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A random-matrix theory of the number sense

机译:数量意义的随机矩阵理论

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Number sense, a spontaneous ability to process approximate numbers, has been documented in human adults, infants and newborns, and many other animals. Species as distant as monkeys and crows exhibit very similar neurons tuned to specific numerosities. How number sense can emerge in the absence of learning or fine tuning is currently unknown. We introduce a random-matrix theory of self-organized neural states where numbers are coded by vectors of activation across multiple units, and where the vector codes for successive integers are obtained through multiplication by a fixed but random matrix. This cortical implementation of the 'von Mises' algorithm explains many otherwise disconnected observations ranging from neural tuning curves in monkeys to looking times in neonates and cortical numerotopy in adults. The theory clarifies the origin of Weber-Fechner's Law and yields a novel and empirically validated prediction of multi-peak number neurons. Random matrices constitute a novel mechanism for the emergence of brain states coding for quantity.
机译:数量义,在人类成年人,婴儿和新生儿和许多其他动物中记录了自发处理近似数量的能力。距离猴子和乌鸦的物种表现出非常相似的神经元调整到特定的象征。在没有学习的情况下,可以出现编号感或微调当前未知。我们介绍了一种自组织神经状态的随机矩阵理论,其中数字由多个单元的激活载体编码,并且通过通过固定但随机矩阵乘法获得连续整数的矢量代码。这种“vonmes”算法的皮质实现解释了许多其他不同的断开的观察,从猴子中的神经调整曲线范围范围内,以在成年人中寻找新生儿和皮质Numerotopy的时间。该理论阐明了Weber-Fechner的法律的起源,并产生了一种新颖的和经验验证的多峰数神经元预测。随机矩阵构成了编码数量脑状态的新机制。

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