Botvinick Matthew M, Plaut David C
Department of Psychiatry, University of Pennsylvania, 3720 Walnut Street, Philadelphia, PA 19104, USA.
Psychol Rev. 2006 Apr;113(2):201-33. doi: 10.1037/0033-295X.113.2.201.
Despite a century of research, the mechanisms underlying short-term or working memory for serial order remain uncertain. Recent theoretical models have converged on a particular account, based on transient associations between independent item and context representations. In the present article, the authors present an alternative model, according to which sequence information is encoded through sustained patterns of activation within a recurrent neural network architecture. As demonstrated through a series of computer simulations, the model provides a parsimonious account for numerous benchmark characteristics of immediate serial recall, including data that have been considered to preclude the application of recurrent neural networks in this domain. Unlike most competing accounts, the model deals naturally with findings concerning the role of background knowledge in serial recall and makes contact with relevant neuroscientific data. Furthermore, the model gives rise to numerous testable predictions that differentiate it from competing theories. Taken together, the results presented indicate that recurrent neural networks may offer a useful framework for understanding short-term memory for serial order.
尽管经过了一个世纪的研究,但有关序列顺序的短期或工作记忆的潜在机制仍不明确。最近的理论模型基于独立项目与情境表征之间的瞬时关联,趋向于一种特定的解释。在本文中,作者提出了另一种模型,根据该模型,序列信息是通过循环神经网络架构内持续的激活模式进行编码的。通过一系列计算机模拟表明,该模型为即时序列回忆的众多基准特征提供了一种简洁的解释,包括那些被认为排除了循环神经网络在此领域应用的数据。与大多数竞争理论不同,该模型自然地处理了有关背景知识在序列回忆中的作用的研究结果,并与相关神经科学数据相关联。此外,该模型还产生了许多可测试的预测,使其与竞争理论区分开来。综上所述,所呈现的结果表明,循环神经网络可能为理解序列顺序的短期记忆提供一个有用的框架。