cs.AI updates on arXiv.org 07月30日 12:11
Hebbian Memory-Augmented Recurrent Networks: Engram Neurons in Deep Learning
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本文介绍了一种名为Engram神经网络(ENN)的新型循环神经网络架构,通过引入可微分的记忆矩阵和Hebbian可塑性,增强了对记忆形成和回忆过程的建模,提高了模型的可解释性和鲁棒性。

arXiv:2507.21474v1 Announce Type: cross Abstract: Despite success across diverse tasks, current artificial recurrent network architectures rely primarily on implicit hidden-state memories, limiting their interpretability and ability to model long-range dependencies. In contrast, biological neural systems employ explicit, associative memory traces (i.e., engrams) strengthened through Hebbian synaptic plasticity and activated sparsely during recall. Motivated by these neurobiological insights, we introduce the Engram Neural Network (ENN), a novel recurrent architecture incorporating an explicit, differentiable memory matrix with Hebbian plasticity and sparse, attention-driven retrieval mechanisms. The ENN explicitly models memory formation and recall through dynamic Hebbian traces, improving transparency and interpretability compared to conventional RNN variants. We evaluate the ENN architecture on three canonical benchmarks: MNIST digit classification, CIFAR-10 image sequence modeling, and WikiText-103 language modeling. Our empirical results demonstrate that the ENN achieves accuracy and generalization performance broadly comparable to classical RNN, GRU, and LSTM architectures, with all models converging to similar accuracy and perplexity on the large-scale WikiText-103 task. At the same time, the ENN offers significant enhancements in interpretability through observable memory dynamics. Hebbian trace visualizations further reveal biologically plausible, structured memory formation processes, validating the potential of neuroscience-inspired mechanisms to inform the development of more interpretable and robust deep learning models.

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Engram神经网络 RNN架构 Hebbian可塑性 可解释性 记忆建模
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