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Efficient Graph Representation With Anchor-Graph Transformer
Pub Date : 2025-06-30 DOI: 10.1109/TAI.2025.3584288
Ziyan Zhang;Fei Xu;Bo Jiang;Jin Tang
To alleviate the local receptive issue of graph convolutional network (GCN), transformers have been exploited to capture the long-range dependence of nodes for graph data representation and learning. However, existing graph transformers generally employ a regular self-attention module for all node-to-node message passing, which needs to learn the affinities/relationships between all node’s pairs, leading to high computational cost issue. Also, they are usually sensitive to graph noises. To overcome this issue, we propose a novel graph transformer architecture, termed anchor graph transformer (AGFormer), by leveraging an anchor graph model. To be specific, AGFormer first obtains some representative anchors and then converts node-to-node message passing into anchor-to-anchor and anchor-to-node message passing processes. Thus, AGFormer performs much more efficiently and also robustly than regular node-to-node transformers. Extensive experiments on several benchmark datasets demonstrate the benefits of the proposed AGFormer. Specifically, when the number of graph nodes reaches 15 000, AGFormer achieves a training speed that is three times faster than that of GraphTrans. Furthermore, AGFormers perform more robustly on the noised NCI109 dataset compared to GraphTrans.
为了缓解图卷积网络(GCN)的局部接受问题,利用变压器捕获节点的远程依赖关系,用于图数据的表示和学习。然而,现有的图转换器一般采用规则的自关注模块进行所有节点到节点的消息传递,需要学习所有节点对之间的亲和力/关系,导致计算成本高的问题。此外,它们通常对图形噪声很敏感。为了克服这个问题,我们提出了一种新的图转换器架构,称为锚图转换器(AGFormer),利用锚图模型。具体来说,AGFormer首先获取一些具有代表性的锚点,然后将节点到节点的消息传递过程转换为锚点到锚点和锚点到节点的消息传递过程。因此,AGFormer比常规的节点到节点变压器更有效、更健壮。在几个基准数据集上的大量实验证明了所提出的AGFormer的优点。具体来说,当图节点数达到1.5万个时,AGFormer的训练速度比GraphTrans快3倍。此外,与GraphTrans相比,AGFormers在带噪的NCI109数据集上表现得更加稳健。
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引用次数: 0
NeuroCrypt: A Neuro Symbolic AI Ecosystem for Advanced Cryptographic Data Security and Transmission NeuroCrypt:用于高级加密数据安全和传输的神经符号AI生态系统
Pub Date : 2025-06-12 DOI: 10.1109/TAI.2025.3577605
Tanish Singh Rajpal;Akshit Naithani
In response to the critical vulnerabilities exposed by quantum computing and AI-driven cryptanalysis in traditional encryption systems, this article introduces NeuroCrypt—a neuro-symbolic AI framework that synergizes adaptive cryptography, decentralized governance, and postquantum security. NeuroCrypt employs three AI groups: CryptAI (multialgorithm encryption), GenAI (neuro-symbolic algorithm synthesis), and TestAI (adversarial validation), to dynamically generate and deploy quantum-resistant cryptographic techniques. The framework uniquely combines five-layer encryption (randomly ordered classical and AI-generated algorithms, e.g., lattice–chaotic hybrids) with metadata-driven security, where encrypted logic is distributed via Shamir’s secret sharing (SSS) over VPNs, eliminating key-exchange dependencies. A permissioned blockchain enforces tamper-proof updates validated by TestAI consensus ($n/2 + 1$ threshold), while dynamic threshold adaptation adjusts SSS shard requirements based on real-time threat levels. Evaluations demonstrate NeuroCrypt’s superiority: 2.3$times$ higher entropy than AES-256, 94.3% shard survival under 30% compromise, and 220 ms encryption latency for 1 MB data on edge devices. The system’s lattice-based encryption (1024-dimensional) and frequent AI-driven updates resist Shor/Grover attacks, validated through simulated quantum oracles achieving $mathcal{O}(10^{38})$ operations for 256-bit keys. Compliance with GDPR, NIST PQC, and FIPS 140-2 ensures readiness for healthcare, fintech, and government applications. NeuroCrypt’s architecture—backward-compatible with legacy systems and optimized for IoT/cloud ecosystems—sets a precedent for self-evolving security, offering a 15% storage overhead trade-off for metadata-driven keyless decryption. Future work will optimize edge-device performance and integrate 6G network protocols, establishing NeuroCrypt as a foundational framework for postquantum cybersecurity.
为了应对量子计算和人工智能驱动的密码分析在传统加密系统中暴露的关键漏洞,本文介绍了神经密码——一种神经符号人工智能框架,可协同自适应密码学、分散治理和后量子安全。NeuroCrypt采用三个AI组:CryptAI(多算法加密),GenAI(神经符号算法合成)和TestAI(对抗验证),来动态生成和部署抗量子加密技术。该框架独特地将五层加密(随机排序的经典算法和人工智能生成的算法,例如,格混沌混合算法)与元数据驱动的安全性相结合,其中加密逻辑通过vpn上的Shamir秘密共享(SSS)分发,消除了密钥交换依赖。允许的区块链执行由testi共识验证的防篡改更新($n/2 + 1$阈值),而动态阈值适应根据实时威胁级别调整SSS分片要求。评估证明了NeuroCrypt的优势:熵值比AES-256高2.3倍,在30%的妥协下分片存活率为94.3%,边缘设备上1mb数据的加密延迟为220毫秒。该系统基于格子的加密(1024维)和频繁的人工智能驱动的更新抵御Shor/Grover攻击,通过模拟量子预言机验证,实现256位密钥的$mathcal{O}(10^{38})$操作。符合GDPR、NIST PQC和FIPS 140-2,确保为医疗保健、金融科技和政府应用做好准备。NeuroCrypt的架构与传统系统向后兼容,并针对物联网/云生态系统进行了优化,开创了自进化安全性的先例,为元数据驱动的无密钥解密提供了15%的存储开销。未来的工作将优化边缘设备性能并集成6G网络协议,将NeuroCrypt建立为后量子网络安全的基础框架。
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引用次数: 0
Exploring Topic Trends in COVID-19 Research Literature Using Nonnegative Matrix Factorization 利用非负矩阵分解法探索COVID-19研究文献的主题趋势
Pub Date : 2025-06-12 DOI: 10.1109/TAI.2025.3579459
Divya Patel;Vansh Parikh;Om Patel;Agam Shah;Bhaskar Chaudhury
In this work, we apply topic modeling using nonnegative matrix factorization (NMF) on the COVID-19 open research dataset (CORD-19) to uncover the underlying thematic structure and its evolution within the extensive body of COVID-19 research literature. NMF factorizes the document-term matrix into two nonnegative matrices, effectively representing the topics and their distribution across the documents. This helps us to see how strongly documents relate to topics and how topics relate to words. We describe the complete methodology, which involves a series of rigorous preprocessing steps to standardize the available text data while preserving the context of phrases and subsequently feature extraction using the term frequency-inverse document frequency (tf-idf), which assigns weights to words based on their frequency and rarity in the dataset. To ensure the robustness of our topic model, we conduct a stability analysis. This process assesses the stability scores of the NMF topic model for different numbers of topics, enabling us to select the optimal number of topics for our analysis. Through our analysis, we track the evolution of topics over time within the CORD-19 dataset. Our findings contribute to the understanding of the knowledge structure of the COVID-19 research landscape, providing a valuable resource for future research in this field.
在这项工作中,我们使用非负矩阵分解(NMF)对COVID-19开放研究数据集(CORD-19)进行主题建模,以揭示COVID-19研究文献中潜在的主题结构及其演变。NMF将文档术语矩阵分解为两个非负矩阵,有效地表示主题及其在文档中的分布。这有助于我们了解文档与主题的关联程度,以及主题与单词的关联程度。我们描述了完整的方法,其中包括一系列严格的预处理步骤,以标准化可用的文本数据,同时保留短语的上下文,随后使用术语频率逆文档频率(tf-idf)进行特征提取,该方法根据单词在数据集中的频率和罕见度为单词分配权重。为了保证主题模型的稳健性,我们进行了稳定性分析。这个过程对不同数量的主题评估NMF主题模型的稳定性分数,使我们能够选择最优数量的主题进行分析。通过我们的分析,我们在CORD-19数据集中跟踪主题随时间的演变。我们的发现有助于理解COVID-19研究格局的知识结构,为该领域的未来研究提供宝贵的资源。
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引用次数: 0
DIFF-FECG: A Conditional Diffusion-Based Method for Fetal ECG Extraction From Abdominal ECG DIFF-FECG:一种基于条件扩散的胎儿心电图提取方法
Pub Date : 2025-06-10 DOI: 10.1109/TAI.2025.3578007
Zhenqin Chen;Yiwei Lin;Qiong Luo;Jinshan Xu
Fetal electrocardiography (FECG) is a crucial tool for assessing fetal cardiac health and pregnancy status. Direct invasive FECG provides reliable fetal heart rate signals, but poses risks and is limited to use during labor. Conversely, non-invasive monitoring of the fetal heart is possible via abdominal electrocardiography (AECG), which detects fetal heart waveforms using electrodes positioned on the mother’s abdomen. However, this method is often subject to interference from maternal cardiac activity and other external sources. To address this issue, we propose a novel diffusion method, DIFF-FECG, aimed at improving the extraction of FECG signals from AECG recordings. This method leverages a condition-driven diffusion process to learn specific conditional probability distributions, enabling the effective separation of high-quality FECG signals from noisy AECG data. By adaptively managing the inherent non-Gaussian noise characteristics of MECG within the AECG, DIFF-FECG achieves more effective FECG reconstruction. Furthermore, the quality of the generated FECG signals is also enhanced by adding reconstruction loss and multiple reconstructions. Experimental results on two public databases demonstrate that the proposed DIFF-FECG method yields satisfactory results, with an average Pearson correlation coefficient of 0.922 for the estimated FECG. These findings underscore the potential of diffusion probabilistic models in advancing FECG signal extraction techniques, thereby contributing to improved fetal health monitoring.
胎儿心电图(FECG)是评估胎儿心脏健康和妊娠状态的重要工具。直接侵入性超声心动图提供可靠的胎儿心率信号,但存在风险,并限制在分娩期间使用。相反,通过腹部心电图(AECG)对胎儿心脏进行无创监测是可能的,腹部心电图使用放置在母亲腹部的电极检测胎儿心脏波形。然而,这种方法经常受到母亲心脏活动和其他外部来源的干扰。为了解决这个问题,我们提出了一种新的扩散方法,DIFF-FECG,旨在改进从AECG记录中提取FECG信号的方法。该方法利用条件驱动的扩散过程来学习特定的条件概率分布,从而能够有效地从噪声AECG数据中分离出高质量的FECG信号。DIFF-FECG通过自适应地处理AECG中meg固有的非高斯噪声特性,实现了更有效的feg重建。此外,通过增加重构损失和多次重构,提高了生成的FECG信号的质量。在两个公共数据库上的实验结果表明,所提出的DIFF-FECG方法取得了令人满意的结果,估计的FECG的平均Pearson相关系数为0.922。这些发现强调了扩散概率模型在推进FECG信号提取技术方面的潜力,从而有助于改善胎儿健康监测。
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引用次数: 0
Successive Halving Based Online Ensemble Selection for Concept-Drift Adaptation 基于连续减半的概念漂移自适应在线集成选择
Pub Date : 2025-06-10 DOI: 10.1109/TAI.2025.3578305
Jobin Wilson;Santanu Chaudhury;Brejesh Lall
Ensemble learning is one of the most successful approaches for concept-drift adaptation due to its versatility and high predictive performance. However, a practical challenge in using ensembles for high-speed data stream mining is the associated large computational cost. In this article, we introduce a computationally efficient heterogeneous ensemble classifier named successive halving ensemble (SUHEN) which adapts to concept-drift using online ensemble selection. We model ensemble selection as a fixed budget best arm identification bandit problem and solve it using successive halving algorithm (SHA). SUHEN identifies a single best performing member for a stream segment and utilizes it for training and prediction until a drift is detected. Upon detecting drift, SHA identifies the new best performer for the segment. As stream characteristics evolve, manually choosing a fixed SHA budget would be challenging. To this end, we extend SUHEN by posing budget selection as a hyperparameter tuning problem and solve it using meta-learning. Our evaluation on 20 benchmark datasets reveal that SUHEN provides accuracy statistically at par with state-of-the-art ensemble algorithms, while providing significant computational resource savings. This makes our proposal attractive for high-speed stream mining problems in resource-constrained settings.
集成学习由于其通用性和较高的预测性能,是最成功的概念漂移自适应方法之一。然而,使用集成进行高速数据流挖掘的一个实际挑战是相关的大量计算成本。本文介绍了一种计算效率高的异构集成分类器,即连续减半集成(SUHEN),它采用在线集成选择来适应概念漂移。我们将集成选择建模为一个固定预算的最佳武器识别问题,并使用连续减半算法(SHA)来解决它。SUHEN为流段识别一个表现最好的成员,并利用它进行训练和预测,直到检测到漂移。在检测到漂移后,SHA为该段识别新的最佳性能。随着流特征的演变,手动选择固定的SHA预算将具有挑战性。为此,我们通过将预算选择作为一个超参数调优问题来扩展SUHEN,并使用元学习来解决它。我们对20个基准数据集的评估表明,SUHEN在统计上的准确性与最先进的集成算法相当,同时节省了大量的计算资源。这使得我们的建议对资源受限环境下的高速流采矿问题具有吸引力。
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引用次数: 0
Event-Triggered Quantization-Based Predefined-Time Adaptive Fuzzy Control for Quadrotor Trajectory Tracking 基于事件触发量化的四旋翼飞行器轨迹跟踪自适应模糊控制
Pub Date : 2025-06-10 DOI: 10.1109/TAI.2025.3578011
Zhimin Zhou;Lin Zhao
In this letter, a predefined-time adaptive fuzzy trajectory tracking control based on an event-triggered quantization framework is proposed for a quadrotor with inertial uncertainty, full-state constraints, and actuator saturation. First, a double-threshold event-triggered quantization mechanism is proposed to adaptively adjust the discretization degree of the control signals, reducing the communication burden while balancing the control accuracy. Subsequently, the computational complexity and filter error problems are solved by constructing the command filter and filter error compensation mechanism. The unknown nonlinear dynamics of the quadrotor are handled through the approximation capability of an adaptive fuzzy logic system. In addition, an auxiliary signal and a smooth approximation function are combined to cope with actuator saturation. Using Lyapunov theory, the predefined-time stability of the system under full-state constraints is proven. Finally, the validity and superiority of the proposed algorithm have been verified through the simulation example.
针对具有惯性不确定性、全状态约束和执行器饱和的四旋翼飞行器,提出了一种基于事件触发量化框架的预定义时间自适应模糊轨迹跟踪控制方法。首先,提出一种双阈值事件触发量化机制,自适应调整控制信号的离散化程度,在平衡控制精度的同时减少通信负担;随后,通过构建命令滤波器和滤波误差补偿机制,解决了计算复杂度和滤波误差问题。利用自适应模糊逻辑系统的逼近能力处理未知的非线性动力学问题。此外,将辅助信号和光滑逼近函数相结合,以应对执行器饱和。利用李雅普诺夫理论,证明了系统在全状态约束下的预定义时间稳定性。最后,通过仿真算例验证了所提算法的有效性和优越性。
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引用次数: 0
Using Adversarial Training to Improve Uncertainty Quantification 利用对抗训练提高不确定性量化
Pub Date : 2025-06-10 DOI: 10.1109/TAI.2025.3578004
Kuan Huang;Meng Xu;Yingfeng Wang
The success of adversarial attack methods suggests a small input change may mislead a trained machine-learning model. For example, changing one pixel of an image may cause the trained model to misclassify this updated image. Uncertainty quantification is crucial for detecting misclassifications; hence, precise uncertainty quantification, meaning uncertainty estimates that closely align with prediction correctness, is essential. We assume that misclassified samples should exhibit high uncertainty while correctly classified samples should exhibit low uncertainty. To evaluate the performance of uncertainty quantification, we investigate the task of uncertainty-based misclassification detection under adversarial attack conditions. Our findings suggest that existing uncertainty quantification methods are unable to accurately identify misclassified predictions resulting from adversarial attacks due to training issues. We propose a simple adversarial training strategy for improving uncertainty quantification. Our results show that adversarial training improves the reliability of uncertainty quantification by better aligning uncertainty with prediction correctness. Specifically, we observe consistent improvements in misclassification detection performance, measured by AUC-ROC and AUC-PR, across clean and adversarial samples.
对抗性攻击方法的成功表明,一个小的输入变化可能会误导一个训练有素的机器学习模型。例如,改变图像的一个像素可能会导致训练模型对更新后的图像进行错误分类。不确定度量化是检测错误分类的关键;因此,精确的不确定性量化,即与预测正确性密切相关的不确定性估计,是必不可少的。我们假设错误分类的样本应该表现出高不确定性,而正确分类的样本应该表现出低不确定性。为了评估不确定性量化的性能,我们研究了对抗性攻击条件下基于不确定性的误分类检测任务。我们的研究结果表明,由于训练问题,现有的不确定性量化方法无法准确识别由对抗性攻击导致的错误分类预测。我们提出了一种简单的对抗训练策略来改进不确定性量化。我们的研究结果表明,对抗训练通过更好地将不确定性与预测正确性结合起来,提高了不确定性量化的可靠性。具体来说,我们观察到在干净和对抗样本中,通过AUC-ROC和AUC-PR测量的错误分类检测性能的一致性改进。
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引用次数: 0
Deep Variational Autoencoder-Based Parameter Learning of Bayesian Network With Multiple Latent Variables 基于深度变分自编码器的多隐变量贝叶斯网络参数学习
Pub Date : 2025-06-06 DOI: 10.1109/TAI.2025.3577601
Xinran Wu;Kun Yue;Liang Duan;Hongbo Xie;Huashuai Liu
Intelligent systems could be increasingly powerful by applying probabilistic inferences over the dependence relations among observed and latent variables, which could be represented by the Bayesian network (BN) with multiple latent (BNML) variables. As the critical task in BNML construction, parameter learning is fulfilled by extending the classic EM algorithm in most of the existing methods, but the time complexity is exponential to the number of latent variables. To address this issue, we first propose to reduce the number of latent variables by training a vector quantized variational autoencoder (VQVAE). Specifically, we incorporate the initial probability parameters in conditional probability tables (CPTs) of BNML as the regularization term of VQVAE to guarantee that the probability parameters after reduction are similar (i.e., consistent) to those before reduction. Then, we incorporate efficient gradient calculations to augment the EM algorithm and propose the efficient algorithm for parameter learning of the BN with reduced latent (BNRL) variables. Finally, we present the efficient method for probabilistic inferences in BNRL by encoding evidence variable, decoding query variables and updating query variable values via backpropagation. Experimental results on real and synthetic BNs demonstrate that our method outperforms the state-of-the-art methods on efficiency and effectiveness.
通过对观测变量和潜在变量之间的依赖关系进行概率推理,智能系统可以变得越来越强大,这种推理可以用具有多个潜在变量的贝叶斯网络(BN)来表示。参数学习是构造BNML的关键任务,现有的大多数方法都是通过扩展经典的EM算法来完成参数学习,但时间复杂度与潜在变量的数量呈指数关系。为了解决这个问题,我们首先提出通过训练矢量量化变分自编码器(VQVAE)来减少潜在变量的数量。具体而言,我们将BNML条件概率表(CPTs)中的初始概率参数作为VQVAE的正则化项,以保证约简后的概率参数与约简前的概率参数相似(即一致)。然后,我们结合有效的梯度计算来增强EM算法,并提出了具有减少潜在变量(BNRL)的BN参数学习的有效算法。最后,通过对证据变量进行编码,对查询变量进行解码,并通过反向传播对查询变量值进行更新,提出了一种有效的BNRL概率推理方法。实验结果表明,我们的方法在效率和有效性上都优于目前最先进的方法。
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引用次数: 0
Contrastive Learning Based Collaborative Modeling of Heterogeneous Data for Few-Shot Fault Diagnosis 基于对比学习的异构数据协同建模在小故障诊断中的应用
Pub Date : 2025-06-06 DOI: 10.1109/TAI.2025.3577119
Kai Zhong;Hengchang Zhu;Xiaoming Zhang;Darong Huang;Min Han
Few-shot diagnosis has received extensive attention recently. Existing methods rarely consider the consistency within and between heterogeneous data, leading to suboptimal diagnosis performance. To address this issue, a contrastive learning based collaborative modeling for few-shot diagnosis is proposed. First of all, a heterogeneous data enhancement workflows with distribution consistency assessment is designed to acquire sufficient industrial process information, which can also mitigate the inconsistency between enhanced data and original data. Following this, convolutional networks with customized structures are used to extract the multimodal features from heterogeneous signals. After that, the collaborative modeling and diagnosis module is devised through the joint optimization of contrastive loss and cross entropy loss, which can shorten the distance of similar samples in feature space and retain cross structure consistency. Finally, the effectiveness and superiority of the proposed method are substantiated through simulated and the real world cases.
近年来,少针诊断受到了广泛的关注。现有方法很少考虑异构数据内部和异构数据之间的一致性,导致诊断性能欠佳。为了解决这一问题,提出了一种基于对比学习的小镜头诊断协同建模方法。首先,设计了一个具有分布一致性评估的异构数据增强工作流,以获取足够的工业过程信息,并减轻增强数据与原始数据之间的不一致性。然后,使用自定义结构的卷积网络从异构信号中提取多模态特征。然后,通过对比损失和交叉熵损失的联合优化设计协同建模与诊断模块,缩短相似样本在特征空间中的距离,保持交叉结构的一致性。最后,通过仿真和实际案例验证了所提方法的有效性和优越性。
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引用次数: 0
FG-KD: A Novel Forward Gradient-Based Framework for Teacher Knowledge Augmentation FG-KD:一种新的基于正向梯度的教师知识增强框架
Pub Date : 2025-06-04 DOI: 10.1109/TAI.2025.3576087
Yang Yang;Chao Wang;Lei Gong;Min Wu;Zhenghua Chen;Xuehai Zhou
Knowledge distillation has become increasingly popular for training compact neural network models that can achieve comparable performance to larger models. In order to improve the effectiveness of knowledge distillation, enhancing the quality of the teacher knowledge is a crucial aspect to consider. While existing efforts have predominantly focused on optimizing the structure of teacher models and refining training procedures, we argue that there is untapped potential in further enhancing knowledge distillation through the augmentation of the teacher knowledge itself. In this article, we introduce FG-KD, a novel forward gradient-based framework specifically designed for augmenting teacher knowledge in knowledge distillation. FG-KD comprises two fundamental components: a feature reconstructor and a relation-aware enhancer. Both components employ a forward gradient-based approach to unlock the latent potential for enhancing teachers’ knowledge, thereby providing an enriched foundation for knowledge distillation. The feature reconstructor operates at the feature level, enabling the optimization of the teacher knowledge by enhancing the encoding of high-dimensional spaces. On the other hand, the relation-aware enhancer operates at the logit level, with a focus on identifying and reinforcing the interclass and intraclass relationships within the teacher knowledge. Through extensive experiments conducted on image recognition tasks, we demonstrate the effectiveness of FG-KD in improving the performance of various knowledge distillation techniques, regardless of the specific teacher–student model combinations.
知识蒸馏在训练紧凑的神经网络模型方面变得越来越流行,这些模型可以达到与大型模型相当的性能。为了提高知识蒸馏的有效性,提高教师知识的质量是必须考虑的一个重要方面。虽然现有的努力主要集中在优化教师模型结构和完善培训程序上,但我们认为,通过增加教师知识本身,进一步提高知识蒸馏的潜力尚未开发。本文介绍了一种新的基于正向梯度的框架FG-KD,该框架专门用于在知识蒸馏中增强教师知识。FG-KD包括两个基本组件:特征重构器和关系感知增强器。这两个组件都采用了基于正向梯度的方法来释放教师知识提升的潜在潜力,从而为知识升华提供了丰富的基础。特征重构器在特征层进行操作,通过增强高维空间的编码,实现对教师知识的优化。另一方面,关系意识增强者在逻辑层面上运作,重点是识别和加强教师知识中的班级间和班级内关系。通过对图像识别任务进行的大量实验,我们证明了FG-KD在提高各种知识蒸馏技术性能方面的有效性,而不考虑具体的师生模型组合。
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引用次数: 0
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IEEE transactions on artificial intelligence
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