IEEE Trans Neural Netw Learn Syst. 2020 Jan;31(1):331-344. doi: 10.1109/TNNLS.2019.2921143. Epub 2019 Jul 11.
In this paper, we introduce a new concept of associative memories in which synaptic connections of the self-organizing neural network learn time delays between input sequence elements. Synaptic connections represent both the synaptic weights and expected delays between the network inputs. This property of synaptic connections facilitates recognition of time sequences and provides context-based associations between sequence elements. Characteristics of time delays are learned and are updated each time an input sequence is presented. There are no separate learning and testing modes typically used in other neural networks, as the network starts to predict the next input element as soon as there is no expected input signal. The network generates output signals useful for associative recall and prediction. These output signals depend on the presented input context and the knowledge stored in the graph. Such a mode of operation is preferred for the organization of episodic memories used to store the observed episodes and to recall them if a sufficient context is provided. The associative sequential recall is useful for the operation of working memory in a cognitive agent. Test results demonstrate that the network correctly recognizes the input sequences with variable delays and that it is more efficient than other recently developed sequential memory networks based on associative neurons.
在本文中,我们引入了一种新的联想记忆概念,其中自组织神经网络的突触连接学习输入序列元素之间的时间延迟。突触连接既表示突触权重,也表示网络输入之间的预期延迟。突触连接的这种特性促进了时间序列的识别,并提供了序列元素之间基于上下文的关联。时间延迟的特征被学习并在每次呈现输入序列时更新。与其他神经网络中通常使用的单独的学习和测试模式不同,由于网络一旦没有预期的输入信号就开始预测下一个输入元素,因此不存在这种模式。网络生成用于联想回忆和预测的有用输出信号。这些输出信号取决于呈现的输入上下文和图中存储的知识。对于用于存储观察到的事件的情节记忆的组织,以及在提供足够的上下文时对其进行回忆,这种操作模式是首选。联想顺序回忆对于认知代理中工作记忆的操作很有用。测试结果表明,网络可以正确识别具有可变延迟的输入序列,并且比其他基于联想神经元的最近开发的顺序记忆网络更有效。