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A Neural Network Model of Retrieval-Induced Forgetting

机译:检索式遗忘的神经网络模型

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Retrieval-induced forgetting (RIF) refers to the finding that retrieving a memory can impair subsequent recall of related memories. Here, the authors present a new model of how the brain gives rise to RIF in both semantic and episodic memory. The core of the model is a recently developed neural network learning algorithm that leverages regular oscillations in feedback inhibition to strengthen weak parts of target memories and to weaken competing memories. The authors use the model to address several puzzling findings relating to RIF, including why retrieval practice leads to more forgetting than simply presenting the target item, how RIF is affected by the strength of competing memories and the strength of the target (to-be-retrieved) memory, and why RIF sometimes generalizes to independent cues and sometimes does not. For all of these questions, the authors show that the model can account for existing results, and they generate novel predictions regarding boundary conditions on these results.
机译:检索引起的遗忘(RIF)指的是检索记忆会损害后续相关记忆的回忆的发现。在这里,作者提出了一个新的模型,说明大脑如何在语义和情节记忆中产生RIF。该模型的核心是最近开发的神经网络学习算法,该算法利用反馈抑制中的规则振荡来增强目标记忆的薄弱部分并削弱竞争性记忆。作者使用该模型解决了一些与RIF有关的令人困惑的发现,包括为何检索实践会导致比单纯呈现目标项目更容易忘记的事情,RIF如何受到竞争记忆力和目标强度的影响(将成为目标)。记忆),以及为什么RIF有时会泛化成独立的线索,而有时却不会。对于所有这些问题,作者表明,该模型可以说明现有结果,并且可以针对这些结果的边界条件生成新颖的预测。

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