Department of Psychology, Princeton University, Princeton, United States.
Princeton Neuroscience Institute, Princeton University, Princeton, United States.
Elife. 2022 Feb 10;11:e74445. doi: 10.7554/eLife.74445.
Recent human behavioral and neuroimaging results suggest that people are selective in when they encode and retrieve episodic memories. To explain these findings, we trained a memory-augmented neural network to use its episodic memory to support prediction of upcoming states in an environment where past situations sometimes reoccur. We found that the network learned to retrieve selectively as a function of several factors, including its uncertainty about the upcoming state. Additionally, we found that selectively encoding episodic memories at the end of an event (but not mid-event) led to better subsequent prediction performance. In all of these cases, the benefits of selective retrieval and encoding can be explained in terms of reducing the risk of retrieving irrelevant memories. Overall, these modeling results provide a resource-rational account of why episodic retrieval and encoding should be selective and lead to several testable predictions.
最近的人类行为和神经影像学研究结果表明,人们在编码和提取情景记忆时具有选择性。为了解释这些发现,我们训练了一个记忆增强型神经网络,让它利用情景记忆来支持在过去情况有时会重现的环境中对未来状态的预测。我们发现,该网络学会了根据几个因素进行有选择地检索,包括其对未来状态的不确定性。此外,我们发现,在事件结束时(而不是事件中途)选择性地编码情景记忆会导致后续的预测表现更好。在所有这些情况下,选择性检索和编码的好处可以用减少检索不相关记忆的风险来解释。总的来说,这些建模结果为情景记忆提取和编码应该具有选择性提供了一种资源理性的解释,并提出了一些可测试的预测。