Neural Comput. 2010 Feb;22(2):539-80. doi: 10.1162/neco.2009.01-09-938.
We consider the effects of signal sharpness or acuity on the performance of neural models of decision making. In these models, a vector of signals is presented, and the subject must decide which of the elements of the vector is the largest. McMillen and Holmes ( 2006 ) derived asymptotically optimal tests under the assumption that the elements of the signal vector were all equal except one. In this letter, we consider the case of signals spread around a peak. The acuity is a measure of how strongly peaked the signal is. We find that the optimal test is one in which the detectors are passed through an output layer that encodes knowledge of the possible shapes of the incoming signals. The incorporation of such an output layer can lead to significant improvements in decision-making tasks.
我们研究了信号锐度或敏锐度对决策神经模型性能的影响。在这些模型中,呈现了一个信号向量,而主体必须决定向量中的哪个元素最大。McMillen 和 Holmes(2006 年)在假设信号向量的元素除了一个之外都相等的情况下,推导出了渐近最优的检验。在这封信中,我们考虑了信号分布在峰值周围的情况。敏锐度是衡量信号有多陡峭的一个指标。我们发现,最优的检验是通过一个输出层传递探测器,该输出层编码了关于输入信号可能形状的知识。这样的输出层的引入可以显著提高决策任务的性能。