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A Deep Learning Neural Network for Number Cognition: A bi-cultural study with the iCub

机译:用于数字认知的深度学习神经网络:与iCub进行的双文化研究

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The novel deep learning paradigm offers a highly biologically plausible way to train neural network architectures with many layers, inspired by the hierarchical organization of the human brain. Indeed, deep learning gives a new dimension to research modeling human cognitive behaviors, and provides new opportunities for applications in cognitive robotics. In this paper, we present a novel deep neural network architecture for number cognition by means of finger counting and number words. The architecture is composed of 5 layers and is designed in a way that allows it to learn numbers from one to ten by associating the sensory inputs (motor and auditory) coming from the iCub humanoid robotic platform. The architecture performance is validated and tested in two developmental experiments. In the first experiment, standard backpropagation is compared with a deep learning approach, in which weights and biases are pre-trained by means of a greedy algorithm and then refined with backpropagation. In the second experiment, six bi-cultural number learning conditions are compared to explore the impact of different languages (for number words) and finger counting strategies. The developmental experiments confirm the validity of the model and the increase in efficiency given by the deep learning approach. Results of the bi-cultural study are presented and discussed with respect to the neuro-psychological literature and implications of the results for learning situations are briefly outlined.
机译:新颖的深度学习范式提供了一种高度生物学上可行的方式来训练受人脑分层组织启发的多层结构的神经网络体系结构。确实,深度学习为研究人类认知行为建模提供了新的维度,并为认知机器人技术中的应用提供了新的机会。在本文中,我们提出了一种通过手指计数和数字单词进行数字认知的新型深度神经网络体系结构。该架构由5层组成,其设计方式允许它通过关联来自iCub人形机器人平台的感觉输入(运动和听觉)来从1到10学习数字。在两个开发实验中对架构性能进行了验证和测试。在第一个实验中,将标准反向传播与深度学习方法进行比较,在深度学习方法中,权重和偏差通过贪婪算法进行预训练,然后通过反向传播进行精炼。在第二个实验中,比较了六个双文化数字学习条件,以探索不同语言(对于数字单词)和手指计数策略的影响。开发实验证实了该模型的有效性以及深度学习方法所带来的效率提高。提出和讨论了关于神经心理学文献的双文化研究的结果,并简要概述了该结果对学习情况的影响。

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