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Neural network for censored expectile regression based on data augmentation 基于数据增广的删检期望回归神经网络
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-14 DOI: 10.1016/j.neucom.2026.133086
Wei Cao , Shanshan Wang
Expectile regression neural network (ERNN) is powerful tool for capturing heterogeneity and complex nonlinear structures in data. However, most existing research has primarily focused on fully observed data, with reletive limited attention given to scenarios involving censored observations. In this paper, we propose a data-augmentation–based ERNN algorithm, termed DAERNN, for modeling heterogeneous censored data with complex relationships among variables. The proposed DAERNN is flexible and capable of exploring potential nonlinear effects of covariates on the conditional expectiles of the response under various types of censoring, thereby enhancing its applicability to practical censored data analysis. Moreover, DAERNN can be readily implemented via a data augmentation strategy combined with a standard gradient-based optimization algorithm, which directly yields estimates of the conditional expectile functions. The advantages of the DAERNN are illustrated through extensive Monte Carlo simulation studies and two real data applications. The results show that DAERNN outperforms existing censored ERNN methods as well as other competing approaches.
期望回归神经网络(ERNN)是捕获数据异质性和复杂非线性结构的有力工具。然而,大多数现有的研究主要集中在充分观测的数据上,对涉及审查观测的情景的关注相对有限。在本文中,我们提出了一种基于数据增强的ERNN算法,称为DAERNN,用于建模变量之间具有复杂关系的异构删节数据。所提出的DAERNN具有灵活性,能够探索协变量在各种类型的审查下对响应条件预期的潜在非线性影响,从而增强了其对实际审查数据分析的适用性。此外,DAERNN可以很容易地通过数据增强策略与标准的基于梯度的优化算法相结合来实现,该算法直接产生条件期望函数的估计。通过广泛的蒙特卡罗模拟研究和两个实际数据应用说明了DAERNN的优点。结果表明,DAERNN优于现有的审查ERNN方法以及其他竞争方法。
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引用次数: 0
Dynamic hypergraph structure learning for spatio-temporal time series forecasting 时空时间序列预测的动态超图结构学习
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-11 DOI: 10.1016/j.neucom.2026.133014
ZhuoLin Li , NingNing Cui , Huo Wu , Zhongyun Bao , Subin Huang
Accurate spatiotemporal forecasting hinges on capturing the intricate and dynamic relationships within data. While hypergraph neural networks have shown promise for capturing high-order interactions, existing methods typically rely on external prior knowledge or learned static hypergraph structures, thereby limiting their ability to capture dynamic variations. Moreover, directly learning the full hypergraph incidence matrix suffers from parameter redundancy and overfitting. To mitigate these drawbacks, we propose a novel Dynamic Hypergraph and Graph Structure Inference Model (DHGSIM), which simultaneously models pairwise and high-order relationships without external prior knowledge. Specifically, for dynamic high-order associations, we construct hypergraph structures leveraging low-rank factorization to boost parameter efficiency and mitigate overfitting. A dynamic routing mechanism is further applied to enable the learned hypergraph structure to interact adaptively with the input data, thereby refining hyperedge representations. In pairwise association modeling, we propose a dynamic graph structure learning method that incorporates a key node identification mechanism to capture crucial interactions. Finally, we decouple temporal and spatial feature extraction to improve efficiency and optimize the entire framework end-to-end. Comprehensive experiments on five widely-used benchmark datasets show that our method attains superior performance. The source code is publicly available at https://github.com/ZhuoLinLi-shu/DHGSIM.
准确的时空预测取决于捕捉数据中复杂的动态关系。虽然超图神经网络已经显示出捕获高阶交互的希望,但现有的方法通常依赖于外部先验知识或学习的静态超图结构,从而限制了它们捕获动态变化的能力。此外,直接学习全超图关联矩阵存在参数冗余和过拟合的问题。为了减轻这些缺点,我们提出了一种新的动态超图和图结构推理模型(DHGSIM),该模型在没有外部先验知识的情况下同时对两两和高阶关系进行建模。具体来说,对于动态高阶关联,我们利用低秩分解构造超图结构来提高参数效率并减轻过拟合。进一步应用动态路由机制,使学习到的超图结构能够自适应地与输入数据交互,从而改进超边缘表示。在配对关联建模中,我们提出了一种动态图结构学习方法,该方法结合了关键节点识别机制来捕获关键交互。最后,我们将时空特征提取解耦,以提高效率并对整个框架进行端到端优化。在五个广泛使用的基准数据集上的综合实验表明,我们的方法取得了优异的性能。源代码可在https://github.com/ZhuoLinLi-shu/DHGSIM上公开获得。
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引用次数: 0
Spiking neural P systems with brain-derived neurotrophic factor 脑源性神经营养因子刺激神经P系统
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-07 DOI: 10.1016/j.neucom.2026.132990
Yue Zhao, Zhenjiao Lin, Feng Qi
Spiking Neural P systems (SN P systems), as a member of the third generation artificial neural network models, have been widely studied in recent years due to their high scalability, high parallelism, and low energy consumption. However, the original SN P systems have limitations in nonlinear learning and dynamic plasticity. We introduced brain-derived neurotrophic factor (BDNF) into SN P systems for the first time, integrated BDNF and its signaling pathways, and enhanced spike control and synaptic plasticity through four innovative rules, thereby simulating the role of BDNF in neuronal adaptation. We demonstrate that the system requires only 25 neurons to perform universal calculations, which is less than the number of neurons used by existing SN P variants. Additionally, experimental evaluations on function approximation and image classification tasks confirm that the model achieves state-of-the-art performance. In the function fitting task, the system structure is further simplified through visual training and pruning strategies while maintaining efficient nonlinear computing power and high interpretability, fully demonstrating the operation process of the BDNF-SN P systems in actual tasks. In image classification, both comparative and ablation studies across MNIST and four MedMNIST datasets confirm the superiority of the 5B-BDNF-SN P family, with the 5B-Gram-SN P variant achieving up to 99.56% accuracy on MNIST and 97.87% AUC on PathMNIST. Furthermore, the model demonstrates high inference efficiency with fewer parameters, validating its effectiveness and adaptability in both general and medical image classification tasks.
脉冲神经网络(snp)系统作为第三代人工神经网络模型的一员,由于其高扩展性、高并行性和低能耗等特点,近年来得到了广泛的研究。然而,原有的SN - P系统在非线性学习和动态可塑性方面存在局限性。我们首次将脑源性神经营养因子(brain-derived neurotrophic factor, BDNF)引入SN - P系统,整合BDNF及其信号通路,并通过四条创新规则增强峰值控制和突触可塑性,从而模拟BDNF在神经元适应中的作用。我们证明了该系统只需要25个神经元来执行通用计算,这比现有的SN P变体使用的神经元数量要少。此外,对函数逼近和图像分类任务的实验评估证实了该模型达到了最先进的性能。在函数拟合任务中,通过视觉训练和剪枝策略进一步简化了系统结构,同时保持了高效的非线性计算能力和高可解释性,充分展示了BDNF-SN - P系统在实际任务中的运行过程。在图像分类方面,MNIST和四个MedMNIST数据集的比较和消融研究都证实了5B-BDNF-SN P家族的优势,5B-Gram-SN P变体在MNIST上的准确率高达99.56%,在PathMNIST上的AUC高达97.87%。此外,该模型在参数较少的情况下具有较高的推理效率,验证了其在普通图像和医学图像分类任务中的有效性和适应性。
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引用次数: 0
Spatio-temporal tree attention network for forecasting traffic flow 基于时空树注意力网络的交通流预测
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-11 DOI: 10.1016/j.neucom.2026.133032
Haoran Li , Zhiqiang Lv , Zhaobin Ma , Jianbo Li , Xiaolong Ma , Dongxin Sun , Kangxin Guo , Jun Liu
The Intelligent Transport Systems represent a pivotal research area within the broader context of smart city construction. It constitutes a vital component of the contemporary urban transport system, with the potential to facilitate high-quality development. The prediction of traffic flow represents a significant research area within the field of ITS. It offers a valuable opportunity to develop a robust data foundation for the planning and optimisation of urban traffic road networks. The majority of studies in this field currently employ static graphs and graph neural networks to complete the traffic flow prediction task. The use of static graphs for traffic flow prediction is inadequate for capturing the dynamic spatial and temporal characteristics of the traffic network structure. Furthermore, graph neural networks are only capable of performing local spatial characteristic analysis. To address the issue of global feature analysis of traffic network topology, multi-layer graph neural networks are required for iterative computation. The number of layers of graph neural networks increases in line with the number of nodes in the traffic network. To address the aforementioned issues, this study proposes a neural network architecture that employs a tree structure for attention computation, namely the Spatio-temporal Tree Attention Network (STTAT). In particular, this study proposes a tree-structured representation of traffic network topology and a tree-structured attention computation method for learning global features of traffic network topology. The proposed model has been evaluated on several real-world traffic datasets, and its performance has been compared with that of several baseline models. The results demonstrate that the proposed model significantly outperforms the baseline models in terms of prediction accuracy.
在智慧城市建设的大背景下,智能交通系统是一个关键的研究领域。它是当代城市交通系统的重要组成部分,具有促进高质量发展的潜力。交通流预测是智能交通领域的一个重要研究领域。它提供了一个宝贵的机会,为规划和优化城市交通道路网络建立一个强大的数据基础。目前该领域的研究大多采用静态图和图神经网络来完成交通流预测任务。使用静态图形进行交通流预测不足以捕捉交通网络结构的动态时空特征。此外,图神经网络只能进行局部空间特征分析。为了解决交通网络拓扑结构的全局特征分析问题,需要使用多层图神经网络进行迭代计算。图神经网络的层数随交通网络中节点数的增加而增加。针对上述问题,本研究提出了一种采用树状结构进行注意力计算的神经网络架构,即时空树状注意力网络(spatial -temporal tree attention network, STTAT)。特别地,本研究提出了一种树形的交通网络拓扑表示和一种树形的注意力计算方法来学习交通网络拓扑的全局特征。该模型在多个真实交通数据集上进行了评估,并与多个基线模型的性能进行了比较。结果表明,该模型在预测精度上明显优于基线模型。
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引用次数: 0
ARFNet: Scale-aware adaptive receptive field network for time series forecasting ARFNet:用于时间序列预测的尺度感知自适应接受场网络
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-11 DOI: 10.1016/j.neucom.2026.133044
Chongyun Qin, Zhenpeng Wu, Yiting Shi, Jianliang Gao
Time series forecasting plays a crucial role in decision-making across various scenarios, including weather, traffic, and finance. Real-world time series typically exhibit complex patterns where multiple periods and dynamic trends overlap. However, traditional models based on fixed receptive fields struggle to adapt flexibly to scale variations in periodic and trend features across different application scenarios, thereby limiting their generalization capabilities. In this paper, we propose a scale-aware Adaptive Receptive Field Network (ARFNet). Specifically, we propose an Adaptive Receptive Field Pyramid module that dynamically adjusts the receptive field size based on the inherent characteristics of the data, providing high-quality periodic and trend feature inputs for subsequent analysis. In addition, we design a Scale-Aware Feature Synthesizer module to capture the dependencies between features at different scales, enhancing the model’s comprehension and utilization of multi-scale temporal information. Extensive experimental results on real-world datasets show that ARFNet outperforms state-of-the-art methods in time series forecasting.
时间序列预测在各种情况下的决策中起着至关重要的作用,包括天气、交通和金融。现实世界的时间序列通常表现出复杂的模式,其中多个周期和动态趋势重叠。然而,基于固定接受场的传统模型难以灵活地适应不同应用场景中周期性和趋势特征的尺度变化,从而限制了其泛化能力。在本文中,我们提出了一个尺度感知的自适应感受野网络(ARFNet)。具体而言,我们提出了一个自适应接受场金字塔模块,该模块根据数据的固有特征动态调整接受场大小,为后续分析提供高质量的周期和趋势特征输入。此外,我们设计了一个尺度感知特征合成器模块来捕获不同尺度特征之间的依赖关系,增强模型对多尺度时间信息的理解和利用。在真实世界数据集上的大量实验结果表明,ARFNet在时间序列预测方面优于最先进的方法。
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引用次数: 0
Learning from multi-view fragments: An adaptive consistency distillation framework for occluded person re-identification 从多视图片段中学习:一个自适应一致性蒸馏框架用于闭塞的人再识别
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-11 DOI: 10.1016/j.neucom.2026.133015
Jianfeng Dong , Shengwei Tian , Long Yu , Hongfeng You , Qimeng Yang , Jinmiao Song , Xinjun Pei , Feng Shi , Kun Wu
Occluded person re-identification (ReID) faces an “information incompleteness paradox”: a single occluded view misses discriminative cues and yields ambiguous representations, while exploiting multi-view observations typically requires multi-branch inference with high computational cost. To address this dilemma, we propose Multi-View Consistency Distillation (MVCD), a framework formulated under the Learning Using Privileged Information (LUPI) paradigm. Specifically, we construct a training-only teacher that has privileged access to multi-view fragments and identity annotations (available only during training), and transfer this privileged knowledge to a standard single-view student through consistency distillation. The teacher contains three training-only mechanisms: (1) Saliency-Guided Feature Purification (SGFP) to suppress occlusion-induced noise with label guidance; (2) Cross-View Patch Alignment (CVPA) to exploit patch correspondences for spatial rectification across views; and (3) Reliability-Guided Aggregation (RGA) to produce a low-variance, reliable supervision target. Crucially, all auxiliary components are discarded after training, enabling the student to recover more complete representations from occluded inputs with zero extra inference-time cost. Extensive experiments on five benchmarks show consistent improvements over strong baselines. On Occluded-DukeMTMC, MVCD achieves 70.4% Rank-1 accuracy and runs at 25 ms per image, outperforming prior state-of-the-art methods.
被遮挡人再识别(ReID)面临“信息不完备悖论”:单个被遮挡的视图错过了判别线索,产生了模糊的表示,而利用多视图观察通常需要多分支推理,计算成本高。为了解决这一困境,我们提出了多视图一致性蒸馏(MVCD),这是一个在使用特权信息学习(LUPI)范式下制定的框架。具体来说,我们构建了一个只接受培训的教师,他有特权访问多视图片段和身份注释(仅在培训期间可用),并通过一致性蒸馏将这些特权知识转移给标准的单视图学生。教师包含三种仅用于训练的机制:(1)显著性引导特征净化(SGFP),通过标签引导抑制闭塞性噪声;(2)跨视图Patch Alignment (Cross-View Patch Alignment, CVPA),利用Patch对应进行跨视图空间校正;(3)可靠性引导聚合(RGA),生成低方差、可靠的监督目标。至关重要的是,所有辅助成分在训练后被丢弃,使学生能够从闭塞的输入中恢复更完整的表示,并且没有额外的推理时间成本。在五个基准上进行的广泛实验表明,在较强的基线上有一致的改进。在occlded - dukemtmc上,MVCD达到70.4%的Rank-1精度,每张图像运行25毫秒,优于先前最先进的方法。
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引用次数: 0
Dynamic transformer architecture for continual learning of multimodal tasks 用于持续学习多模态任务的动态变压器架构
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-07 DOI: 10.1016/j.neucom.2026.132977
Yuliang Cai , Mohammad Rostami
Transformer neural networks are increasingly replacing prior architectures across a wide range of applications in different data modalities. The increasing size and computational demands of fine-tuning large pre-trained transformer neural networks pose significant challenges for the widespread adoption of these models in applications that demand on-edge computing. To tackle this challenge, continual learning (CL) emerges as a solution by facilitating the transfer of knowledge across tasks that arrive sequentially for an autonomously learning agent. However, current CL methods mainly focus on learning tasks that are exclusively vision-based or language-based. We propose a transformer-based CL framework focusing on learning tasks that involve both vision and language, known as Vision-and-Language (VaL) tasks. In our framework, we benefit from the novel task-attention block and the introduced extra parameters to a base transformer to specialize the network for each task. As a result, we enable dynamic model expansion to learn several tasks in a sequence. We also use knowledge distillation and experience replay to benefit from relevant past experiences to learn the current task more efficiently. Our proposed method, Task Attentive Multimodal Continual Learning (TAM-CL), allows for the exchange of information between tasks while mitigating the problem of catastrophic forgetting. Notably, our approach is scalable, incurring minimal memory overhead. TAM-CL achieves 4.62% accuracy higher than the state-of-the-art (SOTA) accuracy on challenging multimodal tasks.2
变压器神经网络在不同数据模式的广泛应用中越来越多地取代了先前的架构。微调大型预训练变压器神经网络的规模和计算需求不断增加,这对在需要边缘计算的应用中广泛采用这些模型提出了重大挑战。为了应对这一挑战,持续学习(CL)作为一种解决方案出现了,它促进了自主学习代理在顺序到达的任务之间的知识转移。然而,目前的CL方法主要集中在专门基于视觉或语言的学习任务上。我们提出了一个基于转换器的CL框架,专注于涉及视觉和语言的学习任务,称为视觉和语言(VaL)任务。在我们的框架中,我们受益于新的任务注意块和在基本变压器中引入的额外参数,以便为每个任务专门化网络。因此,我们使动态模型扩展能够在一个序列中学习多个任务。我们还使用知识蒸馏和经验重播,从过去的相关经验中获益,从而更有效地学习当前的任务。我们提出的方法,任务关注多模态持续学习(TAM-CL),允许任务之间的信息交换,同时减轻灾难性遗忘的问题。值得注意的是,我们的方法是可伸缩的,产生最小的内存开销。在具有挑战性的多模态任务上,TAM-CL的准确率比最先进的(SOTA)准确率高4.62%
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引用次数: 0
Multi-view graph contrastive clustering via consensus constraint 基于共识约束的多视图图对比聚类
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-16 DOI: 10.1016/j.neucom.2026.133069
Wentao Li, Xingwang Zhao, Zhiqiang Li, Shiyi Li, Jinghan Yang
Multi-view graph clustering (MGC) aims to integrate graph information from multiple perspectives to determine a unified node partitioning scheme, thereby accurately mining the potential association rules of data. In recent years, contrastive learning-based MGC methods have attracted extensive attention due to their excellent generalization ability. However, existing mainstream edge-based strategies (neighborhood contrastive learning) still have significant limitations: (1) The search range for positives is fixed to the first-order neighborhood, which is overly restrictive and makes it difficult to fully explore the latent similarity between nodes; (2) Excessive focus is placed on intra-view connection relationships while ignoring the mining of inter-view structural consistency, which tends to lead to the omission of positives with stable similarity to the anchor or the misclassification of low-similarity nodes as positives. To address the above limitations, this paper proposes a Multi-view Graph Contrastive Clustering via Consensus Constraint (MGC4). Specifically, the algorithm first leverages inter-view structural consistency to identify the consensus neighbors of anchors and their cross-view counterparts as high-quality positives. Second, it assigns adaptive contrastive weights according to the cross-view average graph distance between the positives and the anchor, distinguishing the importance of different positives. Extensive experiments on multiple real-world datasets demonstrate that MGC4 consistently outperforms current state-of-the-art baselines in both clustering accuracy and robustness.
多视图图聚类(MGC)旨在从多个角度整合图信息,确定统一的节点划分方案,从而准确挖掘数据潜在的关联规则。近年来,基于对比学习的MGC方法因其出色的泛化能力而受到广泛关注。然而,现有主流的基于边缘的策略(邻域对比学习)仍然存在明显的局限性:(1)正的搜索范围固定在一阶邻域,限制过于严格,难以充分挖掘节点之间的潜在相似度;(2)过度关注视图内连接关系,忽略了对视图间结构一致性的挖掘,容易导致遗漏与锚点相似度稳定的阳性节点或将低相似度节点误分类为阳性节点。为了解决上述限制,本文提出了一种基于共识约束的多视图图对比聚类(MGC4)。具体来说,该算法首先利用视图间结构一致性来识别锚点的共识邻居及其交叉视图对应的高质量正值。其次,根据正数与锚点之间的横视平均图距离分配自适应对比权重,区分不同正数的重要性;在多个真实数据集上进行的大量实验表明,MGC4在聚类精度和鲁棒性方面始终优于当前最先进的基线。
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引用次数: 0
Self2Rolling: Self-supervised denoising using detail-guided mask with updates Self2Rolling:使用带有更新的细节引导掩模进行自监督去噪
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-12 DOI: 10.1016/j.neucom.2026.132993
Bolin Song , Yiyang Wang , Changze Zhou
Self-supervised learning denoisers utilizing blind spot networks have garnered significant attention due to their capability to learn a denoiser that solely relies on single noisy images. However, existing approaches employ a uniform masking strategy, wherein all pixels are masked indiscriminately, resulting in the loss of intricate details. In this paper, we introduce a novel technique for generating a detail-guided mask that is not uniformly sampled across different regions, to mitigate the loss of intricate details and enhance overall denoising quality. Furthermore, we propose a novel framework named Self2Rolling to enhance the precision of detail position guidance and prioritize reinforcing crucial yet overlooked details that require preservation. The proposed framework can be viewed as an integration of a noise measurement model with self-supervised learning techniques, exhibiting continuous enhancements in denoising performance across iterations. Extensive experiments validate the superiority of our approach compared to state-of-the-art methods. The executable code will be released upon acceptance of the paper.
利用盲点网络的自监督学习去噪器由于能够学习仅依赖于单个噪声图像的去噪器而获得了极大的关注。然而,现有的方法采用均匀掩蔽策略,其中所有像素被不加选择地掩蔽,导致丢失复杂的细节。在本文中,我们引入了一种新的技术来生成一个细节引导的掩模,该掩模在不同区域不均匀采样,以减轻复杂细节的损失并提高整体去噪质量。此外,我们提出了一个名为Self2Rolling的新框架,以提高细节位置引导的精度,并优先加强需要保留的关键但被忽视的细节。所提出的框架可以看作是噪声测量模型与自监督学习技术的集成,在迭代过程中表现出持续增强的去噪性能。大量的实验验证了我们的方法与最先进的方法相比的优越性。可执行代码将在论文被接受后发布。
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引用次数: 0
A triple-inertial accelerated alternating optimization method for deep learning training 深度学习训练的三惯性加速交替优化方法
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-10 DOI: 10.1016/j.neucom.2026.132997
Chengcheng Yan, Jiawei Xu, Qingsong Wang, Zheng Peng
The stochastic gradient descent (SGD) algorithm has achieved remarkable success in training deep learning models. However, it has several limitations, including susceptibility to vanishing gradients, sensitivity to input data, and a lack of robust theoretical guarantees. In recent years, alternating minimization (AM) methods have emerged as a promising alternative for model training by employing gradient-free approaches to iteratively update model parameters. Despite their potential, these methods often exhibit slow convergence rates. To address this challenge, we propose a novel Triple-Inertial Accelerated Alternating Minimization (TIAM) framework for neural network training. The TIAM approach incorporates a triple-inertial acceleration strategy with a specialized approximation method, facilitating targeted acceleration of different terms in each sub-problem optimization. This integration improves the efficiency of convergence, achieving better performance with fewer iterations. Additionally, we provide a convergence analysis of the TIAM algorithm, including its global convergence properties and convergence rate. Extensive experiments validate the effectiveness of the TIAM method, demonstrating improvements in generalization capability and computational efficiency compared to existing approaches, particularly when applied to the rectified linear unit (ReLU) and its variants.
随机梯度下降(SGD)算法在训练深度学习模型方面取得了显著的成功。然而,它有一些局限性,包括对梯度消失的敏感性,对输入数据的敏感性,以及缺乏强大的理论保证。近年来,交替最小化(AM)方法通过采用无梯度方法迭代更新模型参数,成为一种很有前途的模型训练替代方法。尽管这些方法很有潜力,但它们往往表现出缓慢的收敛速度。为了解决这一挑战,我们提出了一种新的用于神经网络训练的三惯性加速交替最小化(TIAM)框架。TIAM方法将三惯性加速策略与专门的逼近方法相结合,便于在每个子问题的优化中实现不同项的目标加速。这种集成提高了收敛的效率,用更少的迭代实现了更好的性能。此外,我们还提供了TIAM算法的收敛性分析,包括其全局收敛性和收敛速度。大量的实验验证了TIAM方法的有效性,证明了与现有方法相比,TIAM方法在泛化能力和计算效率方面的改进,特别是在应用于整流线性单元(ReLU)及其变体时。
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引用次数: 0
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