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N-BodyPat: Investigation on the dementia and Alzheimer's disorder detection using EEG signals N-BodyPat:利用脑电信号检测痴呆症和阿尔茨海默病的研究
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1016/j.knosys.2024.112510

The N-body problem is a remarkable research topic in physics. We propose a new feature extraction model inspired by the N-body trajectory and test its feature extraction capability. In the first part of the research, an open-access electroencephalogram (EEG) dataset is used to test the proposed method. This dataset has three classes, namely (i) Alzheimer's Disorder (AD), (ii) frontal dementia (FD), and (iii) control groups. In the second step of the study, the EEG signals were divided into segments of 15 s in length, which resulted in 4,661 EEG signals. In the third part of the study, the proposed new self-organized feature engineering (SOFE) model is used to classify the EEG signals automatically. For this SOFE, two novel methods were presented: (i) a dynamic feature extraction function using a graph of the N-Body orbital, termed N-BodyPat, and (ii) an attention pooling function. A multileveled and combinational feature extraction method was proposed by deploying both methods. A feature selection function using ReliefF and Neighborhood Component Analysis (RFNCA) was used to choose the most informative features. An ensemble k-nearest neighbors (EkNN) classifier was employed in the classification phase. Our proposed N-BodyPat generates seven feature vectors for each channel, and the utilized EEG signal dataset contains 19 channels. In this aspect,133 (=19 × 7) EkNN-based outcomes were created. To attain higher classification performance by employing these 133 EkNN-based outcomes, an iterative majority voting (IMV)-based information fusion method was applied, and the most accurate outcomes were selected automatically. The recommended N-BodyPat-based SOFE achieved a classification accuracy of 99.64 %.

N 体问题是物理学中的一个重要研究课题。我们提出了一种受 N-体轨迹启发的新特征提取模型,并测试了其特征提取能力。在研究的第一部分,我们使用一个公开的脑电图(EEG)数据集来测试所提出的方法。该数据集有三个类别,即(i) 阿尔茨海默病(AD)、(ii) 额叶痴呆(FD)和(iii) 对照组。研究的第二步是将脑电信号分成长度为 15 秒的片段,从而得到 4661 个脑电信号。在研究的第三部分,利用提出的新自组织特征工程(SOFE)模型对脑电信号进行自动分类。对于该 SOFE,提出了两种新方法:(i) 使用 N-Body轨道图的动态特征提取函数,称为 N-BodyPat;(ii) 注意力汇集函数。通过部署这两种方法,提出了一种多级组合特征提取方法。特征选择函数使用救济阵列和邻近成分分析(RFNCA)来选择信息量最大的特征。在分类阶段,采用了集合 k 近邻(EkNN)分类器。我们提出的 N-BodyPat 可为每个通道生成七个特征向量,所使用的脑电信号数据集包含 19 个通道。因此,基于 EkNN 的结果有 133 个(=19 × 7)。为了利用这 133 个基于 EkNN 的结果获得更高的分类性能,应用了一种基于迭代多数投票(IMV)的信息融合方法,并自动选出最准确的结果。推荐的基于 N-BodyPat 的 SOFE 分类准确率达到 99.64%。
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引用次数: 0
Enhancing visual reinforcement learning with State–Action Representation 用状态-动作表示法强化视觉强化学习
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1016/j.knosys.2024.112487

Despite the remarkable progress made in visual reinforcement learning (RL) in recent years, sample inefficiency remains a major challenge. Many existing approaches attempt to address this by extracting better representations from raw images using techniques like data augmentation or introducing some auxiliary tasks. However, these methods overlook the environmental dynamic information embedded in the collected transitions, which can be crucial for efficient control. In this paper, we present STAR: State-Action Representation Learning, a simple yet effective approach for visual continuous control. STAR learns a joint state–action representation by modeling the dynamics of the environment in the latent space. By incorporating the learned joint state–action representation into the critic, STAR enhances the value estimation with latent dynamics information. We theoretically show that the value function can still converge to the optima when involving additional representation inputs. On various challenging visual continuous control tasks from DeepMind Control Suite, STAR achieves significant improvements in sample efficiency compared to strong baseline algorithms.

尽管近年来视觉强化学习(RL)取得了令人瞩目的进展,但样本效率低下仍是一大挑战。许多现有方法都试图通过数据增强或引入一些辅助任务等技术从原始图像中提取更好的表征来解决这一问题。然而,这些方法忽略了蕴含在所收集的过渡信息中的环境动态信息,而这些信息对于高效控制至关重要。在本文中,我们介绍了 STAR:状态-动作表示学习,这是一种简单而有效的视觉连续控制方法。STAR 通过对潜在空间中的环境动态建模来学习联合状态-动作表示。通过将学习到的联合状态-动作表示纳入批评者,STAR 利用潜动态信息增强了值估计。我们从理论上证明,当涉及额外的表征输入时,值函数仍能收敛到最优值。在来自 DeepMind Control Suite 的各种具有挑战性的视觉连续控制任务中,STAR 与强大的基线算法相比,在采样效率方面取得了显著提高。
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引用次数: 0
DCMSL: Dual influenced community strength-boosted multi-scale graph contrastive learning DCMSL:双重影响社区强度增强多尺度图对比学习
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1016/j.knosys.2024.112472

Graph Contrastive Learning (GCL) effectively mitigates label dependency, defining positive and negative pairs for node embeddings. Nevertheless, most GCL methods, including those considering communities, overlooking the simultaneous influence of community and node—a crucial factor for accurate embeddings. In this paper, we propose Dual influenced Community Strength-boosted Multi-Scale Graph Contrastive Learning (DCMSL), concurrently considering community and node influence for comprehensive contrastive learning. Firstly, we define dual influenced community strength which can be adaptable to diverse datasets. Based on it, we define node cruciality to differentiate node importance. Secondly, two graph data augmentation methods, NCNAM and NCED, respectively, are put forward based on node cruciality, guiding graph augmentation to preserve more influential semantic information. Thirdly, a joint multi-scale graph contrastive scheme is raised to guide the graph encoder to learn data semantic information at two scales: (1) Propulsive force node-level graph contrastive learning—a node-level graph contrastive loss defining the force to push negative pairs in GCL farther away. (2) Community-level graph contrastive learning—enabling the graph encoder to learn from data on the community level, improving model performance. DCMSL achieves state-of-the-art results, demonstrating its effectiveness and versatility in two node-level tasks: node classification and node clustering and one edge-level task: link prediction. Our code is available at: https://github.com/HanChen-HUST/DCMSL.

图对比学习(GCL)能有效缓解标签依赖性,为节点嵌入定义正负对。然而,大多数 GCL 方法,包括那些考虑社群的方法,都忽略了社群和节点的同时影响--这是准确嵌入的关键因素。在本文中,我们提出了双重影响社区强度增强多尺度图对比学习(DCMSL),同时考虑社区和节点的影响,以实现全面的对比学习。首先,我们定义了可适应不同数据集的双重影响社区强度。在此基础上,我们定义了节点关键度来区分节点的重要性。其次,在节点关键度的基础上分别提出了 NCNAM 和 NCED 两种图数据扩增方法,指导图扩增保留更多有影响力的语义信息。第三,提出多尺度图对比联合方案,引导图编码器在两个尺度上学习数据语义信息:(1)推进力节点级图对比学习--节点级图对比损失定义了将 GCL 中负对推远的力。(2) 群落级图形对比学习--使图形编码器能够从群落级数据中学习,从而提高模型性能。DCMSL 取得了最先进的成果,在两个节点级任务(节点分类和节点聚类)和一个边缘级任务(链接预测)中展示了其有效性和多功能性。我们的代码可在以下网址获取:https://github.com/HanChen-HUST/DCMSL。
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引用次数: 0
HCUKE: A Hierarchical Context-aware approach for Unsupervised Keyphrase Extraction HCUKE:用于无监督关键词提取的层次化语境感知方法
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1016/j.knosys.2024.112511

Keyphrase Extraction (KE) aims to identify a concise set of words or phrases that effectively summarizes the core ideas of a document. Recent embedding-based models have achieved state-of-the-art performance by jointly modeling local and global contexts in Unsupervised Keyphrase Extraction (UKE). However, these models often ignore either sentence- or document-level contexts, leading directly to weak or incorrect global significance. Furthermore, they rely heavily on local significance, making them vulnerable to noisy data, particularly in long documents, resulting in unstable and suboptimal performance. Intuitively, hierarchical contexts enable a more accurate understanding of the candidates, thereby enhancing their global relevance. Inspired by this, we propose a novel Hierarchical Context-aware Unsupervised Keyphrase Extraction method called HCUKE. Specifically, HCUKE comprises three core modules: (i) a hierarchical context-based global significance measure module that incrementally learns global semantic information from a three-level hierarchical structure; (ii) a phrase-level local significance measure module that captures local semantic information by modeling the context interaction among candidates; and (iii) a candidate ranking module that integrates the measure scores with positional weights to compute a final ranking score. Extensive experiments on three benchmark datasets demonstrate that the proposed method significantly outperforms state-of-the-art baselines.

关键词提取(KE)旨在识别一组简洁的单词或短语,从而有效概括文档的核心思想。在无监督关键词提取(UKE)中,近期基于嵌入的模型通过对局部和全局上下文进行联合建模,取得了最先进的性能。然而,这些模型往往忽略了句子或文档级上下文,直接导致全局意义薄弱或不正确。此外,这些模型严重依赖局部意义,因此容易受到噪声数据的影响,尤其是在长文档中,从而导致性能不稳定和不理想。直观地说,分层上下文能够更准确地理解候选词,从而提高它们的全局相关性。受此启发,我们提出了一种名为 HCUKE 的新型分层上下文感知无监督关键词提取方法。具体来说,HCUKE 包括三个核心模块:(i) 基于分层上下文的全局意义度量模块,该模块从三级分层结构中逐步学习全局语义信息;(ii) 短语级局部意义度量模块,该模块通过对候选词之间的上下文交互建模来捕捉局部语义信息;(iii) 候选词排名模块,该模块将度量得分与位置权重相整合,从而计算出最终排名得分。在三个基准数据集上进行的广泛实验表明,所提出的方法明显优于最先进的基线方法。
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引用次数: 0
Locally differentially private graph learning on decentralized social graph 去中心化社交图谱上的局部差异化私有图谱学习
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1016/j.knosys.2024.112488

In recent years, decentralized social networks have gained increasing attention, where each client maintains a local view of a social graph. To provide services based on graph learning in such networks, the server commonly needs to collect the local views of the graph structure, which raises privacy issues. In this paper, we focus on learning graph neural networks (GNNs) on decentralized social graphs while satisfying local differential privacy (LDP). Most existing methods collect high-dimensional local views under LDP through Randomized Response, which introduces a large amount of noise and significantly decreases the usability of the collected graph structure for training GNNs. To address this problem, we present Structure Learning-based Locally Private Graph Learning (SL-LPGL). Its main idea is to first collect low-dimensional encoded structural information called cluster degree vectors to reduce the amount of LDP noise, then learn a high-dimensional graph structure from the cluster degree vectors via graph structure learning (GSL) to train GNNs. In SL-LPGL, we propose a Homophily-aware Graph StructurE Initialization (HAGEI) method to provide a low-noise initial graph structure as learning guidance for GSL. We then introduce an Estimated Average Degree Vector Enhanced Graph Structure Learning (EADEGSL) method to further mitigate the negative impact of LDP noise in GSL. We conduct experiments on four real-world graph datasets. The experimental results demonstrate that SL-LPGL outperforms the baselines.

近年来,分散式社交网络受到越来越多的关注,在这种网络中,每个客户端都维护着社交图的本地视图。要在此类网络中提供基于图学习的服务,服务器通常需要收集图结构的本地视图,这就会引发隐私问题。本文的重点是在分散社交图上学习图神经网络(GNN),同时满足本地差异隐私(LDP)。现有方法大多通过随机响应(Randomized Response)来收集 LDP 下的高维局部视图,这会引入大量噪声,大大降低收集到的图结构在训练 GNN 时的可用性。为了解决这个问题,我们提出了基于结构学习的局部私有图学习(SL-LPGL)。其主要思想是首先收集称为簇度向量的低维编码结构信息,以减少 LDP 噪音,然后通过图结构学习(GSL)从簇度向量中学习高维图结构,从而训练 GNN。在 SL-LPGL 中,我们提出了一种同源性感知图结构初始化(HAGEI)方法,以提供低噪声初始图结构,作为 GSL 的学习指导。然后,我们引入了估计平均度向量增强图结构学习(EADEGSL)方法,以进一步减轻 GSL 中 LDP 噪声的负面影响。我们在四个真实图数据集上进行了实验。实验结果表明,SL-LPGL 优于基线方法。
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引用次数: 0
Learning adaptive shift and task decoupling for discriminative one-step person search 学习自适应转移和任务解耦,实现分辨式一步人员搜索
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1016/j.knosys.2024.112483

Mainstream person search models aim to jointly optimize person detection and re-identification (ReID) in a one-step manner. Despite notable progress, existing one-step person search models still face three major challenges in extracting discriminative features: 1) incomplete feature extraction and fusion hinder the effective utilization of multiscale information, 2) the models struggle to capture critical features in complex occlusion scenarios, and 3) the optimization objectives of person detection and ReID are in conflict in the shared feature space. To address these issues, this study proposes a novel adaptive shift and task decoupling (ASTD) method that aims to enhance the accuracy and robustness of extracting discriminative features within the region of interest. In particular, we introduce a scale-aware transformer to handle scale/pose variations and occlusions. This transformer incorporates scale-aware modulation to enhance the utilization of multiscale information and adaptive shift augmentation to learn adaptation to occlusions dynamically. In addition, we design a task decoupling mechanism to hierarchically learn independent task representations using orthogonal loss to decouple two subtasks during training. Experimental results show that ASTD achieves state-of-the-art performance on the CUHK-SYSU and PRW datasets. Our code is accessible at https://github.com/zqx951102/ASTD.

主流的人员搜索模型旨在一步到位地联合优化人员检测和重新识别(ReID)。尽管取得了显著进展,但现有的一步式人员搜索模型在提取识别特征方面仍面临三大挑战:1) 不完整的特征提取和融合阻碍了多尺度信息的有效利用;2) 模型难以捕捉复杂遮挡场景中的关键特征;3) 在共享特征空间中,人员检测和 ReID 的优化目标存在冲突。为了解决这些问题,本研究提出了一种新颖的自适应偏移和任务解耦(ASTD)方法,旨在提高在感兴趣区域内提取判别特征的准确性和鲁棒性。特别是,我们引入了一种尺度感知变换器来处理尺度/姿态变化和遮挡。该转换器采用了尺度感知调制技术,以提高多尺度信息的利用率,并采用自适应移位增强技术,以动态学习对遮挡的适应。此外,我们还设计了一种任务解耦机制,在训练过程中利用正交损失解耦两个子任务,分层学习独立的任务表征。实验结果表明,ASTD 在 CUHK-SYSU 和 PRW 数据集上取得了最先进的性能。我们的代码可在 https://github.com/zqx951102/ASTD 上查阅。
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引用次数: 0
Structural graph federated learning: Exploiting high-dimensional information of statistical heterogeneity 结构图联合学习:利用统计异质性的高维信息
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1016/j.knosys.2024.112501

With the recent progress in graph-federated learning (GFL), it has demonstrated a promising performance in effectively addressing challenges associated with heterogeneous clients. Although the majority of advances in GFL have been focused on techniques for elucidating the intricate relationships among clients, existing GFL methods have two limitations. First, current methods comprising the use of low-dimensional graphs fail to accurately depict the associations between clients, thereby compromising the performance of GFL. Second, these methods may disclose additional information when sharing client-side hidden representations. This paper presents a structural GFL (SGFL) framework and a suite of novel optimization methods. SGFL addresses the limitations of existing GFL approaches with three original contributions. Firstly, our approach advocates the dynamic construction of federated learning (FL) graphs by leveraging the high-dimensional information inherent among clients, while enabling the discovery of hierarchical communities within clients. Secondly, we present SG-FedX, a novel federated stochastic gradient optimization algorithm that mitigates the effects of heterogeneity by intelligently using a global representation. Furthermore, SG-FedX introduces a strict sharing mechanism that protects client privacy more effectively by refraining from sharing client information beyond the model parameters. Our comparative evaluations, conducted against ten representative FL algorithms under challenging non-independently-and-identically-distributed settings, demonstrated the superior performance of SG-FedX. It was noted that, in the cross-dataset scenarios, SG-FedX outperformed the second-best baseline by 8.12% and 7.91% in personalization and generalization performance, respectively.

随着图联合学习(GFL)的最新进展,它在有效应对与异构客户端相关的挑战方面表现出了良好的性能。虽然 GFL 的大部分进展都集中在阐明客户间错综复杂关系的技术上,但现有的 GFL 方法有两个局限性。首先,目前包括使用低维图形的方法无法准确描述客户机之间的关联,从而影响了 GFL 的性能。其次,在共享客户端隐藏表示时,这些方法可能会泄露更多信息。本文提出了一种结构 GFL(SGFL)框架和一套新颖的优化方法。SGFL 通过三个原创性贡献解决了现有 GFL 方法的局限性。首先,我们的方法主张利用客户端之间固有的高维信息动态构建联合学习(FL)图,同时在客户端内部发现分层社区。其次,我们提出了一种新颖的联合随机梯度优化算法 SG-FedX,该算法通过智能地使用全局表示来减轻异质性的影响。此外,SG-FedX 还引入了严格的共享机制,通过避免共享模型参数以外的客户信息,更有效地保护客户隐私。我们在具有挑战性的非独立且相同分布的环境下,与十种具有代表性的 FL 算法进行了比较评估,结果表明 SG-FedX 性能优越。我们注意到,在跨数据集场景中,SG-FedX 的个性化和泛化性能分别比第二好的基线高出 8.12% 和 7.91%。
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引用次数: 0
Activation function optimization scheme for image classification 图像分类的激活函数优化方案
IF 8.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1016/j.knosys.2024.112502
Abdur Rahman, Lu He, Haifeng Wang
Activation function has a significant impact on the dynamics, convergence, and performance of deep neural networks. The search for a consistent and high-performing activation function has always been a pursuit during deep learning model development. Existing state-of-the-art activation functions are manually designed with human expertise except for Swish. Swish was developed using a reinforcement learning-based search strategy. In this study, we propose an evolutionary approach for optimizing activation functions specifically for image classification tasks, aiming to discover functions that outperform current state-of-the-art options. Through this optimization framework, we obtain a series of high-performing activation functions denoted as Exponential Error Linear Unit (EELU). The developed activation functions are evaluated for image classification tasks from two perspectives: (1) five state-of-the-art neural network architectures, such as ResNet50, AlexNet, VGG16, MobileNet, and Compact Convolutional Transformer, which cover computationally heavy to light neural networks, and (2) eight standard datasets, including CIFAR10, Imagenette, MNIST, Fashion MNIST, Beans, Colorectal Histology, CottonWeedID15, and TinyImageNet which cover from typical machine vision benchmark, agricultural image applications to medical image applications. Finally, we statistically investigate the generalization of the resultant activation functions developed through the optimization scheme. With a Friedman test, we conclude that the optimization scheme is able to generate activation functions that outperform the existing standard ones in 92.8% cases among 28 different cases studied, and xerf(ex) is found to be the best activation function for image classification generated by the optimization scheme.
激活函数对深度神经网络的动态性、收敛性和性能有重大影响。在深度学习模型的开发过程中,一直都在寻求一种稳定且高性能的激活函数。除 Swish 外,现有的最先进的激活函数都是由人工设计的。Swish 采用基于强化学习的搜索策略开发。在本研究中,我们提出了一种专门针对图像分类任务优化激活函数的进化方法,旨在发现优于当前最先进方案的函数。通过这种优化框架,我们获得了一系列高性能激活函数,并将其命名为指数误差线性单元(EELU)。我们从两个方面对所开发的激活函数进行了图像分类任务评估:(1) 五种最先进的神经网络架构,如 ResNet50、AlexNet、VGG16、MobileNet 和 Compact Convolutional Transformer,它们涵盖了从计算量大到计算量小的神经网络;(2) 八种标准数据集,包括 CIFAR10、Imagenette、MNIST、Fashion MNIST、Beans、Colorectal Histology、CottonWeedID15 和 TinyImageNet,它们涵盖了从典型的机器视觉基准、农业图像应用到医学图像应用。最后,我们对通过优化方案开发的激活函数的通用性进行了统计研究。通过 Friedman 检验,我们得出结论:在所研究的 28 个不同案例中,优化方案能够生成 92.8% 优于现有标准激活函数的激活函数,并且发现-x⋅erf(e-x) 是优化方案生成的用于图像分类的最佳激活函数。
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引用次数: 0
Dynamic preference inference network: Improving sample efficiency for multi-objective reinforcement learning by preference estimation 动态偏好推理网络:通过偏好估计提高多目标强化学习的样本效率
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1016/j.knosys.2024.112512

Multi-objective reinforcement learning (MORL) addresses the challenge of optimizing policies in environments with multiple conflicting objectives. Traditional approaches often rely on scalar utility functions, which require predefined preference weights, limiting their adaptability and efficiency. To overcome this, we propose the Dynamic Preference Inference Network (DPIN), a novel method designed to enhance sample efficiency by dynamically estimating the trajectory decision preference of the agent. DPIN leverages a neural network to predict the most favorable preference distribution for each trajectory, enabling more effective policy updates and improving overall performance in complex MORL tasks. Extensive experiments in various benchmark environments demonstrate that DPIN significantly outperforms existing state-of-the-art methods, achieving higher scalarized returns and hypervolume. Our findings highlight DPIN’s ability to adapt to varying preferences, reduce sample complexity, and provide robust solutions in multi-objective settings.

多目标强化学习(MORL)解决了在多个目标相互冲突的环境中优化策略的难题。传统方法通常依赖于标量效用函数,而标量效用函数需要预定义的偏好权重,这限制了它们的适应性和效率。为了克服这一问题,我们提出了动态偏好推理网络(DPIN),这是一种新颖的方法,旨在通过动态估计代理的轨迹决策偏好来提高采样效率。DPIN 利用神经网络预测每条轨迹最有利的偏好分布,从而实现更有效的策略更新,提高复杂 MORL 任务的整体性能。在各种基准环境中进行的广泛实验表明,DPIN 的性能明显优于现有的最先进方法,实现了更高的标量收益和超体积。我们的研究结果凸显了 DPIN 在多目标设置中适应不同偏好、降低样本复杂度和提供稳健解决方案的能力。
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引用次数: 0
ACFL: Communication-Efficient adversarial contrastive federated learning for medical image segmentation ACFL:用于医学图像分割的通信高效对抗联合学习
IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1016/j.knosys.2024.112516

Federated learning is a popular machine learning paradigm that achieves decentralized model training on distributed devices, ensuring data decentralization, privacy protection, and enhanced overall learning effectiveness. However, the non-independence and identically distributed (i.e., non-IID) nature of medical data across different institutes has remained a significant challenge in federated learning. Current research has mainly focused on addressing label distribution skew and classification scenarios, overlooking the feature distribution skew settings and more challenging semantic segmentation scenarios. In this paper, we present communication-efficient Adversarial Contrastive Federated Learning (ACFL) for the prevalent feature distribution skew scenarios in medical semantic segmentation. The core idea of the approach is to enhance model generalization by learning each client’s domain-invariant features through adversarial training. Specifically, we introduce a global discriminator that, through contrastive learning in the server, trains to differentiate feature representations from various clients. Meanwhile, the clients learn common domain-invariant features through prototype contrastive learning and global discriminator training. Furthermore, by utilizing Gaussian mixture models for virtual feature sampling on the server, compared to transmitting raw features, the ACFL method possesses the additional advantages of efficient communication and privacy protection. Extensive experiments on two medical semantic segmentation datasets and extension on three classification datasets validated the superiority of the proposed method.

联盟学习是一种流行的机器学习范式,它能在分布式设备上实现分散的模型训练,确保数据分散、隐私保护并提高整体学习效率。然而,不同机构间医疗数据的非独立性和同分布(即非 IID)特性一直是联盟学习面临的重大挑战。目前的研究主要集中在解决标签分布倾斜和分类场景,忽略了特征分布倾斜设置和更具挑战性的语义分割场景。在本文中,我们针对医学语义分割中普遍存在的特征分布倾斜场景,提出了具有通信效率的对抗式联合学习(ACFL)。该方法的核心思想是通过对抗训练学习每个客户的领域不变特征,从而增强模型的泛化能力。具体来说,我们引入了一个全局鉴别器,通过服务器中的对比学习,训练鉴别来自不同客户端的特征表征。同时,客户端通过原型对比学习和全局判别器训练来学习共同的领域不变特征。此外,通过在服务器上利用高斯混合模型进行虚拟特征采样,与传输原始特征相比,ACFL 方法还具有高效通信和隐私保护的额外优势。在两个医学语义分割数据集上的广泛实验以及在三个分类数据集上的扩展验证了所提方法的优越性。
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