人工神经网络生物合理性标准的研究进展:以学习过程为例

Alberione Braz da Silva, J. Rosa
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引用次数: 3

摘要

近年来,人工神经网络(ANN)学界一直致力于研究生物的合理性问题。对这一主题的不同看法会导致人工神经网络研究者对分类标准的分歧。为了促成这场争论,这里强调了两种观点:一种直接与大脑皮层生物结构有关,另一种关注神经特征和神经元之间的信号传导。本文提出的模型认为,一个生物学上更合理的人工神经网络的目的是创建一个关于大脑皮层的生物结构、特性和功能(包括学习过程)的更忠实的模型,而不是忽视其计算效率。所提出的描述所基于的模型的选择考虑了两个主要标准:它们被认为在生物学上更现实,并且它们处理电信号和化学突触中的神经元内和神经元间信号。同时,动作电位的持续时间也被考虑在内。除了当前尖峰神经元模型中存在的关于生物合理性的编码信息的特征外,这里还强调了一个可区分的特征:Hebbian学习和错误驱动学习的结合。
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Advances on criteria for biological plausibility in artificial neural networks: Think of learning processes
Artificial neural network (ANN) community is engaged in biological plausibility issues these days. Different views about this subject can lead to disagreements of classification criteria among ANN researchers. In order to contribute to this debate, two of these views are highlighted here: one is related directly to the cerebral cortex biological structure, and the other focuses the neural features and the signaling between neurons. The model proposed in this paper considers that a biologically more plausible ANN has the purpose to create a more faithful model concerning the biological structure, properties, and functionalities, including learning processes, of the cerebral cortex, not disregarding its computational efficiency. The choice of the models upon which the proposed description is based takes into account two main criteria: the fact they are considered biologically more realistic and the fact they deal with intra and inter-neuron signaling in electrical and chemical synapses. Also, the duration of action potentials is taken into account. In addition to the characteristics for encoding information regarding biological plausibility present in current spiking neuron models, a distinguishable feature is emphasized here: a combination of Hebbian learning and error-driven learning.
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