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Explainable exercise recommendation with knowledge graph. 利用知识图谱提出可解释的练习建议。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-12-05 DOI: 10.1016/j.neunet.2024.106954
Quanlong Guan, Xinghe Cheng, Fang Xiao, Zhuzhou Li, Chaobo He, Liangda Fang, Guanliang Chen, Zhiguo Gong, Weiqi Luo

Recommending suitable exercises and providing the reasons for these recommendations is a highly valuable task, as it can significantly improve students' learning efficiency. Nevertheless, the extensive range of exercise resources and the diverse learning capacities of students present a notable difficulty in recommending exercises. Collaborative filtering approaches frequently have difficulties in recommending suitable exercises, whereas deep learning methods lack explanation, which restricts their practical use. To address these issue, this paper proposes KG4EER, an explainable exercise recommendation with a knowledge graph. KG4EER facilitates the matching of various students with suitable exercises and offers explanations for its recommendations. More precisely, a feature extraction module is introduced to represent students' learning features, and a knowledge graph is constructed to recommend exercises. This knowledge graph, which includes three primary entities - knowledge concepts, students, and exercises - and their interrelationships, serves to recommend suitable exercises. Extensive experiments conducted on three real-world datasets, coupled with expert interviews, establish the superiority of KG4EER over existing baseline methods and underscore its robust explainability.

推荐合适的练习并说明推荐理由是一项非常有价值的工作,因为它可以显著提高学生的学习效率。然而,练习资源的广泛性和学生学习能力的多样性给推荐练习带来了明显的困难。协作过滤方法经常难以推荐合适的练习,而深度学习方法则缺乏解释,这限制了其实际应用。针对这些问题,本文提出了一种可解释的知识图谱练习推荐方法--KG4EER。KG4EER便于为不同学生匹配合适的练习,并为其推荐提供解释。更确切地说,本文引入了一个特征提取模块来表示学生的学习特征,并构建了一个知识图谱来推荐练习。该知识图谱包括三个主要实体--知识概念、学生和练习--以及它们之间的相互关系,用于推荐合适的练习。在三个真实世界数据集上进行的广泛实验以及专家访谈证明了 KG4EER 优于现有的基线方法,并强调了其强大的可解释性。
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引用次数: 0
Self-distillation improves self-supervised learning for DNA sequence inference. 自蒸馏改进了DNA序列推断的自监督学习。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-12-07 DOI: 10.1016/j.neunet.2024.106978
Tong Yu, Lei Cheng, Ruslan Khalitov, Erland B Olsson, Zhirong Yang

Self-supervised Learning (SSL) has been recognized as a method to enhance prediction accuracy in various downstream tasks. However, its efficacy for DNA sequences remains somewhat constrained. This limitation stems primarily from the fact that most existing SSL approaches in genomics focus on masked language modeling of individual sequences, neglecting the crucial aspect of encoding statistics across multiple sequences. To overcome this challenge, we introduce an innovative deep neural network model, which incorporates collaborative learning between a 'student' and a 'teacher' subnetwork. In this model, the student subnetwork employs masked learning on nucleotides and progressively adapts its parameters to the teacher subnetwork through an exponential moving average approach. Concurrently, both subnetworks engage in contrastive learning, deriving insights from two augmented representations of the input sequences. This self-distillation process enables our model to effectively assimilate both contextual information from individual sequences and distributional data across the sequence population. We validated our approach with preliminary pretraining using the human reference genome, followed by applying it to 20 downstream inference tasks. The empirical results from these experiments demonstrate that our novel method significantly boosts inference performance across the majority of these tasks. Our code is available at https://github.com/wiedersehne/FinDNA.

自我监督学习(SSL)被认为是提高各种下游任务预测准确性的一种方法。然而,它在 DNA 序列方面的功效仍受到一定限制。这种局限性主要源于基因组学中现有的 SSL 方法大多侧重于单个序列的遮蔽语言建模,而忽略了多个序列的编码统计这一关键环节。为了克服这一挑战,我们引入了一种创新的深度神经网络模型,其中包含了 "学生 "子网络和 "教师 "子网络之间的协作学习。在该模型中,学生子网络对核苷酸进行掩码学习,并通过指数移动平均法逐步调整其参数,使之适应教师子网络。同时,两个子网络进行对比学习,从输入序列的两个增强表征中获得启示。这种自我修正过程使我们的模型能够有效吸收来自单个序列的上下文信息和整个序列群的分布数据。我们利用人类参考基因组进行了初步预训练,并将其应用于 20 项下游推断任务,从而验证了我们的方法。这些实验的经验结果表明,我们的新方法显著提高了大多数推断任务的推断性能。我们的代码见 https://github.com/wiedersehne/FinDNA。
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引用次数: 0
Roughness prediction of asphalt pavement using FGM(1,1-sin) model optimized by swarm intelligence and Markov chain. 利用蜂群智能和马尔科夫链优化的 FGM(1,1-sin)模型预测沥青路面的粗糙度。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-12-05 DOI: 10.1016/j.neunet.2024.107000
Zhuoxuan Li, Jinde Cao, Hairuo Shi, Xinli Shi, Tao Ma, Wei Huang

The road traffic volumes are constantly increasing worldwide, leading to significant challenges in maintaining asphalt pavements. Vehicular loads and environmental changes impact asphalt pavements, necessitating suitable predictive models. The International Roughness Index (IRI), a key indicator of road smoothness, requires IRI prediction models for performance analysis. Using the fractional accumulation operator and sine term can improve the traditional grey model's low prediction accuracy. Then, the chaotic adaptive whale optimization algorithm and Markov chain are used to optimize the model. Based on the different asphalt pavement structures used by RIOHtrack as data for the experiments, the average RMSE, MAE, and MAPE reached 0.025, 0.020, and 1.392%, respectively. Compared with other grey models, it performs better in IRI multi-step prediction. Particularly, the proposed model can achieve compelling predictions in a small sample size only through the changes in IRI itself, which helps to evaluate road conditions and design maintenance plans.

全球道路交通量不断增加,给沥青路面的维护带来了巨大挑战。车辆荷载和环境变化都会对沥青路面产生影响,因此需要合适的预测模型。国际粗糙度指数(IRI)是衡量路面平整度的关键指标,因此需要建立 IRI 预测模型来进行性能分析。使用分数累加算子和正弦项可以改善传统灰色模型预测精度低的问题。然后,利用混沌自适应鲸鱼优化算法和马尔可夫链对模型进行优化。基于 RIOHtrack 使用的不同沥青路面结构作为实验数据,平均 RMSE、MAE 和 MAPE 分别达到 0.025%、0.020% 和 1.392%。与其他灰色模型相比,该模型在 IRI 多步预测中表现更好。特别是,所提出的模型仅通过 IRI 本身的变化就能在较小样本量下实现令人信服的预测,这有助于评估道路状况和设计维护计划。
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引用次数: 0
LCFFNet: A Lightweight Cross-scale Feature Fusion Network for human pose estimation. LCFFNet:一种用于人体姿态估计的轻量级跨尺度特征融合网络。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-12-04 DOI: 10.1016/j.neunet.2024.106959
Xuelian Zou, Xiaojun Bi

Human pose estimation is one of the most critical and challenging problems in computer vision. It is applied in many computer vision fields and has important research significance. However, it is still a difficult challenge to strike a balance between the number of parameters and computing load of the model and the accuracy of human pose estimation. In this study, we suggest a Lightweight Cross-scale Feature Fusion Network (LCFFNet) to strike a balance between accuracy and computational load and parameter volume. The Lightweight HRNet-Like (LHRNet) network, Cross-Resolution-Aware Semantics Module (CRASM), and Adapt Feature Fusion Module (AFFM) make up LCFFNet. To be more precise, first, we suggest a lightweight LHRNet network that includes Dynamic Multi-scale Convolution Basic (DMSC-Basic block) block, Basic block, and DMSC-Basic block submodules in the network's three high-resolution subnetwork stages. The proposed dynamic multi-scale convolution in DMSC-Basic block can reduces the amount of model parameters and complexity of the LHRNet network, and has the ability to extract variable pose features. In order to maintain the model's ability to express features, the Basic block is introduced. As a result, the LHRNet network not only makes the model more lightweight but also enhances its feature expression capabilities. Second, we propose a CRASM module to enhance contextual semantic information while reducing the semantic gap between different scales by fusing features from different scales. Finally, the augmented semantic feature map's spatial resolution is finally restored from bottom to top using our suggested AFFM, and adaptive feature fusion is used to increase the positioning accuracy of important sites. Our method successfully predicts keypoints with 74.2 % AP, 89.9 % PCKh@0.5 and 66.9 % AP on the MSCOCO 2017, MPII and Crowdpose datasets, respectively. Our model reduces the number of parameters by 89.0 % and the computational complexity by 87.5 % compared with HRNet. The proposed network performs as well as current large-model human pose estimation networks while outperforming state-of the-art lightweight networks.

人体姿态估计是计算机视觉中最关键、最具挑战性的问题之一。它被应用于许多计算机视觉领域,具有重要的研究意义。然而,如何在模型的参数数量和计算量与人体姿态估计精度之间取得平衡仍然是一个艰巨的挑战。在这项研究中,我们提出了一种轻量级的跨尺度特征融合网络(LCFFNet),以在精度、计算负荷和参数量之间取得平衡。LCFFNet由轻量级类hrnet (LHRNet)网络、跨分辨率感知语义模块(CRASM)和自适应特征融合模块(AFFM)组成。更准确地说,首先,我们提出了一个轻量级的LHRNet网络,该网络在三个高分辨率子网阶段中包括动态多尺度卷积基本(DMSC-Basic块)块、基本块和dmsc -基本块子模块。提出的DMSC-Basic块动态多尺度卷积可以减少LHRNet网络的模型参数数量和复杂度,并具有提取可变姿态特征的能力。为了保持模型表达特征的能力,引入了基本块。因此,LHRNet网络不仅使模型更加轻量级,而且增强了模型的特征表达能力。其次,我们提出了一个CRASM模块,通过融合不同尺度的特征来增强上下文语义信息,同时减少不同尺度之间的语义差距。最后,利用本文提出的AFFM从下到上还原增强语义特征图的空间分辨率,并利用自适应特征融合提高重要位置的定位精度。我们的方法在MSCOCO 2017、MPII和Crowdpose数据集上分别以74.2%、89.9% PCKh@0.5和66.9% AP成功预测关键点。与HRNet相比,我们的模型减少了89.0%的参数数量和87.5%的计算复杂度。该网络的性能与目前的大型模型人体姿态估计网络一样好,同时优于最先进的轻量级网络。
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引用次数: 0
Illumination-Guided progressive unsupervised domain adaptation for low-light instance segmentation. 基于光照引导的渐进式无监督域自适应低光照实例分割。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-11-29 DOI: 10.1016/j.neunet.2024.106958
Yi Zhang, Jichang Guo, Huihui Yue, Sida Zheng, Chonghao Liu

Due to limited photons, low-light environments pose significant challenges for computer vision tasks. Unsupervised domain adaptation offers a potential solution, but struggles with domain misalignment caused by inadequate utilization of features at different stages. To address this, we propose an Illumination-Guided Progressive Unsupervised Domain Adaptation method, called IPULIS, for low-light instance segmentation by progressively exploring the alignment of features at image-, instance-, and pixel-levels between normal- and low-light conditions under illumination guidance. This is achieved through: (1) an Illumination-Guided Domain Discriminator (IGD) for image-level feature alignment using retinex-derived illumination maps, (2) a Foreground Focus Module (FFM) incorporating global information with local center features to facilitate instance-level feature alignment, and (3) a Contour-aware Domain Discriminator (CAD) for pixel-level feature alignment by matching contour vertex features from a contour-based model. By progressively deploying these modules, IPULIS achieves precise feature alignment, leading to high-quality instance segmentation. Experimental results demonstrate that our IPULIS achieves state-of-the-art performance on real-world low-light dataset LIS.

由于光子有限,低光环境对计算机视觉任务构成了重大挑战。无监督域自适应提供了一种潜在的解决方案,但由于在不同阶段对特征的利用不足而导致域不对齐。为了解决这个问题,我们提出了一种照明引导的渐进式无监督域自适应方法,称为IPULIS,通过在照明引导下逐步探索正常和低光条件下图像、实例和像素级特征的对齐,用于低光实例分割。这是通过以下方式实现的:(1)照明引导域鉴别器(IGD)用于使用视点衍生的照明地图进行图像级特征对齐;(2)前景焦点模块(FFM)结合全局信息和局部中心特征来促进实例级特征对齐;(3)轮廓感知域鉴别器(CAD)通过匹配轮廓顶点特征从基于轮廓的模型进行像素级特征对齐。通过逐步部署这些模块,IPULIS实现了精确的特征对齐,从而实现了高质量的实例分割。实验结果表明,我们的IPULIS在现实世界的低光照数据集LIS上达到了最先进的性能。
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引用次数: 0
Data-dependent stability analysis of adversarial training. 对抗性训练的数据依赖稳定性分析。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-12-04 DOI: 10.1016/j.neunet.2024.106983
Yihan Wang, Shuang Liu, Xiao-Shan Gao

Stability analysis is an essential aspect of studying the generalization ability of deep learning, as it involves deriving generalization bounds for stochastic gradient descent-based training algorithms. Adversarial training is the most widely used defense against adversarial attacks. However, previous generalization bounds for adversarial training have not included information regarding data distribution. In this paper, we fill this gap by providing generalization bounds for stochastic gradient descent-based adversarial training that incorporate data distribution information. We utilize the concepts of on-average stability and high-order approximate Lipschitz conditions to examine how changes in data distribution and adversarial budget can affect robust generalization gaps. Our derived generalization bounds for both convex and non-convex losses are at least as good as the uniform stability-based counterparts which do not include data distribution information. Furthermore, our findings demonstrate how distribution shifts from data poisoning attacks can impact robust generalization.

稳定性分析是研究深度学习泛化能力的一个重要方面,因为它涉及到基于随机梯度下降的训练算法的泛化界的推导。对抗性训练是对抗对抗性攻击最广泛使用的防御手段。然而,以前对抗性训练的泛化界限没有包括有关数据分布的信息。在本文中,我们通过提供包含数据分布信息的基于随机梯度下降的对抗训练的泛化边界来填补这一空白。我们利用平均稳定性和高阶近似Lipschitz条件的概念来研究数据分布和对抗预算的变化如何影响鲁棒泛化差距。我们导出的凸损失和非凸损失的泛化界至少与不包含数据分布信息的基于均匀稳定性的对应物一样好。此外,我们的研究结果证明了数据中毒攻击的分布转移如何影响鲁棒泛化。
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引用次数: 0
An object detection-based model for automated screening of stem-cells senescence during drug screening. 基于目标检测的药物筛选过程中干细胞衰老自动筛选模型。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-11-23 DOI: 10.1016/j.neunet.2024.106940
Yu Ren, Youyi Song, Mingzhu Li, Liangge He, Chunlun Xiao, Peng Yang, Yongtao Zhang, Cheng Zhao, Tianfu Wang, Guangqian Zhou, Baiying Lei

Deep learning-based cell senescence detection is crucial for accurate quantitative analysis of senescence assessment. However, senescent cells are small in size and have little differences in appearance and shape in different states, which leads to insensitivity problems such as missed and false detection. In addition, complex intelligent models are not conducive to clinical application. Therefore, to solve the above problems, we proposed a Faster Region Convolutional Neural Network (Faster R-CNN) detection model with Swin Transformer (Swin-T) and group normalization (GN), called STGF R-CNN, for the detection of different senescent cells to achieve quantification assessment of induced pluripotent stem cell-derived mesenchymal stem cells (iP-MSCs) senescence. Specifically, to enhance the representation learning ability of the network, Swin-T with a hierarchical structure was constructed. It utilizes a local window attention mechanism to capture features of different scales and levels. In addition, the GN strategy is adopted to achieve a lightweight model. To verify the effectiveness of the STGF R-CNN, a cell senescence dataset, the iP-MSCs dataset, was constructed, and a series of experiments were conducted. Experiment results show that it has the advantage of high senescent detection accuracy, mean Average Precision (mAP) is 0.835, Params is 46.06M, and FLOPs is 95.62G, which significantly reduces senescent assessment time from 12 h to less than 1 s. The STGF R-CNN has advantages over existing cell senescence detection methods, providing potential for anti-senescent drug screening. Our code is available at https://github.com/RY-97/STGF-R-CNN.

基于深度学习的细胞衰老检测对于衰老评估的准确定量分析至关重要。然而,衰老细胞在不同状态下体积较小,外观和形状差异不大,从而导致漏检和误检等不敏感问题。此外,复杂的智能模型也不利于临床应用。因此,为了解决上述问题,我们提出了一种结合Swin Transformer (Swin- t)和group normalization (GN)的Faster Region Convolutional Neural Network (Faster R-CNN)检测模型,称为STGF R-CNN,用于检测不同的衰老细胞,实现对诱导多能干细胞衍生间充质干细胞(iP-MSCs)衰老的量化评估。具体而言,为了增强网络的表示学习能力,构建了具有层次结构的swwin - t。它利用局部窗口注意机制来捕捉不同尺度和层次的特征。此外,采用GN策略实现轻量化模型。为了验证STGF R-CNN的有效性,构建了细胞衰老数据集iP-MSCs数据集,并进行了一系列实验。实验结果表明,该方法具有较高的衰老检测精度,平均平均精度(mAP)为0.835,Params为46.06M, FLOPs为95.62G,将衰老评估时间从12 h显著缩短到小于1 s。STGF R-CNN与现有细胞衰老检测方法相比具有优势,为抗衰老药物筛选提供了潜力。我们的代码可在https://github.com/RY-97/STGF-R-CNN上获得。
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引用次数: 0
Riemannian manifold-based disentangled representation learning for multi-site functional connectivity analysis. 基于黎曼流形的解纠缠表示学习多点功能连通性分析。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-11-29 DOI: 10.1016/j.neunet.2024.106945
Wenyang Li, Mingliang Wang, Mingxia Liu, Qingshan Liu

Functional connectivity (FC), derived from resting-state functional magnetic resonance imaging (rs-fMRI), has been widely used to characterize brain abnormalities in disorders. FC is usually defined as a correlation matrix that is a symmetric positive definite (SPD) matrix lying on the Riemannian manifold. Recently, a number of learning-based methods have been proposed for FC analysis, while the geometric properties of Riemannian manifold have not yet been fully explored in previous studies. Also, most existing methods are designed to target one imaging site of fMRI data, which may result in limited training data for learning reliable and robust models. In this paper, we propose a novel Riemannian Manifold-based Disentangled Representation Learning (RM-DRL) framework which is capable of learning invariant representations from fMRI data across multiple sites for brain disorder diagnosis. In RM-DRL, we first employ an SPD-based encoder module to learn a latent unified representation of FC from different sites, which can preserve the Riemannian geometry of the SPD matrices. In latent space, a disentangled representation module is then designed to split the learned features into domain-specific and domain-invariant parts, respectively. Finally, a decoder module is introduced to ensure that sufficient information can be preserved during disentanglement learning. These designs allow us to introduce four types of training objectives to improve the disentanglement learning. Our RM-DRL method is evaluated on the public multi-site ABIDE dataset, showing superior performance compared with several state-of-the-art methods.

功能连通性(FC)源于静息状态功能磁共振成像(rs-fMRI),已被广泛用于表征疾病中的大脑异常。通常将FC定义为位于黎曼流形上的对称正定(SPD)矩阵相关矩阵。近年来,人们提出了许多基于学习的FC分析方法,但对于黎曼流形的几何性质,前人的研究尚未得到充分的探讨。此外,大多数现有方法都是针对fMRI数据的一个成像部位设计的,这可能导致学习可靠和鲁棒模型的训练数据有限。在本文中,我们提出了一种新的基于黎曼流形的解纠缠表征学习(RM-DRL)框架,该框架能够从多个部位的fMRI数据中学习不变表征,用于大脑疾病诊断。在RM-DRL中,我们首先使用基于SPD的编码器模块来学习来自不同位点的FC的潜在统一表示,这可以保持SPD矩阵的黎曼几何形状。在潜在空间中,设计了一个解纠缠表示模块,将学习到的特征分别分解为特定领域和领域不变部分。最后,引入了解码器模块,以确保在解纠缠学习过程中保留足够的信息。这些设计允许我们引入四种类型的训练目标来改进解纠缠学习。我们的RM-DRL方法在公共多站点遵守数据集上进行了评估,与几种最先进的方法相比,显示出优越的性能。
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引用次数: 0
Generalized zero-shot learning via discriminative and transferable disentangled representations. 基于判别和可转移解纠缠表征的广义零次学习。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-11-30 DOI: 10.1016/j.neunet.2024.106964
Chunyu Zhang, Zhanshan Li

In generalized zero-shot learning (GZSL), it is required to identify seen and unseen samples under the condition that only seen classes can be obtained during training. Recent methods utilize disentanglement to make the information contained in visual features semantically related, and ensuring semantic consistency and independence of the disentangled representations is the key to achieving better performance. However, we think there are still some limitations. Firstly, due to the fact that only seen classes can be obtained during training, the recognition of unseen samples will be poor. Secondly, the distribution relations of the representation space and the semantic space are different, and ignoring the discrepancy between them may impact the generalization of the model. In addition, the instances are associated with each other, and considering the interactions between them can obtain more discriminative information, which should not be ignored. Thirdly, since the synthesized visual features may not match the corresponding semantic descriptions well, it will compromise the learning of semantic consistency. To overcome these challenges, we propose to learn discriminative and transferable disentangled representations (DTDR) for generalized zero-shot learning. Firstly, we exploit the estimated class similarities to supervise the relations between seen semantic-matched representations and unseen semantic descriptions, thereby gaining better insight into the unseen domain. Secondly, we use cosine similarities between semantic descriptions to constrain the similarities between semantic-matched representations, thereby facilitating the distribution relation of semantic-matched representation space to approximate the distribution relation of semantic space. And during the process, the instance-level correlation can be taken into account. Thirdly, we reconstruct the synthesized visual features into the corresponding semantic descriptions to better establish the associations between them. The experimental results on four datasets verify the effectiveness of our method.

在广义零次学习(GZSL)中,要求在训练过程中只能得到已知类的情况下,识别可见样本和未见样本。最近的方法利用解纠缠来使视觉特征中包含的信息语义相关,而保证解纠缠表示的语义一致性和独立性是获得更好性能的关键。然而,我们认为仍有一些局限性。首先,由于在训练过程中只能得到看到的类,对看不见的样本的识别会很差。其次,表示空间和语义空间的分布关系不同,忽略它们之间的差异可能会影响模型的泛化。此外,实例之间是相互关联的,考虑它们之间的相互作用可以获得更多的判别信息,这一点不容忽视。第三,由于合成的视觉特征可能不能很好地匹配相应的语义描述,这将损害语义一致性的学习。为了克服这些挑战,我们提出学习判别和可转移解纠缠表征(DTDR)用于广义零次学习。首先,我们利用估计的类相似度来监督可见语义匹配表示和不可见语义描述之间的关系,从而更好地了解不可见领域。其次,我们利用语义描述之间的余弦相似度来约束语义匹配表示之间的相似度,从而便于语义匹配表示空间的分布关系来近似语义空间的分布关系。在此过程中,可以考虑实例级相关性。第三,我们将合成的视觉特征重构为相应的语义描述,以更好地建立它们之间的关联。在四个数据集上的实验结果验证了该方法的有效性。
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引用次数: 0
Generalization analysis of adversarial pairwise learning. 对抗性两两学习的泛化分析。
IF 6 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-03-01 Epub Date: 2024-11-28 DOI: 10.1016/j.neunet.2024.106955
Wen Wen, Han Li, Rui Wu, Lingjuan Wu, Hong Chen

Adversarial pairwise learning has become the predominant method to enhance the discrimination ability of models against adversarial attacks, achieving tremendous success in various application fields. Despite excellent empirical performance, adversarial robustness and generalization of adversarial pairwise learning remain poorly understood from the theoretical perspective. This paper moves towards this by establishing the high-probability generalization bounds. Our bounds generally apply to various models and pairwise learning tasks. We give application examples involving explicit bounds of adversarial bipartite ranking and adversarial metric learning to illustrate how the theoretical results can be extended. Furthermore, we develop the optimistic generalization bound at order O(n-1) on the sample size n by leveraging local Rademacher complexity. Our analysis provides meaningful theoretical guidance for improving adversarial robustness through feature size and regularization. Experimental results validate theoretical findings.

对抗性两两学习已经成为增强模型对对抗性攻击辨别能力的主要方法,在各个应用领域都取得了巨大的成功。尽管有出色的经验表现,对抗性两两学习的对抗性鲁棒性和泛化从理论角度来看仍然知之甚少。本文通过建立高概率泛化界限来实现这一目标。我们的界限通常适用于各种模型和两两学习任务。我们给出了涉及对抗性二部排序和对抗性度量学习的显式边界的应用实例,以说明如何扩展理论结果。在此基础上,利用局部Rademacher复杂度,给出了样本容量为n的O(n-1)阶乐观泛化界。我们的分析为通过特征大小和正则化来提高对抗鲁棒性提供了有意义的理论指导。实验结果验证了理论结果。
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引用次数: 0
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