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Simulation of verbal and mathematical learning by means of simple neural networks

机译:通过简单的神经网络模拟语言和数学学习

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In this paper a new tool is proposed as a possible aid to study differences and similarities between the human and the artificial neural network (NN) learning of some verbal and mathematical elementary abilities. For this purpose, simple NNs of the multi layer kind (MLNN) have been build. These MLNNs are able to recognize some graphemes and/or to make additions of integers up to 1000. An algorithm based on dynamic character recognition has allowed to limit significantly the data size, making easier the NN optimization phase of training. The adopted method of grapheme encoding has allowed to generate automatically large training sets upon which the MLNNs have been trained. Then, a test set has been generated to evaluate the MLNN prediction capacity. The analysis of results has shown some interesting characteristics of the trained nets, such as, for example, the possible appearance of very rudimentary symptoms analogous to dyslexia. The specialization of the function of some groups of neurons in the neural system has been also investigated by procuring an artificial damage to the MLNN (in one or more neurons) and by evaluating the MLNN response.
机译:在本文中,提出了一种新的工具,作为研究某些语言和数学基本能力的人与人工神经网络(NN)学习之间差异和相似性的一种可能工具。为此,已经构建了多层类型(MLNN)的简单NN。这些MLNN能够识别某些字素和/或最多添加1000个整数。基于动态字符识别的算法已允许显着限制数据大小,从而使训练的NN优化阶段更加容易。所采用的字素编码方法已允许自动生成大型训练集,在该训练集上训练了MLNN。然后,已生成测试集以评估MLNN预测能力。对结果的分析表明受过训练的蚊帐具有一些有趣的特征,例如,可能出现类似于诵读困难的基本症状。还通过对MLNN(在一个或多个神经元中)进行人为破坏并评估MLNN响应,研究了神经系统中某些神经元组的功能的特殊性。

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