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VeGaS: Video Gaussian Splatting 维加斯:视频高斯飞溅
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-25 DOI: 10.1016/j.ins.2025.123033
Weronika Smolak-Dyżewska , Dawid Malarz , Kornel Howil , Jan Kaczmarczyk , Marcin Mazur , Przemysław Spurek
Implicit Neural Representations (INRs) employ neural networks to approximate discrete data as continuous functions. In the context of video data, such models can be utilized to transform the coordinates of pixel locations along with frame occurrence times (or indices) into RGB color values. Although INRs facilitate effective compression, they are unsuitable for editing purposes. One potential solution is to use a 3D Gaussian Splatting (3DGS) based model, such as the Video Gaussian Representation (VGR), which is capable of encoding video as a multitude of 3D Gaussians and is applicable for numerous video processing operations, including editing. Nevertheless, in this case, the capacity for modification is constrained to a limited set of basic transformations. To address this issue, we introduce the Video Gaussian Splatting (VeGaS) model, which enables complex modifications of video data. To construct VeGaS, we propose a novel family of Folded-Gaussian distributions designed to capture nonlinear dynamics in a video stream and model consecutive frames by 2D Gaussians obtained as respective conditional distributions. Our experiments demonstrate that VeGaS outperforms state-of-the-art solutions in frame reconstruction tasks and allows expressive modifications of video data. The code is available at: https://github.com/gmum/VeGaS.
隐式神经表示(INRs)利用神经网络将离散数据近似为连续函数。在视频数据的背景下,可以利用这些模型将像素位置的坐标与帧出现次数(或索引)一起转换为RGB颜色值。尽管inr有助于有效的压缩,但它们不适合用于编辑目的。一个潜在的解决方案是使用基于3D高斯飞溅(3DGS)的模型,例如视频高斯表示(VGR),它能够将视频编码为大量3D高斯,并适用于许多视频处理操作,包括编辑。然而,在这种情况下,修改的能力仅限于一组有限的基本转换。为了解决这个问题,我们引入了视频高斯飞溅(VeGaS)模型,该模型可以对视频数据进行复杂的修改。为了构建维加斯,我们提出了一种新的折叠高斯分布族,旨在捕捉视频流中的非线性动态,并通过作为各自条件分布的二维高斯分布对连续帧进行建模。我们的实验表明,VeGaS在帧重建任务中优于最先进的解决方案,并允许对视频数据进行富有表现力的修改。代码可从https://github.com/gmum/VeGaS获得。
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引用次数: 0
Achieving Dalenius’ goal of data privacy with practical assumptions 以实际假设实现Dalenius的数据隐私目标
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-25 DOI: 10.1016/j.ins.2025.123035
Genqiang Wu , Xianyao Xia , Yeping He
Current differential privacy frameworks face significant challenges: vulnerability to correlated data attacks and suboptimal utility-privacy tradeoffs. To address these limitations, we establish a novel information-theoretic foundation for Dalenius’ privacy vision using Shannon’s perfect secrecy framework. By leveraging the fundamental distinction between cryptographic systems (small secret keys) and privacy mechanisms (massive datasets), we replace differential privacy’s restrictive independence assumption with practical partial knowledge constraints (H(X)b).
We propose an information privacy framework achieving Dalenius security with quantifiable utility-privacy tradeoffs. Crucially, we prove that foundational mechanisms—random response, exponential, and Gaussian channels—satisfy Dalenius’ requirements while preserving group privacy and composition properties. Our channel capacity analysis reduces infinite-dimensional evaluations to finite convex optimizations, enabling direct application of information-theoretic tools.
Empirical evaluation demonstrates that individual channel capacity (maximal information leakage of each individual) decreases with increasing entropy constraint b, and our framework achieves superior utility-privacy tradeoffs compared to classical differential privacy mechanisms under equivalent privacy guarantees. The framework is extended to computationally bounded adversaries via Yao’s theory, unifying cryptographic and statistical privacy paradigms. Collectively, these contributions provide a theoretically grounded path toward practical, composable privacy—subject to future resolution of the tradeoff characterization—with enhanced resilience to correlation attacks.
当前不同的隐私框架面临着重大挑战:易受相关数据攻击和次优效用-隐私权衡。为了解决这些局限性,我们使用香农的完美保密框架为Dalenius的隐私愿景建立了一个新的信息论基础。通过利用密码系统(小密钥)和隐私机制(海量数据集)之间的根本区别,我们用实际的部分知识约束(H(X)≥b)取代了差分隐私的限制性独立性假设。我们提出了一个信息隐私框架,通过可量化的效用-隐私权衡来实现达莱纽斯安全。关键是,我们证明了基本机制-随机响应,指数和高斯通道-满足Dalenius的要求,同时保持了群隐私和组合特性。我们的通道容量分析将无限维评估减少到有限凸优化,从而可以直接应用信息理论工具。经验评估表明,个体通道容量(每个个体的最大信息泄漏)随着熵约束b的增加而减少,与经典的差分隐私机制相比,我们的框架在同等隐私保证下实现了更好的效用-隐私权衡。该框架通过Yao的理论扩展到计算有界的对手,统一了密码学和统计隐私范式。总的来说,这些贡献为实现实用的、可组合的隐私(取决于权衡特征的未来解决方案)提供了理论基础,并增强了对相关攻击的弹性。
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引用次数: 0
AMOS: Absent minority oversampling neural network for imbalanced data classification 无少数过采样神经网络在不平衡数据分类中的应用
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-24 DOI: 10.1016/j.ins.2025.123024
Zhan ao Huang , Canghong Shi , Jia He , Xiaojie Li , Xi Wu
Oversampling is a classical method used by neural networks to address the learning bias caused by imbalanced data learning. However, most oversampling approaches are limited to the empirical distribution of known data, disregarding its insufficient representation problem. Consequently, the learning bias cannot be fully alleviated. In this paper, a novel sampling paradigm outside the empirical distribution is developed to address imbalanced data classification with an insufficient empirical distribution. Specifically, we sample absent minority samples that have low majority probability attributes outside the empirical distribution by using normalizing flow technology and surrogate complement set sampling. A sampling space of absent minority samples is constructed by combining different stages of the generation direction of the normalizing flow model. In addition, to preserve the details of adjacent areas between classes, we transform the sampling constraint from global probability to local cluster distance. Alleviating the insufficient empirical distribution by incorporating the absent minority samples in neural network optimization. We validated the proposed method on KEEL imbalanced datasets and application tests. The proposed method shows obvious advantages over the state-of-the-art absent minority oversampling technologies.
过采样是神经网络用来解决不平衡数据学习导致的学习偏差的经典方法。然而,大多数过采样方法仅限于已知数据的经验分布,而忽略了其不充分的代表性问题。因此,学习偏差不能完全缓解。本文提出了一种新的经验分布外抽样范式,以解决经验分布不充分的数据分类不平衡问题。具体而言,我们使用归一化流技术和替代补集抽样对经验分布之外具有低多数概率属性的缺席少数样本进行抽样。结合归一化流模型生成方向的不同阶段,构建了缺失少数样本的采样空间。此外,为了保留类之间相邻区域的细节,我们将采样约束从全局概率转换为局部聚类距离。在神经网络优化中引入缺失的少数样本,缓解了经验分布的不足。通过KEEL不平衡数据集和应用测试验证了该方法的有效性。与现有的无少数过采样技术相比,该方法具有明显的优势。
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引用次数: 0
Joint scheduling of runway and taxiway considering uncertain taxiing time based on an improved ACO algorithm 基于改进蚁群算法的考虑不确定滑行时间的跑道和滑行道联合调度
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-24 DOI: 10.1016/j.ins.2025.123023
Lirong Zhang , Yi Lin , Suwan Yin , Wu Deng , Hongyu Yang , Jianwei Zhang
The airport field resource scheduling problem (AFRS) plays a crucial role in airport surface operations but is typically formulated as separate optimization tasks, leading to inefficient airport operations. To bridge this gap, a new problem model is proposed to implement intra-resource collaboration based on the attributes of airport operation to enhance operational flexibility, namely the joint scheduling model of runway and taxiway considering uncertain taxiing time (RTU). To reduce flight delays caused by deviations from the estimated schedule time, a two-stage queue completion mechanism is proposed to adjust runway sequencing by considering both the separation constraints and their estimated scheduled times in the flight plan. In addition, to alleviate the high costs associated with frequent taxiing conflicts, a time-shifting mechanism is proposed to transfer time costs based on flight priority, thereby enhancing taxiing efficiency and reducing conflict propagation. In this work, an improved ant colony optimization (ACO) algorithm, namely an ACO algorithm based on Metropolis- and screening- strategies (MS-ACO), is proposed to solve the RTU model. To address the local optimum problem, a Metropolis strategy is proposed to guide the optimization direction. To cope with the route-point skipping, path circuitousness, and routing errors caused by the randomness of the ACO algorithm, a screening strategy is designed to recalibrate taxiing paths based on the physical constraints of the route network. A real-world dataset is applied to validate the proposed model and solution method. The experimental results indicate that the proposed RTU model outperforms the separate optimization model, with delay time decreasing by approximately 8.4 %, thereby identifying optimal sequencing and taxiing plans that significantly reduce conflicts and delays. Most importantly, the generalizability of the RTU model is confirmed through comparisons with other competitive methods, and the efficiency and effectiveness of the MS-ACO algorithm are validated against state-of-the-art algorithms. The proposed multi-resource optimization framework can be applied to enable integrated analysis of runway and taxiway operations, thereby supporting airport operations.
机场现场资源调度问题(AFRS)在机场地面运行中起着至关重要的作用,但通常被制定为单独的优化任务,导致机场运行效率低下。为了弥补这一缺陷,提出了一种基于机场运行属性的资源内协同问题模型,即考虑不确定滑行时间(RTU)的跑道和滑道联合调度模型。为了减少因偏离预计计划时间而造成的航班延误,提出了一种两阶段排队完成机制,同时考虑飞行计划中的分离约束和预计计划时间,对跑道排序进行调整。此外,针对滑行冲突频繁带来的高成本问题,提出了一种基于飞行优先级的时间转移机制来转移时间成本,从而提高滑行效率,减少冲突传播。本文提出了一种改进的蚁群优化算法,即基于Metropolis- and - screening- strategies的蚁群优化算法(MS-ACO)来求解RTU模型。为了解决局部最优问题,提出了Metropolis策略来指导优化方向。针对蚁群算法的随机性导致的路径点跳变、路径迂回和路由错误等问题,设计了一种基于路由网络物理约束的滑行路径重新标定策略。应用一个实际数据集验证了所提出的模型和求解方法。实验结果表明,所提RTU模型优于单独优化模型,延迟时间减少了约8.4%,从而确定了最优的排序和滑行计划,显著减少了冲突和延迟。最重要的是,通过与其他竞争方法的比较,验证了RTU模型的可泛化性,并与最先进的算法对比验证了MS-ACO算法的效率和有效性。建议的多资源优化框架可应用于跑道和滑行道运营的综合分析,从而支持机场运营。
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引用次数: 0
Taming the long tail in federated learning: A unified global and personalized model framework 驯服联邦学习中的长尾:一个统一的全局和个性化的模型框架
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-24 DOI: 10.1016/j.ins.2025.123031
Pengsong Zhang , Mi Wen , Zhou Zhu , Dongyang Li
Real-world data often exhibit severe class imbalance with long-tail distribution, presenting significant challenges for classification tasks, especially in federated learning (FL). Existing research predominantly addresses the global distribution problem of long-tail data, aiming to improve the efficiency of the global model. However, these studies often overlook the potential presence of long-tail distributions at the local level and neglect performance optimization at this level, leading to degraded personalized performance and biased aggregation. This study introduces FedDream, a federated learning framework that consistently improves the performance of both local and global models. Specifically, a shared backbone network is employed to capture global trends, upon which a Dynamic Adaptive Equiangular Tight Frame (DA-ETF), inspired by neural collapse, is constructed to guide the backbone in dynamically learning balanced feature representations. Subsequently, we treat these backbone networks as expert models and train the personalized models through the Dynamic Class-Conditional Mixture of Experts (DCC-MoE). Finally, a global model robust to malicious attacks is obtained by hierarchically aggregating the personalized models. Comprehensive experimental results across CIFAR-10-LT, CIFAR-100-LT, and ImageNet-LT datasets demonstrate that FedDream significantly improves both accuracy and security across multiple benchmarks, offering a novel perspective for FL under long-tailed data distributions.
现实世界的数据经常表现出严重的类不平衡和长尾分布,这给分类任务带来了巨大的挑战,特别是在联邦学习(FL)中。现有研究主要解决长尾数据的全局分布问题,旨在提高全局模型的效率。然而,这些研究往往忽视了长尾分布在局部层面的潜在存在,忽视了这一层面的性能优化,导致个性化性能下降和偏向聚合。本研究介绍了FedDream,这是一个联邦学习框架,可以持续改进本地和全局模型的性能。具体而言,利用共享骨干网捕获全局趋势,并在此基础上构建受神经崩溃启发的动态自适应等角紧框架(DA-ETF),引导骨干网动态学习平衡特征表示。随后,我们将这些骨干网络视为专家模型,并通过动态类-条件混合专家(DCC-MoE)训练个性化模型。最后,对个性化模型进行分层聚合,得到一个抗恶意攻击的全局模型。在CIFAR-10-LT、CIFAR-100-LT和ImageNet-LT数据集上的综合实验结果表明,FedDream在多个基准测试中显著提高了准确性和安全性,为长尾数据分布下的FL提供了一个新的视角。
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引用次数: 0
Blockchain-integrated intrusion detection system with optimized cosine CNN for enhanced privacy and security in cloud computing 区块链集成入侵检测系统,优化余弦CNN,增强云计算中的隐私和安全性
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-23 DOI: 10.1016/j.ins.2025.123015
N.R. Rejin Paul , V. Nallarasan , Nallam Krishnaiah , L. Guganathan

Problem statement

Cloud environments, while managing a huge volume of sensitive data, are increasingly susceptible to frequent and sophisticated cyber-attacks from interconnected IoT devices. The limitations of traditional intrusion detection due to class imbalance, high false alarm rates, and poor scalability reduce the reliability of intrusion detection in dynamic cloud infrastructures.

Proposed model

To address these, the paper proposes a Blockchain-Integrated IDS that contains an optimized Cosine Convolutional Neural Network enhanced with the Energy Valley Optimization Algorithm, CCNN-EVOA. The framework is designed for accurate detection with scalability and privacy-preserving data handling in real-time cloud environments.

Key methods

It integrates several components to achieve better performance of the IDS. A JDAGEM is used to carry out advanced pre-processing and feature extraction. Sensitive information is kept secure by PEDS. The Adaptive Blockchain Sharding Protocol allows for scalable, distributed, and tamper-resistant processing. The CCNN parameters are tuned using the EVOA algorithm for enhanced generalization and reduced false alarms.

Results

The framework is validated on real-world IoT-based attack scenarios using the BoT-IoT and UNSW-NB15 datasets. The proposed system has reached a high accuracy of 99.7% with notable improvements compared to state-of-the-art IDS techniques.

Implications

These findings affirm that Blockchain-Integrated IDS based on CCNN-EVOA provides a reliable, scalable, and privacy-preserving solution for contemporary IoT-enabled cloud infrastructures.
云环境在管理大量敏感数据的同时,越来越容易受到来自互联物联网设备的频繁和复杂的网络攻击。传统入侵检测存在类不平衡、虚警率高、可扩展性差等局限性,降低了动态云基础设施中入侵检测的可靠性。为了解决这些问题,本文提出了一个区块链集成的IDS,其中包含一个经过优化的余弦卷积神经网络,该网络通过能量谷优化算法CCNN-EVOA进行增强。该框架设计用于在实时云环境中具有可伸缩性和保护隐私的数据处理的准确检测。关键方法集成了多个组件,以实现更好的IDS性能。采用JDAGEM进行高级预处理和特征提取。敏感信息由ped保护。自适应区块链分片协议允许可扩展、分布式和防篡改的处理。使用EVOA算法对CCNN参数进行调整,以增强泛化并减少误报。结果该框架使用BoT-IoT和UNSW-NB15数据集在基于物联网的真实攻击场景中进行了验证。与最先进的IDS技术相比,该系统的精度达到了99.7%,显著提高。这些发现证实,基于CCNN-EVOA的区块链集成IDS为当代支持物联网的云基础设施提供了可靠、可扩展和隐私保护的解决方案。
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引用次数: 0
An area-based computational algorithm for robust extrema detection in noisy environments 噪声环境下基于区域的鲁棒极值检测算法
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-22 DOI: 10.1016/j.ins.2025.123019
Madjid Tavana , Hosein Arman , Andreas Dellnitz
A variety of point-based heuristics and metaheuristics have been developed to approximate the global optimum of univariate functions. However, these Point-Based Search (PBS) algorithms often converge to local optima and fail to detect all extrema due to limited domain exploration. This study proposes an Area-Based Search (ABS) algorithm that systematically partitions the domain into uniformly spaced subintervals and evaluates the area under the curve in each segment. Subintervals with significantly larger or smaller areas than their neighbors are likely to contain local maxima or minima, respectively. We validate this idea on multimodal test functions using a Monte Carlo simulation framework with 1,000 trials. Across all noise levels in a standard benchmark function, ABS consistently detects all 16 local and global extrema. Intuitively, coverage measures the fraction of true extrema that an algorithm successfully recovers within a prescribed positional tolerance. Compared to Genetic Algorithms (GA), ABS achieves up to 37% higher detection accuracy under noise, with an average coverage improvement of 4.75% across all test cases. Additionally, ABS exhibited a 30.41% lower position error and a 36.89% lower value error than GA. The deterministic nature of ABS, with only one tunable resolution parameter, supports its use in noisy environments requiring full-spectrum extrema detection.
各种基于点的启发式方法和元启发式方法已经被发展用来逼近单变量函数的全局最优。然而,这些基于点的搜索(PBS)算法往往收敛于局部最优,并且由于有限的域探索而无法检测到所有的极值。本文提出了一种基于区域的搜索(area - based Search, ABS)算法,该算法系统地将区域划分为均匀间隔的子区间,并评估每个分段曲线下的面积。区域明显大于或小于相邻区域的子区间可能分别包含局部最大值或最小值。我们使用具有1000次试验的蒙特卡罗模拟框架在多模态测试函数上验证了这一想法。在标准基准功能的所有噪声级别中,ABS始终检测所有16个局部和全局极值。直观地说,覆盖率衡量的是算法在规定的位置容限内成功恢复的真极值的比例。与遗传算法(GA)相比,ABS在噪声下的检测精度提高了37%,所有测试用例的平均覆盖率提高了4.75%。ABS的位置误差比GA低30.41%,值误差比GA低36.89%。ABS的确定性特性,只有一个可调的分辨率参数,支持其在需要全频谱极端检测的嘈杂环境中使用。
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引用次数: 0
RWKV-SKF: A recurrent architecture with state-space and frequency-domain filtering for dissolved oxygen predicting and revealing influencing mechanisms RWKV-SKF:一种用于溶解氧预测和揭示影响机制的状态空间和频域滤波循环架构
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-20 DOI: 10.1016/j.ins.2025.123018
Peijian Zeng , Xingming Liao , Jianhui Xu , Shuisen Chen , Zhuowei Wang , Aimin Yang , Xingda Chen
Dissolved oxygen (DO) is a critical parameter for maintaining the ecological integrity of estuarine ecosystems. However, accurate DO prediction is hindered by measurement noise and complex periodic dynamics driven by tidal and seasonal cycles. To address these challenges, this study proposes a novel Recurrent Weighted Key-Value with State-Space Kalman and Fourier Filtering (RWKV-SKF) framework for enhanced DO forecasting. The RWKV-SKF integrates four specialized components: the Kalman Filtering Module (KFM) mitigates sensor noise; the Fourier Derivative Module (FDM) extracts dominant periodic features through spectral analysis; the Time Mix Module (TMM) captures short-term temporal dependencies; and the Channel Mix Module (CMM) models inter-variable interactions. By extending the RWKV architecture, the framework synergistically combines denoising, periodicity identification, and sequential learning. Experimental evaluations on both 4-hourly and daily DO monitoring datasets demonstrate that RWKV-SKF achieves state-of-the-art performance, reducing prediction errors by 0.97 % and 7.63 %, respectively, compared to the second-best model and attaining the lowest MSE of 0.5285 and 0.5499 among 19 baselines. These results highlight RWKV-SKF’s superior ability to handle noisy, cyclic DO dynamics, offering a robust solution for early warning and management of estuarine hypoxia.
溶解氧(DO)是维持河口生态系统生态完整性的重要参数。然而,测量噪声以及潮汐和季节周期驱动的复杂周期动力学影响了对DO的准确预测。为了解决这些挑战,本研究提出了一种新的循环加权键值与状态空间卡尔曼和傅立叶滤波(RWKV-SKF)框架,用于增强DO预测。RWKV-SKF集成了四个专用组件:卡尔曼滤波模块(KFM)减轻传感器噪声;傅里叶导数模(FDM)通过谱分析提取优势周期特征;时间混合模块(TMM)捕获短期时间依赖性;通道混合模块(CMM)模型变量间的相互作用。通过扩展RWKV体系结构,该框架协同地结合了去噪、周期性识别和顺序学习。在4小时和每日DO监测数据集上的实验评估表明,RWKV-SKF达到了最先进的性能,与次优模型相比,预测误差分别减少了0.97%和7.63%,并且在19条基线中获得了最低的MSE(0.5285和0.5499)。这些结果突出了RWKV-SKF处理噪声、循环DO动态的卓越能力,为河口缺氧的早期预警和管理提供了强大的解决方案。
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引用次数: 0
Adversarial game optimization: A game-theoretic metaheuristic for efficient complex optimization and engineering applications 对抗博弈优化:高效复杂优化和工程应用的博弈理论元启发式
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-20 DOI: 10.1016/j.ins.2025.123022
Conglin Li , Qingke Zhang , Junqing Li , Sichen Tao , Diego Oliva
Metaheuristic optimization algorithms have demonstrated strong performance when applied to complex nonlinear optimization tasks. However, their performance often degrades in high-dimensional and multimodal settings due to premature convergence and insufficient global search. To address these limitations, an Adversarial Game Optimization Algorithm (AGOA) is proposed, which constructs a metaheuristic optimization framework based on adversarial game mechanisms. AGOA integrates three mechanisms: (i) a dynamic role-based population partitioning strategy that assigns individuals as elites, explorers, or responders to balance exploration and exploitation; (ii) an adversarial feedback mechanism where worst-case responders introduce directed perturbations to counter elite dominance; and (iii) a diversity-preserving breakout strategy that monitors population stagnation and activates adaptive restarts. AGOA was tested on CEC 2017 (30D/50D/100D) and CEC 2022 (10D/20D), as well as applications including multi-threshold image segmentation, constrained engineering design, and UAV 3D path planning. Experimental evaluations indicate that AGOA achieves superior performance compared with 79 optimizers in solution quality, convergence behavior, and stability, achieving top rankings across all test categories. Theoretical analysis further establishes convergence to the global optimum in expectation and probability under mild conditions. Overall, AGOA offers a scalable and generalizable optimization framework with strong practical relevance. An open-access implementation of AGOA is provided at https://github.com/tsingke/AGOA.
元启发式优化算法在复杂的非线性优化任务中表现出了较强的性能。然而,由于过早收敛和不充分的全局搜索,它们的性能在高维和多模态环境下经常下降。针对这些局限性,提出了一种对抗博弈优化算法(AGOA),该算法基于对抗博弈机制构建了一个元启发式优化框架。AGOA整合了三种机制:(i)基于动态角色的群体划分策略,将个体分配为精英、探索者或应答者,以平衡探索和开发;(ii)对抗性反馈机制,其中最坏情况响应者引入定向扰动以对抗精英统治;(iii)保护多样性的突破策略,监测种群停滞并激活适应性重启。AGOA在CEC 2017 (30D/50D/100D)和CEC 2022 (10D/20D)上进行了测试,以及多阈值图像分割、约束工程设计、无人机三维路径规划等应用。实验评估表明,与79种优化器相比,AGOA在解决方案质量、收敛行为和稳定性方面表现优异,在所有测试类别中均名列前茅。理论分析进一步证明了在温和条件下,该算法在期望和概率上收敛于全局最优。总体而言,AGOA提供了一个可扩展、可推广的优化框架,具有很强的实际意义。在https://github.com/tsingke/AGOA上提供了AGOA的开放访问实现。
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引用次数: 0
A DBSCAN-enhanced niching differential evolution algorithm for solving nonlinear equations 求解非线性方程的一种dbscan增强小生境差分进化算法
IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-19 DOI: 10.1016/j.ins.2025.122996
Peng Wang , Yan Wang , Jie Jin
Nonlinear problems are frequently encountered in engineering fields, and most of the nonlinear problems can be modeled as nonlinear equations (NEs). Accordingly, quickly and correctly obtaining the solutions of NEs becomes particularly critical. However, most NEs have multiple roots, and efficiently locating all roots remains a challenging task. To address this issue, this work proposes a density-based spatial clustering of applications with noise (DBSCAN)-enhanced niche differential evolution (DBNDE) algorithm for solving NEs. By integrating a density-based clustering technique with niching technology, the proposed DBNDE algorithm achieves effective coordination between global exploration and local refinement. Specifically, the DBNDE algorithm dynamically partitions the population using density clustering, categorizing individuals into noise points, suboptimal solution clusters, and optimal solution clusters, thereby enhancing the efficiency of root identification. Additionally, it incorporates migration strategies to optimize solution distribution and employs an archive mechanism to preserve optimal solutions, improving the quality and stability of results. To substantiate the superiority of DBNDE, we carried out head-to-head comparisons with several classical algorithms on a benchmark set comprising thirty widely used and ten newly added NEs. Then, we conducted performance evaluations on two high-dimensional nonlinear problems. Results demonstrate that the proposed DBNDE algorithm effectively locates multiple roots of the NEs in a single run. Furthermore, the core parameter sensitivity analysis of the proposed DBNDE algorithm reveals its strong robustness to parameter settings, ensuring its stable performance across diverse problem sets.
非线性问题是工程领域中经常遇到的问题,大多数非线性问题都可以用非线性方程来建模。因此,快速、正确地获得网元的解就显得尤为重要。然而,大多数网元都有多个根,有效地定位所有根仍然是一项具有挑战性的任务。为了解决这一问题,本研究提出了一种基于密度的空间聚类应用与噪声(DBSCAN)增强的生态位差异进化(DBNDE)算法来求解网元。DBNDE算法将基于密度的聚类技术与小生境技术相结合,实现了全局搜索与局部优化的有效协调。DBNDE算法利用密度聚类对种群进行动态划分,将个体分为噪声点、次优解聚类和最优解聚类,从而提高了根识别的效率。此外,它结合了迁移策略来优化解决方案分布,并采用存档机制来保存最优解决方案,从而提高结果的质量和稳定性。为了证实DBNDE的优越性,我们在包含30个广泛使用的网元和10个新添加的网元的基准集上与几种经典算法进行了正面比较。然后,我们对两个高维非线性问题进行了性能评价。结果表明,DBNDE算法在一次运行中可以有效地定位到网元的多个根。此外,本文提出的DBNDE算法的核心参数敏感性分析表明,该算法对参数设置具有较强的鲁棒性,保证了算法在不同问题集上的稳定性能。
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引用次数: 0
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