ARTIFICIAL NEURAL NETWORKS WITH DYNAMIC SYNAPSES: A REVIEW

Martynas Dumpis
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Abstract

Artificial neural networks (ANNs) are widely applied to solve real-world problems. Most of the actions we take and the processes around us are time-varying. ANNs with dynamic properties allow processing time-dependent data and solving tasks such as speech and text processing, prediction models, face and emotion recognition, game strategy development. Dynamics in neural networks can appear in the input data, the architecture of the neural network, and the individual elements of the neural network – synapses and neurons. Unlike static synapses, dynamic synapses can change their connection strength based on incoming information. This is a fundamental principle allows neural networks to perform complex tasks like word processing or face recognition more efficiently. Dynamic synapses play a key role in the ability of artificial neural networks to learn from experience and change over time, which is one of the key aspects of artificial intelligence. The scientific works examined in this article show that there are no literature sources that review and compare dynamic DNTs according to their synapses. To fill this gap, the article reviews and groups DNTs with dynamic synapses. Dynamic neural networks are defined by providing a general mathematical expression. A dynamic synapse is described by specifying its main properties and presenting a general mathematical expression. Also an explanation, how these synapses can be modelled and integrated into 11 different dynamic ANNs is shown. Moreover, structures of dynamic ANNs are compared according to the properties of dynamic synapses.
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动态突触人工神经网络综述
人工神经网络(ann)被广泛应用于解决现实问题。我们采取的大多数行动和我们周围的过程都是时变的。具有动态属性的人工神经网络允许处理与时间相关的数据,并解决语音和文本处理、预测模型、面部和情感识别、游戏策略开发等任务。神经网络中的动态可以出现在输入数据、神经网络的结构以及神经网络的单个元素——突触和神经元中。与静态突触不同,动态突触可以根据传入的信息改变它们的连接强度。这是一个基本原理,允许神经网络更有效地执行复杂的任务,如文字处理或人脸识别。动态突触在人工神经网络从经验中学习和随时间变化的能力中起着关键作用,这是人工智能的关键方面之一。本文的科学研究表明,目前尚无文献来源对动态神经元突触进行综述和比较。为了填补这一空白,本文回顾并将dnt与动态突触分组。动态神经网络是通过提供一般的数学表达式来定义的。动态突触是通过指定其主要属性并呈现一般数学表达式来描述的。此外,还解释了如何将这些突触建模并集成到11种不同的动态人工神经网络中。此外,根据动态突触的特性对动态人工神经网络的结构进行了比较。
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