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CDNE: Community deception from node and edge perspectives 从节点和边缘的角度看社区欺骗
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.2026.133039
Yan Kang , Jiajun Tang , Baochen Fan , Hu Yuan
As complex networks grow, community detection aids social network clustering but also risks exposing sensitive ties. Community deception alters network structures to hide target communities and protect privacy. Existing deception approaches primarily rely on either node-level or edge-level interventions, yet they often neglect the heterogeneous influence of individual nodes and edges, resulting in suboptimal concealment performance. To address these limitations, we propose CDNE, a novel community deception model from both node and edge perspectives. The model integrates node-based community deceptions into edge-based community deceptions for the first time, thus expanding the feasible manipulation space and enabling more flexible and effective deceptions. Moreover, we theoretically study the effects of inter-community and intra-community edge adding and deleting operations as a deception optimization function. Experiments on twenty-five community structure partitions generated by five real-world network datasets and five community detection algorithms show that CDNE consistently outperforms existing state-of-the-art deception methods.
随着复杂网络的发展,社区检测有助于社会网络集群,但也有暴露敏感关系的风险。社区欺骗改变了网络结构,以隐藏目标社区和保护隐私。现有的欺骗方法主要依赖于节点级或边缘级的干预,但它们往往忽略了单个节点和边缘的异构影响,导致隐藏性能不理想。为了解决这些限制,我们从节点和边缘的角度提出了一种新的社区欺骗模型CDNE。该模型首次将基于节点的社区欺骗与基于边缘的社区欺骗相结合,拓展了可行的操作空间,使欺骗更加灵活有效。此外,我们从理论上研究了作为欺骗优化函数的社区间和社区内边缘添加和删除操作的影响。在五个真实网络数据集和五个社区检测算法生成的25个社区结构分区上的实验表明,CDNE始终优于现有的最先进的欺骗方法。
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引用次数: 0
New integral inequalities for exponential stability of neural networks with time-varying delay 时变时滞神经网络指数稳定性的新积分不等式
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-17 DOI: 10.1016/j.neucom.2026.133078
Han Xue , Yuanyuan Zhang , Chenyang Shi , Seakweng Vong
This paper addresses the exponential stability of delayed neural networks by extending existing integral inequalities. Specifically, we consider a refined Lyapunov-Krasovskii function that incorporates decay rate terms and employs the new integral inequalities containing additional information on the delay-dependent terms to derive less conservative stability criteria for delayed neural networks. Numerical simulations validate the effectiveness of the proposed approach, demonstrating its potential for practical implementation in the control design of delayed neural networks and highlighting its advantages over traditional methods.
本文通过推广已有的积分不等式,讨论了时滞神经网络的指数稳定性问题。具体来说,我们考虑了一个包含衰减率项的改进Lyapunov-Krasovskii函数,并使用包含延迟相关项附加信息的新的积分不等式来导出延迟神经网络的低保守稳定性准则。数值仿真验证了该方法的有效性,证明了其在延迟神经网络控制设计中的实际应用潜力,并突出了其相对于传统方法的优势。
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引用次数: 0
Gated X-TFC: Soft domain decomposition for forward and inverse problems in sharp-gradient PDEs 门控X-TFC:急梯度偏微分方程正逆问题的软域分解
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.2026.133090
Vikas Dwivedi , Enrico Schiassi , Bruno Sixou , Monica Sigovan
Physics-informed neural networks (PINNs) and related methods struggle to resolve sharp gradients in singularly perturbed boundary value problems without resorting to some form of domain decomposition, which often introduces complex interface penalties. While the Extreme Theory of Functional Connections (X-TFC), thanks to the TFC component, avoids multi-objective optimization by employing exact boundary condition enforcement, it remains computationally inefficient for boundary layers and incompatible with decomposition. We propose Gated X-TFC, a novel framework for both forward and inverse problems, that overcomes these limitations through a soft, learned domain decomposition. Our method replaces hard interfaces with a differentiable logistic gate that dynamically adapts radial basis function (RBF) kernel widths across the domain, eliminating the need for interface penalties. This approach yields not only superior accuracy but also significant improvements in computational efficiency: on a benchmark one dimensional (1D) convection–diffusion, Gated X-TFC achieves an order-of-magnitude lower error than standard X-TFC while using 80% fewer collocation points and reducing training time by 66%. In addition, we introduce an operator-conditioned meta-learning layer that learns a probabilistic mapping from PDE parameters to optimal gate configurations, enabling fast, uncertainty-aware warm-starting for new problem instances. We further demonstrate extensibility to multiple subdomains and higher dimensions by solving a twin boundary–layer equation and a 2D Poisson problem with a sharp Gaussian source. Overall, Gated X-TFC delivers a simple alternative to PINNs that is both accurate and computationally efficient for challenging boundary-layer regimes. Future work will focus on nonlinear problems. For reproducibility, all the codes are available at https://github.com/vikas-dwivedi-2022/gated_xtfc
物理信息神经网络(pinn)和相关方法难以解决奇摄动边值问题中的急剧梯度问题,而不需要采用某种形式的域分解,这通常会引入复杂的界面惩罚。虽然功能连接的极限理论(X-TFC),由于TFC组件,避免了多目标优化通过采用精确的边界条件执行,它仍然是计算效率低下的边界层和不兼容的分解。我们提出门控X-TFC,这是一种新的框架,用于正向和逆问题,它通过软的,学习的域分解来克服这些限制。我们的方法用一个可微逻辑门取代硬接口,该逻辑门在整个域上动态适应径向基函数(RBF)核宽度,从而消除了接口惩罚的需要。这种方法不仅产生了优越的准确性,而且在计算效率上也有了显著的提高:在基准一维(1D)对流扩散上,门控X-TFC比标准X-TFC的误差低了一个数量级,同时使用的搭配点减少了80%,训练时间减少了66%。此外,我们引入了一个算子条件元学习层,该层学习从PDE参数到最佳门配置的概率映射,为新问题实例实现快速,不确定性感知的热启动。通过求解一个双边界层方程和一个具有尖锐高斯源的二维泊松问题,进一步证明了该方法在多子域和高维上的可扩展性。总的来说,门控X-TFC提供了一种简单的pinn替代方案,既准确又具有计算效率,适用于具有挑战性的边界层制度。今后的工作将集中在非线性问题上。为了再现性,所有代码都可以在https://github.com/vikas-dwivedi-2022/gated_xtfc上获得
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引用次数: 0
Dynamic patch selection and dual-granularity alignment for cross-modal retrieval 跨模态检索的动态补丁选择和双粒度对齐
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-09 DOI: 10.1016/j.neucom.2026.132999
Zhenghui Luo, Min Meng, Jigang Wu
Cross-modal retrieval aims to establish semantic associations between heterogeneous modalities, among which image-text retrieval is a key application scenario that seeks to achieve efficient semantic alignment between images and texts. Existing approaches often rely on fixed patch selection strategies for fine-grained alignment. However, such static strategies struggle to adapt to complex scene variations. Moreover, fine-grained alignment methods tend to fall into local optima by overemphasizing local feature details while neglecting global semantic context. Such limitations significantly hinder both retrieval accuracy and generalization performance. To address these challenges, we propose a Dynamic Patch Selection and Dual-Granularity Alignment (DPSDGA) framework that jointly enhances global semantic consistency and local feature interactions for robust cross-modal alignment. Specifically, we introduce a dynamic sparse module that adaptively adjusts the number of retained visual patches based on scene complexity, effectively filtering redundant information while preserving critical semantic features. Furthermore, we design a dual-granularity alignment mechanism, which combines global contrastive learning with local fine-grained alignment to enhance semantic consistency across modalities. Extensive experiments on two benchmark datasets, Flickr30k and MS-COCO, demonstrate that our method significantly outperforms existing approaches in image-text retrieval.
跨模态检索旨在建立异构模态之间的语义关联,其中图像-文本检索是实现图像和文本之间高效语义对齐的关键应用场景。现有的方法通常依赖于固定的补丁选择策略来进行细粒度对齐。然而,这种静态策略难以适应复杂的场景变化。此外,细粒度对齐方法由于过分强调局部特征细节而忽略全局语义上下文,容易陷入局部最优。这些限制严重影响了检索精度和泛化性能。为了解决这些挑战,我们提出了一个动态补丁选择和双粒度对齐(DPSDGA)框架,该框架共同增强了全局语义一致性和局部特征交互,以实现稳健的跨模态对齐。具体来说,我们引入了一个动态稀疏模块,该模块可以根据场景复杂性自适应调整保留的视觉补丁的数量,有效地过滤冗余信息,同时保留关键的语义特征。此外,我们设计了一种双粒度对齐机制,将全局对比学习与局部细粒度对齐相结合,以增强模态之间的语义一致性。在两个基准数据集(Flickr30k和MS-COCO)上进行的大量实验表明,我们的方法在图像文本检索方面明显优于现有的方法。
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引用次数: 0
ASHSR: Enhancing query-based occupancy prediction via anti-occlusion sampling and hard sample reweighting ASHSR:通过抗遮挡采样和硬样本重加权增强基于查询的占用预测
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.2026.133007
Zhihao Li, Shanshan Zhang, Jian Yang
3D occupancy prediction estimates the occupancy status in 3D space and is crucial for safe autonomous driving. Existing query-based methods improve efficiency but suffer from challenges such as poor quality of sampled features, semantic inconsistency of prediction results, and so on. To address these challenges, we propose ASHSR, an efficient occupancy prediction network driven by three innovative modules in the decoder. First, considering the limitations of the existing sampling approaches, we propose a view-aware Anti-occlusion Sampling Module (ASM), which significantly improves the quality of sampled features by adaptively avoiding meaningless sampling along the optical ray. Second, to resolve the ambiguity of the one-to-many prediction paradigm in single-query prediction, we design a Hard Sample Reweighting (HSR) module, which effectively improves the prediction purity and semantic consistency by assigning higher weights to the identified hard samples. Finally, to mitigate the cross-class data imbalance in driving scenes, we develop a hierarchical Coarse-to-Fine Supervision (CFS) mechanism to customize reasonable supervision signals across decoder layers, which significantly enhances the perception of rare categories. Extensive experiments on the Occ3D-nuScenes dataset demonstrate that our ASHSR significantly outperforms the existing state-of-the-art methods in terms of the RayIoU metric while maintaining superior inference efficiency (FPS).
3D占位预测是对三维空间的占位状态进行估计,对于安全的自动驾驶至关重要。现有的基于查询的方法提高了效率,但存在采样特征质量差、预测结果语义不一致等问题。为了应对这些挑战,我们提出了ASHSR,这是一个由解码器中的三个创新模块驱动的高效占用预测网络。首先,考虑到现有采样方法的局限性,我们提出了一种视图感知的抗遮挡采样模块(ASM),该模块通过自适应避免沿光学射线进行无意义采样,显著提高了采样特征的质量。其次,为了解决单查询预测中一对多预测范式的模糊性,设计了硬样本重加权(Hard Sample Reweighting, HSR)模块,通过对识别出的硬样本赋予更高的权重,有效提高了预测的纯度和语义一致性。最后,为了缓解驾驶场景中跨类别的数据不平衡,我们开发了一种分层的粗到细监督(CFS)机制,在解码器层之间定制合理的监督信号,显著增强了对稀有类别的感知。在Occ3D-nuScenes数据集上进行的大量实验表明,我们的ASHSR在RayIoU度量方面显著优于现有的最先进方法,同时保持了优越的推理效率(FPS)。
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引用次数: 0
Image-text driven style randomization for domain generalized semantic segmentation 面向领域广义语义分割的图像文本驱动风格随机化
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-04 DOI: 10.1016/j.neucom.2026.132953
Junho Lee , Jisu Yoon , Jisong Kim , Jun Won Choi
Semantic segmentation models trained on source domains often fail to generalize to unseen domains due to domain shifts caused by varying environmental conditions. While existing approaches rely solely on text prompts for domain randomization, their generated styles often deviate from real-world distributions. To address this limitation, we propose a novel two-stage framework for Domain Generalization in Semantic Segmentation (DGSS). First, we introduce Image-Prompt-driven Instance Normalization (I-PIN), which leverages both style images and text prompts to optimize style parameters, achieving more accurate style representations compared to text-only approaches. Second, we present Dual-Path Style-Invariant Feature Learning (DSFL) which employs inter-style and intra-style consistency losses, ensuring consistent predictions across different styles while promoting feature alignment within semantic classes. Extensive experiments demonstrate that our approach consistently outperforms existing state-of-the-art methods across multiple challenging domains, effectively addressing the domain shift problem in semantic segmentation.
在源域上训练的语义分割模型,由于环境条件变化引起的域转移,往往不能泛化到未知域。虽然现有的方法完全依赖于文本提示来进行领域随机化,但它们生成的样式经常偏离现实世界的分布。为了解决这一限制,我们提出了一种新的两阶段语义分割领域泛化框架。首先,我们介绍了图像提示驱动的实例规范化(I-PIN),它利用样式图像和文本提示来优化样式参数,与纯文本方法相比,实现更准确的样式表示。其次,我们提出了双路径风格不变特征学习(DSFL),它采用风格间和风格内一致性损失,确保不同风格之间的一致预测,同时促进语义类内的特征对齐。大量的实验表明,我们的方法在多个具有挑战性的领域中始终优于现有的最先进的方法,有效地解决了语义分割中的领域转移问题。
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引用次数: 0
A two-step transfer learning approach for railway point machine fault diagnosis under small sample conditions 小样本条件下铁路点机故障诊断的两步迁移学习方法
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-14 DOI: 10.1016/j.neucom.2026.133043
Tao Wen , Yixue Shen , Xia Fang , Zhongbei Tian , Clive Roberts
Fault diagnosis technology based on Transfer Learning (TL) has been widely investigated, as it enables knowledge transfer from related domains to the target domain, thereby reducing the need for large amounts of labeled data in the target domain. In the railway industry, Railway Point Machines (RPMs) are essential track-connection devices. However, due to the scarcity of fault data for RPMs, the accuracy of RPM fault diagnosis remains low. To address this challenge, this paper proposes a Two-step Transfer Learning (TSTL) method for RPM fault diagnosis. First, a small set of target-domain samples transformed by continuous wavelet transform (CWT) is used to construct a transition dataset, which is fed into a Wasserstein Generative Adversarial Network with Gradient Penalty (WGAN-GP) to generate synthetic samples. Then, a Convolutional Neural Network (CNN) with a top-down attention mechanism is employed to perform the first phase of TL from the source domain to the generated domain. Next, the parameters of selected frozen layers in the transferred CNN are retained to conduct the second phase of learning from the generated domain to the target domain. Experimental results demonstrate that the proposed method achieves 98.7% accuracy for fault diagnosis across different positions on the same RPM, and 95.6% accuracy across different RPMs at the same position.
基于迁移学习的故障诊断技术得到了广泛的研究,因为它可以将相关领域的知识转移到目标领域,从而减少了对目标领域中大量标记数据的需求。在铁路工业中,铁路点阵机(rpm)是必不可少的轨道连接设备。然而,由于转速故障数据的缺乏,转速故障诊断的准确性仍然很低。为了解决这一问题,本文提出了一种两步迁移学习(TSTL)方法用于RPM故障诊断。首先,利用连续小波变换(CWT)变换后的一小部分目标域样本构建过渡数据集,并将其送入Wasserstein梯度惩罚生成对抗网络(WGAN-GP)生成合成样本。然后,采用具有自顶向下注意机制的卷积神经网络(CNN)执行从源域到生成域的第一阶段TL。接下来,保留迁移后的CNN中选择的冻结层的参数,进行从生成域到目标域的第二阶段学习。实验结果表明,该方法对同一转速下不同位置的故障诊断准确率达到98.7%,对同一转速下不同位置的故障诊断准确率达到95.6%。
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引用次数: 0
SEMD-Net: A transformer based approach for brain tumor segmentation and classification SEMD-Net:基于变压器的脑肿瘤分割与分类方法
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-07 DOI: 10.1016/j.neucom.2026.132831
S. Vidhya , P.M. Siva Raja , R.P. Sumithra , Moses Garuba , Xiao-Zhi Gao
Brain tumor segmentation and classification from MRI images are critical tasks in neuro-oncology, but they remain challenging due to tumor heterogeneity, ambiguous boundaries, and variability across multi-modal imaging sequences. Existing deep learning methods often struggle with subregion delineation and generalization, leading to incomplete or inaccurate results. In this paper, we propose Squeeze-and-Excitation Mamba with DeiSwin+ + (SEMD-Net), a unified deep learning framework designed to improve both tumor segmentation and imaging-based glioma grade classification (HGG vs. LGG). The model integrates a multi-branch learning architecture capable of capturing both global and localized tumor features. It combines spatial-channel attention mechanisms and transformer-based representation learning to address the challenges of boundary precision, tissue variability, and intra-class heterogeneity. We evaluated our method on the BraTS 2020 and 2021 datasets using five-fold cross-validation. SEMD-Net achieved strong performance on key segmentation metrics, including a mean Dice Similarity Coefficient (DSC) of 0.88 ± 0.02, IoU of 0.86 ± 0.03, and a Hausdorff Distance (HD) of 3.5 ± 0.8 mm. For glioma subtype classification, the model reached 97.5 % accuracy, 98.9 % precision, 98.8 % recall, and an F1-score of 98.85 %, outperforming benchmark methods such as U-Net, DeepSemantic, and AdaBoost. These results suggest that SEMD-Net effectively balances segmentation accuracy and classification robustness, offering a promising solution for integrated brain tumor analysis. While further validation on external datasets is ongoing, the proposed framework shows strong potential for clinical application in automated MRI-based diagnosis.
从MRI图像中分割和分类脑肿瘤是神经肿瘤学的关键任务,但由于肿瘤的异质性、模糊的边界和多模态成像序列的可变性,它们仍然具有挑战性。现有的深度学习方法经常在子区域描述和泛化方面遇到困难,导致结果不完整或不准确。在本文中,我们提出了挤压和激励曼巴与DeiSwin+ + (SEMD-Net),一个统一的深度学习框架,旨在提高肿瘤分割和基于成像的胶质瘤等级分类(HGG vs. LGG)。该模型集成了一个多分支学习架构,能够捕获全局和局部肿瘤特征。它结合了空间通道注意机制和基于变换的表示学习来解决边界精度、组织可变性和类内异质性的挑战。我们在BraTS 2020和2021数据集上使用五倍交叉验证评估了我们的方法。SEMD-Net在关键分割指标上表现出色,包括平均Dice相似系数(DSC)为0.88 ± 0.02,IoU为0.86 ± 0.03,Hausdorff Distance (HD)为3.5 ± 0.8 mm。对于胶质瘤亚型分类,该模型的准确率达到97.5 %,准确率达到98.9 %,召回率达到98.8 %,f1得分达到98.85 %,优于U-Net、DeepSemantic和AdaBoost等基准方法。这些结果表明,SEMD-Net有效地平衡了分割精度和分类鲁棒性,为脑肿瘤综合分析提供了一个有希望的解决方案。虽然外部数据集的进一步验证正在进行中,但所提出的框架在基于mri的自动诊断中显示出强大的临床应用潜力。
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引用次数: 0
Diffbias: Harnessing diffusion models’ prediction bias for adversarial patch defense 扩散:利用扩散模型对对抗性斑块防御的预测偏差
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-09 DOI: 10.1016/j.neucom.2026.133009
Xudong Ye , Qi Zhang , Yapeng Wang , Xu Yang , Zuobin Ying , Jingzhang Sun , Qi Zhong , Xia Du
Adversarial patches pose a significant and real threat to deep neural networks, capable of inducing misclassification in realistic physical scenarios. Developing reliable and robust defense methods against these attacks is a critical application, and current research remains unsatisfactory. In this paper, we propose a novel framework that exploits the fact that unnatural perturbations introduced by adversarial patches can produce prediction biases significantly different from those of clean images during denoising. In the localization stage, our method focuses on the critical denoising steps through an adaptive temporal sampling strategy and introduces an energy metric that fuses kinetic and potential energy to quantify the degree of anomaly in the denoised trajectory. Furthermore, by combining this with the adaptive similarity weighting mechanism and the striding trajectory consistency analysis, our method effectively suppresses the interference of background noise, so as to achieve accurate locking of the patch area. In the restoration phase, the same diffusion model is applied to the patch region to restore the original visual content and integrity. This two-stage architecture shares a unified diffusion model, enabling the localization and inpainting processes to enhance the overall defense performance through information complementarity. Extensive experiments on the INRIA, COCO2017, and APRICOT datasets show that our approach achieves state-of-the-art detection performance under both digital and physical attack types without compromising the recognition accuracy of clean images.
对抗性补丁对深度神经网络构成了重大而真实的威胁,能够在现实的物理场景中诱导错误分类。针对这些攻击开发可靠和强大的防御方法是一个关键的应用,目前的研究仍然不令人满意。在本文中,我们提出了一个新的框架,该框架利用了由对抗补丁引入的非自然扰动可以在去噪期间产生与干净图像显著不同的预测偏差的事实。在定位阶段,我们的方法通过自适应时间采样策略专注于关键的去噪步骤,并引入融合动能和势能的能量度量来量化去噪轨迹中的异常程度。结合自适应相似度加权机制和步幅轨迹一致性分析,有效抑制背景噪声的干扰,实现对patch区域的精确锁定。在恢复阶段,将相同的扩散模型应用于patch区域,以恢复原始视觉内容和完整性。该两阶段体系结构共享统一的扩散模型,使定位和涂漆过程能够通过信息互补来增强整体防御性能。在INRIA、COCO2017和APRICOT数据集上的大量实验表明,我们的方法在数字和物理攻击类型下都实现了最先进的检测性能,而不会影响干净图像的识别精度。
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引用次数: 0
A novel dynamic graph generative adversarial network with edge-level differential privacy 一种具有边缘差分隐私的动态图生成对抗网络
IF 6.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-05-01 Epub Date: 2026-02-10 DOI: 10.1016/j.neucom.2026.132926
Liya Ma , Siqi Sun , Chen Li , Lu Liu , Lihong Wang
Most real-world graphs are dynamic and pose privacy risks when published and shared. Several researchers have used differential privacy to protect graph privacy. However, it is still challenging to maintain a continuous privacy–utility tradeoff when differential privacy methods are applied to dynamic graphs. To address this, we propose a novel Dynamic Graph Generative Adversarial Network with Edge-level Differential Privacy (DyGAN-EDP) model, which applies structural self-attention and an LSTM neural network to learn complex nonlinear patterns associated with graph structure evolution, which is beneficial for maintaining utility. To protect privacy, noise is introduced into the gradient of the generator during the training process to synthesize dynamic graphs, which can guarantee edge-level differential privacy. Moreover, a noise adjustment mechanism based on mutual information estimation is introduced, which provides stronger privacy protection when the graph structure changes significantly over time; at other times, it lowers the noise scale to ensure data utility. Experimental validations on three real-world dynamic graphs demonstrate the model’s ability to balance privacy and utility.
大多数现实世界的图表都是动态的,在发布和共享时会带来隐私风险。一些研究者使用差分隐私来保护图的隐私。然而,当差分隐私方法应用于动态图时,保持连续的隐私-效用权衡仍然具有挑战性。为了解决这个问题,我们提出了一种新的具有边缘级差分隐私的动态图生成对抗网络(DyGAN-EDP)模型,该模型应用结构自注意和LSTM神经网络来学习与图结构进化相关的复杂非线性模式,这有利于保持效用。为了保护隐私,在训练过程中在生成器的梯度中引入噪声来合成动态图,可以保证边缘级差分隐私。引入了一种基于互信息估计的噪声调整机制,当图结构随时间发生显著变化时,提供了更强的隐私保护;在其他时候,它降低噪声规模,以确保数据的效用。在三个真实世界动态图上的实验验证证明了该模型平衡隐私和实用性的能力。
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引用次数: 0
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