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Novelty estimation in developmental networks: Acetylcholine and norepinephrine

机译:发育网络中的新颖性评估:乙酰胆碱和去甲肾上腺素

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The receiver operating characteristic (ROC) curve has been widely applied to classifiers to show how the threshold value for acceptance changes the true positive rate and the false positive rate of the detection jointly. However, it is largely unknown how a biological brain autonomously selects a confidence value for each detection case. In the reported work, we investigated this issue based on the class of Developmental Networks (DNs) which have a power of abstraction similar to symbolic finite automata (FA) but all the DN's representations are emergent (i.e., numeric from the physical world and non-symbolic). Our theory is based on two types of neurotransmitters: Acetylcholine (Ach) and Norepinephrine (NE). Inspired by studies that proposed Ach and NE represent uncertainty and unpredicted uncertainty, respectively, we model how a DN uses Ach and NE to allow neurons to collectively decide acceptance or rejection by estimated novelty based on past experience, instead of using a single threshold value. This is a neural network, distributed, incremental, automatic version of ROC.
机译:接收器工作特性(ROC)曲线已广泛应用于分类器,以显示接受阈值如何共同改变检测的真阳性率和假阳性率。但是,很大程度上未知的是生物大脑如何自动为每个检测案例选择置信度值。在报告的工作中,我们基于具有类似符号有限自动机(FA)的抽象能力的发展网络(DN)类研究了此问题,但所有DN的表示形式都是新兴的(即,来自物理世界的数字表示形式和非-符号)。我们的理论基于两种神经递质:乙酰胆碱(Ach)和去甲肾上腺素(NE)。受提议Ach和NE分别代表不确定性和不可预测不确定性的研究的启发,我们对DN如何使用Ach和NE进行建模,以使神经元能够根据过去的经验通过估计的新颖性来集体决定接受或拒绝,而不是使用单个阈值。这是ROC的神经网络,分布式,增量,自动版本。

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