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

  • Authors:
  • Nicola Pio Belfiore;Imre J. Rudas;Apollonia Matrisciano

  • Affiliations:
  • Sapienza University of Rome, Department of Mechanics and Aeronautics, Rome, Italy;Óbuda University, Budapest, Hungary;Sapienza University of Rome, Engineering Faculty Didactic Management, Rome, Italy

  • Venue:
  • ITHET'10 Proceedings of the 9th international conference on Information technology based higher education and training
  • Year:
  • 2010

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Abstract

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.