cs.AI updates on arXiv.org 10月10日 12:11
液态神经网络与RNN对比分析
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本文对比分析了液态神经网络(LNNs)和传统循环神经网络(RNNs)及其变体(如LSTMs和GRUs)在模型精度、内存效率和泛化能力方面的表现,探讨了这些网络在处理序列数据时的基本原理、数学模型、关键特征和内在挑战。

arXiv:2510.07578v1 Announce Type: cross Abstract: This review aims to conduct a comparative analysis of liquid neural networks (LNNs) and traditional recurrent neural networks (RNNs) and their variants, such as long short-term memory networks (LSTMs) and gated recurrent units (GRUs). The core dimensions of the analysis include model accuracy, memory efficiency, and generalization ability. By systematically reviewing existing research, this paper explores the basic principles, mathematical models, key characteristics, and inherent challenges of these neural network architectures in processing sequential data. Research findings reveal that LNN, as an emerging, biologically inspired, continuous-time dynamic neural network, demonstrates significant potential in handling noisy, non-stationary data, and achieving out-of-distribution (OOD) generalization. Additionally, some LNN variants outperform traditional RNN in terms of parameter efficiency and computational speed. However, RNN remains a cornerstone in sequence modeling due to its mature ecosystem and successful applications across various tasks. This review identifies the commonalities and differences between LNNs and RNNs, summarizes their respective shortcomings and challenges, and points out valuable directions for future research, particularly emphasizing the importance of improving the scalability of LNNs to promote their application in broader and more complex scenarios.

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液态神经网络 循环神经网络 LNN RNN 序列数据
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