)。结果,完美描述系统性刺激-反应关系的模型可能表现不佳。先前已经提出了两个度量标准来解释这种固有的可变性:信号功率解释(SPE,Sahani和Linden,2003年)和归一化的相关系数(CC _(norm),Hsu等人,2004年)。在这里,我们分析这些指标,并表明它们之间密切相关。但是,SPE没有下界,并且我们证明,即使对于好的模型,SPE也会产生难以解释的负值。 CC _(norm)的行为更好,因为它有效地限制在?1和1之间,并且小于零的值在实践中非常罕见并且易于解释。但是,迄今为止不可能直接计算CC _(norm);而是使用不精确且费力的重采样技术进行估算。在这里,我们确定了一种可以快速,准确地计算CC _(norm)的新方法。结果,我们认为准确评估神经模型的性能比使用SPE更好。

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