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Metric learning based weighted linear discriminant analysis for imbalanced multi-label classification 基于度量学习的不平衡多标签分类加权线性判别分析
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-06 DOI: 10.1007/s10489-025-07045-5
Tingquan Deng, Jintian Huang, Yiying Chen

Imbalanced multi-label learning (IMLL) aims to learn a multi-label classifier from instances with imbalanced label distribution. Most existing IMLL models either use resampling techniques for preprocessing or transform multi-label learning problems into single-label problems, and traditional imbalanced learning methods are applied. The resampling methods may distort data distribution, whereas the latter overlook dependency and correlation between labels. To address those challenges, this paper proposes an approach to imbalanced multi-label learning, nominated as MWLDAIML. In the proposed model, a label enhancement matrix is designed according to the imbalance rates of positive and negative instances to enlarge the influence of instances in minority classes. A linear mapping is learned to function as a classifier from the feature space to the enhanced label space, and simultaneously acts as a projection from a high-dimensional space to a low-dimensional space, ensuring a large divergence between inter-class instances and a tight distribution of intra-class instances via introducing a weighted linear discriminant analysis (WLDA). Moreover, the metric learning is embedded into WLDA to discern intra-class instances and inter-class instances to capture a more complex nonlinear relationship between instances and their multiple labels. Additionally, the graph Laplacian regularization is imposed to ensure that predicted labels inherit the topological structure of instances in the feature space. An efficient algorithm for implementing MWLDAIML is developed to implement the proposed model, and extensive experiments on real-world benchmark datasets demonstrate that the proposed model outperforms existing methods for imbalanced multi-label classification.

不平衡多标签学习(IMLL)旨在从标签分布不平衡的实例中学习一个多标签分类器。现有的IMLL模型要么采用重采样技术进行预处理,要么将多标签学习问题转化为单标签问题,并采用传统的不平衡学习方法。重采样方法可能会扭曲数据分布,而后者忽略了标签之间的依赖性和相关性。为了解决这些挑战,本文提出了一种不平衡多标签学习方法,称为MWLDAIML。在该模型中,根据正面和负面实例的不平衡率设计了标签增强矩阵,以扩大实例在少数类中的影响。学习线性映射作为从特征空间到增强标签空间的分类器,同时作为从高维空间到低维空间的投影,通过引入加权线性判别分析(WLDA)确保类间实例之间的大分歧和类内实例的紧密分布。此外,度量学习被嵌入到WLDA中,以识别类内实例和类间实例,以捕获实例及其多个标签之间更复杂的非线性关系。此外,采用图拉普拉斯正则化来确保预测标签继承特征空间中实例的拓扑结构。开发了一种高效的实现MWLDAIML算法来实现所提出的模型,并在现实世界的基准数据集上进行了大量实验,结果表明所提出的模型优于现有的不平衡多标签分类方法。
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引用次数: 0
Few-shot object detection via dynamic feature enhancement and attention template matching 基于动态特征增强和注意模板匹配的少镜头目标检测
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-05 DOI: 10.1007/s10489-025-06997-y
Ruqi Su, Kai Zhang, Songhao Zhu

With the rapid advancement of deep learning and computer vision, few-shot object detection (FSOD) has emerged as a critical research frontier. A key challenge in FSOD lies in extracting discriminative feature representations from limited samples, which severely degrades detection performance. To mitigate this issue, we propose a novel FSOD framework that integrates cross-domain adaptive feature enhancement and attention-guided proposal generation, effectively leveraging support set information to improve query set detection accuracy. Our method introduces three key innovations. (1) Dynamic Kernel Generation. A learnable kernel generator produces sample-specific convolutional kernels to adaptively enhance query features using support set cues. (2) Attention-Driven Region Proposals. An attention-based region proposal network (ARPN) suppresses irrelevant regions while prioritizing semantically relevant areas. (3) Template-Aware Scoring. A matching module evaluates candidate boxes against support templates to ensure geometric and semantic consistency. Extensive experiments on PASCAL VOC and MS COCO benchmarks demonstrate our method outperforming existing approaches by 3.2 AP50 on 10-shot tasks. The results validate the efficacy of cross-domain adaptation and attention mechanisms in addressing data scarcity challenges.

随着深度学习和计算机视觉技术的快速发展,少镜头目标检测(FSOD)已成为一个重要的研究前沿。FSOD的一个关键挑战在于从有限的样本中提取判别特征表示,这严重降低了检测性能。为了解决这一问题,我们提出了一种新的FSOD框架,该框架集成了跨域自适应特征增强和注意力引导的建议生成,有效地利用支持集信息来提高查询集检测的准确性。我们的方法引入了三个关键的创新。(1)动态核生成。一个可学习的核生成器生成特定于样本的卷积核,使用支持集线索自适应地增强查询特征。(2)注意力驱动区域建议。基于注意的区域建议网络(ARPN)在优先考虑语义相关区域的同时抑制不相关区域。(3)模板感知评分。匹配模块根据支持模板评估候选框,以确保几何和语义的一致性。在PASCAL VOC和MS COCO基准测试上的大量实验表明,我们的方法在10个射击任务上的性能优于现有方法3.2 AP50。结果验证了跨域适应和注意机制在解决数据稀缺性挑战方面的有效性。
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引用次数: 0
Correction to: E-GAIL: efficient GAIL through including negative corruption and long-term rewards for robotic manipulations 修正:E-GAIL:有效的GAIL,包括负面腐败和对机器人操作的长期奖励
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-05 DOI: 10.1007/s10489-025-06830-6
Jiayi Tan, Gang Chen, Zeyuan Huang, Haofeng Liu, Marcelo H. Ang Jr
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引用次数: 0
Random neighborhood ensemble-based one-class classification algorithm for anomaly detection 基于随机邻域集成的一类异常检测分类算法
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-03 DOI: 10.1007/s10489-025-07038-4
Sungho Park, Jaehong Yu

Until now, a number of one-class classification methods have been used for anomaly detection problems. However, only single one-class classifiers often fail to accurately detect anomalous patterns because they might not be optimized to describe inherent target class structures. To achieve more superior anomaly detection performance, we propose random neighborhood ensemble-based one-class classification algorithm. In the proposed algorithm, multiple one-class classifiers are obtained from various random k-NN sets identified by ensemble of random subspace and random neighborhood size approaches, and they are finally aggregated as novelty score. The random subspace and random neighborhood size approaches helps to diversify k-NN sets, and these diversified k-NN sets can effectively accommodate the inherent target class structures having complex patterns. In this study, we conducted experimental studies with various benchmark datasets to investigate the characteristics of the proposed algorithm and compare it with existing methods. The experimental results demonstrate that the proposed algorithm performs better or comparable to existing one-class classification methods in most of cases.

到目前为止,许多一类分类方法已被用于异常检测问题。然而,只有单一的单类分类器往往不能准确地检测异常模式,因为它们可能没有被优化以描述固有的目标类结构。为了获得更好的异常检测性能,提出了基于随机邻域集成的单类分类算法。在该算法中,通过随机子空间和随机邻域大小方法的集合识别不同的随机k-NN集,得到多个单类分类器,并最终聚合为新颖性分数。随机子空间和随机邻域大小方法有助于k-NN集的多样化,这些多样化的k-NN集可以有效地适应具有复杂模式的固有目标类结构。在本研究中,我们使用各种基准数据集进行实验研究,研究所提出算法的特点,并与现有方法进行比较。实验结果表明,在大多数情况下,该算法的分类性能优于或可与现有的单类分类方法相媲美。
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引用次数: 0
Three-way conflict analysis: Relative alliance, neutrality, and conflict reducts in a three-valued decision situation table 三向冲突分析:三值决策情境表中的相对联盟、中立和冲突减少
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-03 DOI: 10.1007/s10489-025-07052-6
Guangming Lang, Xuemei Ran

In three-way conflict analysis, alliance, neutrality, and conflict reducts derived from three-valued situation tables play a crucial role in identifying and resolving potential conflicts. However, existing research has largely focused on standard three-valued situation tables, with insufficient attention paid to three-valued decision situation tables. To address this gap, we first introduce conflict measures regarding both conditional and decision issues, and establish alliance, neutrality, and conflict relations with respect to these two types of issues within a three-valued decision situation table. We then provide the concepts of relative alliance, neutrality, and conflict reducts tailored to three-valued decision situation tables. To facilitate the systematic construction of these reducts, we formulate three types of relative discernibility matrices and design an algorithm for computing the corresponding reducts based on these matrices. Finally, the practical applicability of the proposed approach is demonstrated through two case studies: the NBA labor negotiations and the development planning of Gansu Province. A comparative analysis highlights the effectiveness and advantages of the proposed method compared to existing approaches.

在三方冲突分析中,从三值情景表中得出的联盟、中立和冲突减少在识别和解决潜在冲突方面起着至关重要的作用。然而,现有的研究大多集中在标准的三值情景表上,对三值决策情景表的关注不够。为了解决这一差距,我们首先引入了关于条件问题和决策问题的冲突度量,并在三值决策情况表中建立了关于这两类问题的联盟、中立和冲突关系。然后,我们提供了针对三值决策情景表的相对联盟、中立和冲突缩减的概念。为了便于系统地构造这些约简,我们提出了三种类型的相对差别矩阵,并设计了一种基于这些矩阵计算相应约简的算法。最后,通过NBA劳资谈判和甘肃省发展规划两个案例,论证了所提出方法的实用性。对比分析表明,与现有方法相比,所提方法的有效性和优越性。
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引用次数: 0
A group decision-making model based on public big data and minority opinions for sudden events 基于公共大数据和少数派意见的突发事件群体决策模型
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-29 DOI: 10.1007/s10489-025-07061-5
Donghong Tian, Xiaojuan Chen, Xinran Peng, Yang Xiao

In group decision-making problems related to sudden events, the absence of evaluation attributes and the emergence of minority opinions are common problems. Due to the shortcomings of existing methods for such problems, this paper proposes a group decision-making model based on public big data and minority opinions for sudden events. Firstly, a linear algorithm for the comprehensive attribute weights is novelly constructed based on two aspects of the public level and the expert level, the attribute weights of the public level are derived from a normalization algorithm by combining the term frequency-inverse document frequency technology with the latent dirichlet allocation model, and the attribute weights of the expert level are determined by constructing a maximum nonlinear deviation model. Secondly, by incorporating both the support degree and trust degree in the adjustment coefficient, a new valuable minority opinion management scheme is proposed to make the decision-making more reasonable and objective. Thirdly, a consensus optimization model is established based on minimum adjustment to protect minority opinions and improve decision-making efficiency. Finally, an application is demonstrated to illustrate the efficiency and flexibility of the proposed model.

在涉及突发事件的群体决策问题中,评估属性的缺失和少数派意见的出现是常见的问题。针对现有方法在这类问题上的不足,本文提出了一种基于公共大数据和少数派意见的突发事件群体决策模型。首先,从公众级和专家级两个方面构建了综合属性权值的线性化算法,将词频逆文档频率技术与潜在狄利克雷分配模型相结合,采用归一化算法得到公众级属性权值,通过构造最大非线性偏差模型确定专家级属性权值。其次,通过将支持度和信任度纳入调整系数,提出了一种新的有价值少数意见管理方案,使决策更加合理客观。第三,建立基于最小调整的共识优化模型,保护少数人意见,提高决策效率。最后,通过实例验证了该模型的有效性和灵活性。
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引用次数: 0
Adaptive disentangled learning recommendation via similarity popularity 基于相似性流行度的自适应解纠缠学习推荐
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-29 DOI: 10.1007/s10489-025-07050-8
Jianmei Ye, Heming Wang, Jiangzhou Deng, Zhiqiang Zhang, Yong Wang, Zeshui Xu, Kobiljon Kh. Khushvakhtzoda

Learning representations of users and items are importance of predicting user preferences for accurate recommendation. However, confusion features of users genuine interests and conformity behaviors often hamper the accurate representation of user preferences and lead to inappropriate recommendation. The existing methods overlook the fine-grained attributes of interest and conformity, hiding the actual preferences of users. In this paper, we propose a similarity popularity-based adaptive disentangled learning recommendation model with individual preference to learn representations from the observed data with the confusion features of interest and conformity. Firstly, a novel popularity calculation method based on item similarity is presented, which better captures fine-grained attributes and distinguishes user interest and conformity to generate more accurate sampling signals. Subsequently, we design a weight attention score mechanism that dynamically adjusts the weights of interest and conformity, accurately aligning with the individualized preferences of users. Finally, we develop a comprehensive loss function to calibrate the importance of disentangled representation learning. Experiments on public datasets demonstrate that the proposed model outperforms the existing debiasing methods, mitigating the popularity bias of recommendations from fine-grained attributes perspective.

学习用户和项目的表示对于预测用户偏好以进行准确推荐非常重要。然而,用户真实兴趣和从众行为的混淆特征往往会阻碍用户偏好的准确表达,从而导致不恰当的推荐。现有的方法忽略了兴趣和一致性的细粒度属性,隐藏了用户的实际偏好。本文提出了一种基于相似性流行度的个体偏好自适应解纠缠学习推荐模型,从具有兴趣与从众混淆特征的观测数据中学习表征。首先,提出了一种基于物品相似度的流行度计算方法,该方法能够更好地捕获细粒度属性,区分用户兴趣和一致性,从而产生更准确的采样信号;随后,我们设计了一个权重注意评分机制,动态调整兴趣和一致性的权重,准确地符合用户的个性化偏好。最后,我们开发了一个综合损失函数来校准解纠缠表示学习的重要性。在公共数据集上的实验表明,该模型优于现有的去偏方法,从细粒度属性的角度减轻了推荐的流行度偏差。
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引用次数: 0
Column coordinate based dynamic gain aging-aware quantized iterative learning control 基于列坐标的动态增益老化感知量化迭代学习控制
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-27 DOI: 10.1007/s10489-025-07003-1
Tianyi Lan, Mengxue Zhou, Saleem Riaz

To address equipment aging, spatial signal redundancy, and robustness deficiencies in long-term operation, this paper proposes a cylindrical-coordinate Quantized Iterative Learning Control framework (QILC-CC). The method exploits geometric symmetry to quantize multi-dimensional signals and reduce communication load, introduces a dynamic learning gain to accelerate convergence, and embeds an aging-compensation term to suppress slow degradation, thereby unifying accuracy and stability within a single learning law. Theoretically, we derive the error recurrence under bounded disturbances and gradual aging, establish sufficient convergence conditions and steady-state error bounds, and justify them via Lipschitz continuity and Lyapunov energy arguments. In simulations on a tower-type solar-thermal heliostat field, QILC-CC improves convergence speed by approximately 50-60%, reduces steady-state error by 20 – 45%, and, under strong disturbances, lowers RMS error by 25% ; under equal-accuracy alignment, it further reduces communication and computation burdens by 30 – 40%. Multiple independent runs with statistical validation (R = 30, p ˂ 0.01) confirm the significance and robustness of these gains. Comparative studies against MRAC, L₁ adaptive control, H∞ control with ESO, and related advanced methods show that QILC-CC delivers superior long-term steady-state performance and resource efficiency for repetitive tasks with slow aging. Taken together, these results position QILC-CC as a low-bandwidth, low-compute, and statistically verifiable control solution for long-horizon operation.

针对设备老化、空间信号冗余和长期运行中鲁棒性不足等问题,提出了一种圆柱坐标量化迭代学习控制框架(QILC-CC)。该方法利用几何对称性对多维信号进行量化,减少通信负荷,引入动态学习增益来加速收敛,并嵌入老化补偿项来抑制缓慢退化,从而将精度和稳定性统一在单一学习律中。从理论上推导了有界扰动和逐渐老化下的误差递推式,建立了充分的收敛条件和稳态误差界,并通过Lipschitz连续性和Lyapunov能量论证对其进行了证明。在塔式光热定日镜场模拟中,QILC-CC将收敛速度提高了约50-60%,将稳态误差降低了20 - 45%,在强扰动下,将均方根误差降低了25%;在等精度对齐的情况下,进一步减少了30 - 40%的通信和计算负担。具有统计验证的多次独立运行(R = 30, p小于0.01)证实了这些增益的显著性和稳健性。通过与MRAC、L₁自适应控制、带ESO的H∞控制及相关先进方法的比较研究表明,QILC-CC对于缓慢老化的重复性任务具有优越的长期稳态性能和资源效率。综上所述,这些结果将QILC-CC定位为低带宽,低计算和统计可验证的长视界操作控制解决方案。
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引用次数: 0
GMKAT: Geospatial Multipath Kolmogorov-Arnold Transformer for flood susceptibility mapping 基于地理空间多径Kolmogorov-Arnold变压器的洪水敏感性制图
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-27 DOI: 10.1007/s10489-025-06939-8
Minzhen Cao, Hao Deng, Hongwei Dai, Shengjie Zhao
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引用次数: 0
MSLP-Gruformer: a hybrid model based on iTransformer for day-ahead photovoltaic power forecasting MSLP-Gruformer:基于ittransformer的光伏日前电量预测混合模型
IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-27 DOI: 10.1007/s10489-025-07055-3
Dongcheng Mo, Yue Gao, Zhong Wu, Yonggang Wang, Shengzhou Feng

Accurate photovoltaic (PV) power forecasting is essential for power system scheduling and security, yet it is challenged by the high uncertainty of solar generation due to weather, season, and location. Although Transformer-based models have advanced prediction capabilities, they still suffer from key limitations: their point-wise self-attention underuses local context, they capture short-term dependencies poorly, and their numerous hyperparameters require experience-heavy manual tuning, complicating optimization. To overcome these issues, this paper proposes a novel Transformer-based model named MSLP-Gruformer for PV power forecasting. Built upon the iTransformer framework, the model incorporates a Multi-scale Local Perceptual Attention Mechanism (MSLP) to enhance the extraction of local features and trend variations in time-series data. Furthermore, by integrating a Gated Recurrent Unit (GRU) module, the model strengthens its ability to jointly capture both long- and short-term dependencies. Hyperparameter optimization is automated using the Blood-Sucking Leech Optimizer (BSLO), which reduces computational cost and improves tuning efficiency. The performance of MSLP-Gruformer is evaluated using real-world data from four PV stations located in China and Australia. Forecasts are generated for four time horizons: 1 h, 4 h, 12 h, and 24 h, and compared with the baseline iTransformer model. Compared with GRU, TCN, Transformer-GRU, Transformer-TCN, Crossformer and iTransformer, results show that MSLP-Gruformer achieves consistently lower prediction errors and higher goodness-of-fit across all forecasting horizons and station capacities, demonstrating its potential to support daily power system scheduling and enhance operational security.

准确的光伏发电功率预测对电力系统的调度和安全至关重要,但由于天气、季节和地理位置等因素,光伏发电的不确定性很大。尽管基于transformer的模型具有先进的预测能力,但它们仍然存在关键的局限性:它们的点对点的自关注未充分利用本地上下文,它们捕获短期依赖关系的能力较差,并且它们的大量超参数需要大量的经验手动调优,使优化变得复杂。为了克服这些问题,本文提出了一种新的基于变压器的光伏发电功率预测模型MSLP-Gruformer。该模型以iTransformer框架为基础,结合多尺度局部感知注意机制(MSLP),增强了对时间序列数据局部特征和趋势变化的提取。此外,通过集成门控循环单元(GRU)模块,该模型增强了其联合捕获长期和短期依赖关系的能力。使用吸血水蛭优化器(BSLO)自动进行超参数优化,降低了计算成本并提高了调优效率。MSLP-Gruformer的性能使用来自中国和澳大利亚四个光伏电站的真实数据进行评估。在四个时间范围内生成预测:1小时、4小时、12小时和24小时,并与基线ittransformer模型进行比较。结果表明,与GRU、TCN、变压器-GRU、变压器-TCN、Crossformer和ittransformer相比,MSLP-Gruformer在所有预测范围和电站容量上均具有较低的预测误差和较高的拟合度,显示了其支持电力系统日常调度和增强运行安全性的潜力。
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引用次数: 0
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Applied Intelligence
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