Ratcliff R
Psychology Department, Northwestern University, Evanston, Illinois 60208.
Psychol Rev. 1990 Apr;97(2):285-308. doi: 10.1037/0033-295x.97.2.285.
Multilayer connectionist models of memory based on the encoder model using the backpropagation learning rule are evaluated. The models are applied to standard recognition memory procedures in which items are studied sequentially and then tested for retention. Sequential learning in these models leads to 2 major problems. First, well-learned information is forgotten rapidly as new information is learned. Second, discrimination between studied items and new items either decreases or is nonmonotonic as a function of learning. To address these problems, manipulations of the network within the multilayer model and several variants of the multilayer model were examined, including a model with prelearned memory and a context model, but none solved the problems. The problems discussed provide limitations on connectionist models applied to human memory and in tasks where information to be learned is not all available during learning.
基于使用反向传播学习规则的编码器模型的多层记忆联结主义模型得到了评估。这些模型被应用于标准的识别记忆程序,其中项目被依次学习,然后测试其保持情况。这些模型中的顺序学习会导致两个主要问题。首先,随着新信息的学习,学得好的信息会迅速被遗忘。其次,已学习项目和新项目之间的辨别能力要么下降,要么作为学习的函数呈非单调变化。为了解决这些问题,研究了多层模型内网络的操作以及多层模型的几种变体,包括具有预学习记忆的模型和情境模型,但没有一个能解决这些问题。所讨论的问题为应用于人类记忆的联结主义模型以及在学习过程中并非所有待学习信息都可用的任务中设置了限制。