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Directly Attention loss adjusted prioritized experience replay Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-25 Zhuoying Chen, Huiping Li, Zhaoxu Wang
Prioritized Experience Replay enables the model to learn more about relatively important samples by artificially changing their accessed frequencies. However, this non-uniform sampling method shifts the state-action distribution that is originally used to estimate Q-value functions, which brings about the estimation deviation. In this article, a novel off-policy reinforcement learning training framework
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Flexible and objective diagnosis of type II diabetes by using a fuzzy deep learning ensemble approach Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-25 Min-Chi Chiu, Tin-Chih Toly Chen, Yu-Cheng Wang
Deep learning (DL) applications have potential for improving the accuracy of type II diabetes diagnoses. However, existing DL applications for the diagnosis of type II diabetes have several drawbacks. For example, they maximize overall diagnostic performance rather than the diagnostic performance for each patient, they do not use objective rules to identify whether a patient has type II diabetes, and
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MSTNet: a multi-stage progressive network with local–global transformer fusion for image restoration Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-25 Ruyu Liu, Lin Wang, Jie He, Jiajia Wang, Jianhua Zhang, Xiufeng Liu, Chaochao Wang, Haoyu Zhang, Sheng Dai
Image restoration is a challenging and complex problem involving recovering the original clear image from a degraded or noisy image. In the medical field, image restoration techniques can significantly improve the quality of endoscopic images, helping doctors make more accurate diagnoses and providing higher-quality data support for computer vision-assisted detection. Existing methods for image restoration
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IKT-BT: Indirect Knowledge Transfer Behavior Tree Framework for Multirobot Systems Through Communication Eavesdropping IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-25 Sanjay Sarma Oruganti Venkata, Ramviyas Parasuraman, Ramana Pidaparti
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Event-Triggered Model-Free Adaptive Formation Constrained Control for Nonlinear Heterogeneous Multiagent Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-25 Weiming Zhang, Dezhi Xu, Yujian Ye, Wei Hua, Bin Jiang
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An Enhanced Detection Scheme and Distributed Resilient Asynchronous Event-Triggered Control of AC Microgrids Subject to Replay Attacks IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-25 Masoud Zare Shahabadi, Hajar Atrianfar, Hossein A. Abyaneh
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Metamodeling for robust design of energy harvesting devices using polynomial chaos expansion and artificial neural networks Comput. Struct. (IF 4.4) Pub Date : 2025-04-25 Paulo Henrique Martins, Ramiro J. Chamorro Coneo, Auteliano Antunes dos Santos Jr
The generation of electrical energy using piezoelectric devices represents a promising alternative due to the high charge density these materials can generate. Cantilever beam devices modeled using finite element methods are commonly used in studies focused on the conversion of mechanical energy into electrical energy. With this, the influence of specific variables and parameters can be analyzed through
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Deep learning-based post-earthquake structural damage level recognition Comput. Struct. (IF 4.4) Pub Date : 2025-04-25 Xiaoying Zhuang, Than V. Tran, H. Nguyen-Xuan, Timon Rabczuk
Rapid assessment of building damage levels has become very important and has received considerable attention in structural engineering. Traditional methods for this work involve manual inspection, which is often tedious and time-consuming. Deep learning technology in computer vision has developed rapidly in recent years and has proven its superiority. This paper aims to develop an efficient approach
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VTformer: a novel multiscale linear transformer forecaster with variate-temporal dependency for multivariate time series Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-24 Rui Dai, Zheng Wang, Jing Jie, Wanliang Wang, Qianlin Ye
Recently, the prosperity of linear models has raised questions about capturing the sequential capabilities of Transformer forecasters. Although the latest Transformer-based studies have alleviated some of these concerns, the limited information utilization still constrains the model’s comprehensive exploration of complex dependencies, as these forecasters often prioritize global dependence on time
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An edge enhancement graph neural network model with node discrimination for knowledge graph representation learning Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-24 Tao Wang, Bo Shen
The vectorized representation of a knowledge graph is essential for effectively utilizing its implicit knowledge. Graph neural networks (GNNs) are particularly adept at learning graph representations due to their ability to handle graph topologies. However, GNN-based approaches face two main challenges: first, they fail to differentiate between the types of adjacent nodes during the information aggregation
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Adaptive Dictionary Learning for Multiview Subspace Clustering IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-24 Xu Chen, Zhiwen Yu, Ziwei Fan, Kaixiang Yang, C. L. Philip Chen
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Reinforcement-Learning-Based Finite Time Fault Tolerant Control for a Manipulator With Actuator Faults IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-24 Pengxin Yang, Shuang Zhang, Xinbo Yu, Wei He
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Adaptive Nussbaum Design for Nonholonomic Systems With Asymptotic Stabilization Against False Data Injection IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-24 Guilong Liu, Yongliang Yang, Weinan Gao, Donald C. Wunsch
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A probabilistic semi-explicit model for crack propagation in concrete structures under dynamic loading Comput. Struct. (IF 4.4) Pub Date : 2025-04-24 Gustavo Luz Xavier da Costa, Pierre Rossi, Mariane Rodrigues Rita, Magno Teixeira Mota, Rodolfo Giacomim Mendes de Andrade, Eduardo de Moraes Rego Fairbairn
In this paper, concrete cracking is investigated in dynamics through finite element modeling. A probabilistic approach is employed to translate the effects of material heterogeneity on tensile strength and fracture energy. Both parameters depend on compressive strength and heterogeneity degree (volumetric ratio between finite element and largest aggregate). Material softening is modeled through damage
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Generalized reconfigurations and growth mechanics of biological structures considering regular and irregular features: A computational study Comput. Struct. (IF 4.4) Pub Date : 2025-04-24 Nasser Firouzi, Krzysztof Kamil Żur, Timon Rabczuk, Xiaoying Zhuang
Many soft biological structures have natural features of viscoelastic and hyperelastic materials. Research focused on the growth biomechanics of these structures is challenging from theoretical and experimental points of view, especially when irregular forms/defects of biological objects should be considered. To this aim, an effort is made in this paper to develop a general nonlinear finite element
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Stochastic static finite element model updating using the Bayesian method integrating homotopy surrogate model Comput. Struct. (IF 4.4) Pub Date : 2025-04-24 Bin Huang, Ming Sun, Hui Chen, Zhifeng Wu
The Bayesian model updating method usually involves tens of thousands of finite element model calculations, which will bring huge computational costs to large structures such as bridges. To reduce the computational costs, this paper develops a highly efficient Bayesian model updating method based on a new static homotopy surrogate model. The new surrogate model is established on the basis of the finite
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Quantitative estimation method for complex part surface defects based on multimodal information fusion Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-23 Rui Wang, Wei Du, Qingchao Jiang
Surface quality is critical for the performance of high-end equipment, with defects potentially leading to severe operational failures. Current defect detection methods face challenges: 2D imaging lacks the ability to capture scratch depth, limiting quantitative damage assessment, while 3D point cloud methods are costly and time-consuming, hindering scalability in manufacturing. This study proposes
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A few-shot learning-based dual-input neural network for complex spectrogram recognition system with millimeter-wave radar Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-23 Kaiyu Chen, Shaoxi Wang, Wei Li, Yucheng Wang, Cunqian Feng, Yannian Zhou, Jian Cao, Binfeng Zong, Minming Gu
Graph data-driven machine learning methods for human activity recognition (HAR) have achieved success recently using sufficient data. In the realm of everyday life, we encounter a notable challenge: the scarcity of labeled radar samples. This limitation is compounded by the stark disparities in data distribution between simulated and measured activity domains. In this article, a generalized graph contrastive
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An extended TOPSIS technique based on correlation coefficient for interval-valued q-rung orthopair fuzzy hypersoft set in multi-attribute group decision-making Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-23 Rana Muhammad Zulqarnain, Imran Siddique, Sameh Askar, Ahmad M. Alshamrani, Dragan Pamucar, Vladimir Simic
The accurate determination of results in decision analysis is usually predicated on the association between two factors. Although generating data for analytical purposes presents an apparent hurdle, the data obtained may present hurdles in its interpretation. Correlation coefficients can be used to analyze the interaction between two factors and their variations. These coefficients deliver an objective
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M2FNet: multi-modality multi-level fusion network for segmentation of acute and sub-acute ischemic stroke Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-23 Shannan Chen, Xuanhe Zhao, Yang Duan, Ronghui Ju, Peizhuo Zang, Shouliang Qi
Ischemic stroke, a leading cause of death and disability, necessitates accurate detection and automatic segmentation of lesions. While diffusion weight imaging is crucial, its single modality limits the detection of subtle lesions and artifacts. To address this, we propose a multi-modality, multi-level fusion network (M2FNet) that aggregates salient features from different modalities across various
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Analysis of quantum fully homomorphic encryption schemes (QFHE) and hierarchial memory management for QFHE Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-23 Shreya Savadatti, Aswani Kumar Cherukuri, Annapurna Jonnalagadda, Athanasios V. Vasilakos
Homomorphic encryption is a recent and fundamental breakthrough in modern cryptography, which allows the performance of operations on encrypted data without unveiling the data. Leveraging quantum mechanics principles, quantum computers can potentially solve certain computational problems exponentially faster than classical computers. This immense computational power offers new possibilities for various
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Hyper-Heuristic Optimization Using Multifeature Fusion Estimator for PCB Assembly Lines With Linear-Aligned-Heads Surface Mounters IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-23 Guangyu Lu, Huijun Gao, Zhengkai Li, Xinghu Yu, Tong Wang, Jianbin Qiu, Juan J. Rodríguez-Andina
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Multiscale Skeleton-Based Temporal Action Segmentation Using Hierarchical Temporal Modeling and Prediction Ensemble IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-23 Bowen Chen, Wei Nie, Haoyu Ji, Weihong Ren, Qiyi Tong, Zhiyong Wang, Honghai Liu
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Fixed-Time Distributed Average Tracking for a Class of Nonlinear Multiagent Systems With Unity Relative Degree IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-23 Qingpeng Liang, Deqing Huang, Lei Ma, Jiangping Hu, Linying Xiang, Yanzhi Wu
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Transfer learning-based artificial neural networks for hysteresis response prediction of steel braces Comput. Struct. (IF 4.4) Pub Date : 2025-04-23 Sepehr Pessiyan, Fardad Mokhtari, Ali Imanpour
This paper proposes a novel data-driven surrogate model for predicting the hysteresis response, i.e., axial force – axial deformation, of steel braces in concentrically braced frames under seismic loading using transfer learning-based artificial neural networks. Transfer learning is utilized to leverage pre-trained baseline long short-term memory networks and transfer its knowledge to the new hysteresis
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Contrastive cross-domain sequential recommendation with attention-aware mechanism Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Wei Zhao, Bo Li, Xian Mo
Cross-domain sequential recommendation (CDSR) aims to predict future sequential interactions in a target domain by analyzing historical sequence data from different domains. A significant challenge in CDSR is the accurate capture of user preferences based on the target domain and multiple domains. Existing methodologies to enhance the performance of the target domain primarily focus on learning preferences
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An adaptive dual distillation framework for efficient remaining useful life prediction Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Xiang Cheng, Jun Kit Chaw, Shafrida Sahrani, Mei Choo Ang, Saraswathy Shamini Gunasekaran, Moamin A. Mahmoud, Halimah Badioze Zaman, Yanfeng Zhao, Fuchen Ren
Predicting the Remaining Useful Life (RUL) of industrial equipment is essential for proactive maintenance and health assessment, particularly under the computational constraints of edge devices. While deep learning methods, such as Long Short-Term Memory (LSTM) networks, excel at modeling complex time series, their high computational cost often restricts real-time deployment. To address this challenge
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Unsupervised feature selection based on generalized regression model with linear discriminant constraints Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Xiangguang Dai, Mingyu Guan, Facheng Dai, Wei Zhang, Tingji Zhang, Hangjun Che, Xiangqin Dai
Unsupervised feature selection (UFS) methods play a crucial role in improving the efficiency of extracting relevant information and reducing computational complexity in the context of big data analysis. Despite notable advancements in the field of unsupervised feature selection for large-scale datasets, many UFS methods still remain redundant and irrelevant features during the feature selection process
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Multi-objective recommendation system utilizing a multi-population knowledge migration framework Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Liang Chu, Ye Tian
Traditional recommendation systems tend to focus on accuracy and prefer recommending popular items, resulting in non-popular items rarely being exposed to users. However, recommending non-popular items to enhance users’ novelty experience is also crucial. Currently, many researchers are dedicated to multi-objective recommendation studies. Nevertheless, existing multi-objective recommendation algorithms
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Adaptive integrated weight unsupervised multi-source domain adaptation without source data Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Zhirui Wang, Liu Yang, Yahong Han
Unsupervised multi-source domain adaptation methods transfer knowledge learned from multiple labeled source domains to an unlabeled target domain. Existing methods assume that all source domain data can be accessed directly. However, such an assumption is unrealistic and causes data privacy concerns, especially when the source domain labels include personal information. In such a setting, it is prohibited
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DFL topology optimization based on peer weighting mechanism and graph neural network in digital twin platform Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Nguyen Anh Tuan, Atif Rizwan, Sa Jim Soe Moe, Anam Nawaz Khan, Do Hyeun Kim
Decentralized federated learning (DFL) represents a distributed learning framework where participating nodes independently train local models and exchange model updates with proximate peers, circumventing the reliance on a centralized orchestrator. This paradigm effectively mitigates server-induced bottlenecks and eliminates single points of failure, which are inherent limitations of centralized federated
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Assessment of air purifiers for improving the air quality index using circular intuitionistic fuzzy Heronian means Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Fengyu Guo, Raiha Imran, Shi Yin, Kifayat Ullah, Maria Akram, Dragan Pamucar, Mustafa Elashiry
The impact of airborne pollutants present in the environment, entering the body through breathing, can cause significant risks of respiratory and heart-related health problems for individuals. For this, different air purifiers are commonly used to eliminate delicate particulate matter PM2.5, and various studies have examined their effectiveness. This paper aims to analyze airborne pollutants and, by
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Encoding local label correlations in multi-instance multi-label learning with an improved multi-objective particle swarm optimization Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-22 Xiang Bao, Fei Han, Qinghua Ling
Label correlations, as important prior information, are essential to enhance the classification performance in Multi-Instance Multi-Label (MIML) algorithms, but existing models always leverage global label correlations which are less informative. Furthermore, classifier optimization is also crucial for MIML classification results, previous works do not frequently seek to optimize multi objectives simultaneously
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Fixed/Prescribed-Time Synchronization and Energy Consumption for Kuramoto-Oscillator Networks IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-22 Zhenfeng Ma, Dongbing Tong, Qiaoyu Chen, Wuneng Zhou
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Group Role Three-Way Assignment for Managing Uncertainty in Role Negotiation IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-22 Shiyu Wu, Shenglin Li, Haibin Zhu, Rui Chen, Libo Zhang
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Toward In-Depth Mastery of Statistical Properties: Novel Stationary Moment Analysis With Application to Continuous Industrial Anomaly Detection IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-22 Siwei Lou, Chunjie Yang, Weibin Wang, Hanwen Zhang, Yuchen Zhao, Ping Wu
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Fast UAV Object-Searching in Large-Scale and Complex Environments IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-22 Hai Lin, Xinsong Yang, Guanghui Wen, Wei Xing Zheng
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Distributed Secure State Estimation and Attack Detection for Dynamical Systems With Attacks on a Time-Varying Sensor Set IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-22 Guangran Lyu, Xiao He
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A new three-dimensional model of train-track-bridge coupled system based on meshless method and its graph neural network-based surrogate model Comput. Struct. (IF 4.4) Pub Date : 2025-04-22 Zhanjun Shao, Peng Zhang, Xiaonan Xie, Zihe Wang, Xuan Peng, Zefeng Liu, Yufei Chen, Ping Xiang
A model of train–track–bridge coupled system is proposed to study the interactions between structures in greater detail. The new model employs a meshless method to numerically simulate the box girder bridge and track slab. In the dynamic analysis, the system at each time step is abstracted into a graph structure and trained using a graph neural network to develop a surrogate prediction model. The graph
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Simulation of the TNT-based melt-cast explosive charging process using hot mandrel assisted solidification Comput. Struct. (IF 4.4) Pub Date : 2025-04-22 Xuezhen Zhai, Yongjia Zhang, Ge Kang, Pengwan Chen
The melt-cast charging process, widely used in warheads for its adaptability, cost efficiency, and automation, requires optimization to minimize defects such as shrinkage cavities and porosity that compromise explosive quality, destructive power, and safety, particularly in large-volume munitions. The hot mandrel technique, by providing localized heating during solidification, helps maintain an open
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Computing the dynamic response of periodic waveguides with nonlinear boundaries using the wave finite element method Comput. Struct. (IF 4.4) Pub Date : 2025-04-22 Vincent Mahé, Adrien Mélot, Benjamin Chouvion, Christophe Droz
A new method to compute the dynamic response of periodic waveguides with localised nonlinearities is introduced and used to investigate the nonlinear shift of a band-edge mode in the bandgap of a locally resonant phononic structure. This nonlinear extension of the Wave Finite Element Method (WFEM) uses a finite-element discretisation of arbitrarily complex unit-cells, and leverages Floquet–Bloch theory
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A Constructive Approach for Neural Network Approximation Sets in Adaptive Control of Strict-Feedback Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-21 Yu-Fa Liu, Yong-Hua Liu, Jin-Wa Wu, Ante Su, Chun-Yi Su, Renquan Lu
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A security authentication and key agreement scheme for railway space-ground integrated network based on ideal lattice J. Netw. Comput. Appl. (IF 7.7) Pub Date : 2025-04-21 Yong Chen, Zhaofeng Xin, Bingwang Zhang, Junli Jia
At present, the Global System for Mobile Communications- Railway (GSM-R) is widely used in high-speed railway, but it is a 2G narrowband system that cannot meet the needs of intelligent development of high-speed railways. In the future, space-ground integrated railway communication network will gradually become an inevitable trend of railway development. Aiming at the problems of identity non-mutual
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DRacv: Detecting and auto-repairing vulnerabilities in role-based access control in web application J. Netw. Comput. Appl. (IF 7.7) Pub Date : 2025-04-20 Ke Xu, Bing Zhang, Jingyue Li, Haitao He, Rong Ren, Jiadong Ren
Traditional methods for analyzing Broken Access Control (BAC) vulnerabilities have limitations regarding low coverage of access control rules, high false positive rate (FPR). Additionally, state-of-the-art strategies for repairing BAC vulnerabilities utilizing statement-level replacement as a repair method may introduce new logical errors. To address these challenges, we propose a novel approach called
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Resource state adaptive collaboration mechanism based on resource modeling and multi-agent system Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Zhengzuo Li, Chengxi Piao, Dianhui Chu, Zhiying Tu, Xin Hu, Deqiong Ding
The management of complex, dynamic, and cross-domain resources in cyber-physical-human systems (CPHS) faces significant challenges under spatiotemporal dynamics, particularly resource state conflicts caused by rapid environmental changes and interdependent resource interactions. To address these challenges, this study proposes an integrated framework combining resource modeling and resource state adaptive
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Hierarchical reinforcement learning based on macro actions Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Hao Jiang, Gongju Wang, Shengze Li, Jieyuan Zhang, Long Yan, Xinhai Xu
The large action space is a key challenge in reinforcement learning. Although hierarchical methods have been proven to be effective in addressing this issue, they are not fully explored. This paper combines domain knowledge with hierarchical concepts to propose a novel Hierarchical Reinforcement Learning framework based on macro actions (HRL-MA). This framework includes a macro action mapping model
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Fleet formation identification and analyzing method based on disposition feature for remote sensing Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Fangli Mou, Zide Fan, Chuan’ao Jiang, Keqing Zhu, Lei Wang, Xinming Li
Fleet formation identification in remote sensing is a significant focus in maritime surveillance. However, fleet may occur with different ship dense and noisy data due to the complex background and different satellite resolution, few studies have discussed formation identification considering the limits of sensing and application. This study introduces an effective fleet formation identification and
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Jointly adaptive cross-resolution person re-identification on super-resolution Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Caihong Yuan, Zhijie Guan, Yuanchen Xu, Xiaopan Chen, Xiaoke Zhu, Wenjuan Liang
Cross-resolution Person Re-identification (ReID) faces the significant challenge of large resolution variance across different camera views in real surveillance systems. Most approaches based on super-resolution (SR) excessively rely on the SR images, which may lead to the loss of low-resolution (LR) information. Meanwhile, the region-agnostic SR could pose interference to ReID. For this, we propose
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Energy-based open set domain adaptation with dynamic weighted synergistic mechanism Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Zihao Fu, Dong Liu, Shengsheng Wang, Hao Chai
Open Set Domain Adaptation (OSDA) aims to minimize domain variation while distinguishing between known and unknown samples. However, existing OSDA methods, which rely on deep neural network classifiers, often lead to overconfident predictions and fail to clearly demarcate known from unknown samples. To address this limitation, we propose the Energy-based Open Set domain adaptation (EOS) method. EOS
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A segmented differential evolution with enhanced diversity and semi-adaptive parameter control Complex Intell. Syst. (IF 5.0) Pub Date : 2025-04-19 Huarong Xu, Zhiyu Zhang, Qianwei Deng, Shengke Lin
Differential evolution (DE) is widely recognized as one of the most potent optimization algorithms, capable of effectively addressing a broad spectrum of optimization challenges. Nevertheless, even the most advanced variants of DE share some common challenges. This paper introduces a novel multi-stage semi-adaptive DE algorithm with enhanced diversity (MSA-DE), offering several key contributions: first
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Variational Deep Clustering approaches for anomaly-based cyber-attack detection J. Netw. Comput. Appl. (IF 7.7) Pub Date : 2025-04-19 Van Quan Nguyen, Viet Hung Nguyen, Long Thanh Ngo, Le Minh Nguyen, Nhien-An Le-Khac
Detecting network anomalies is a critical cybersecurity task, yet existing methods struggle with high-dimensional data and limited interpretability in latent space. These challenges hinder precise differentiation between normal and anomalous activities due to (i) the chaotic distribution of normal samples, (ii) the absence of constraints to optimize the normal region’s hypervolume leading to high false
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A verifiable query scheme with rich query capabilities and low storage redundancy on blockchain Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2025-04-19 Linkun Sun, Luqi Wang, Wenbao Jiang, Yangnan Guo
In current blockchain verifiable query research, redundant storage of data to be indexed is often required to enable efficient and feature-rich query algorithms. However, most blockchains currently face the problem of rapid data growth, leading to significant storage resource consumption by nodes. To provide a high-efficiency and generic verifiable query capability while reducing the storage burden
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Federated learning for heterogeneous neural networks with layer similarity relations in Cloud–Edge–End scenarios Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2025-04-19 Rao Fu, Yongqiang Gao, Zijian Qiao
Federated Learning (FL) aims to allow numerous clients to participate in collaborative training in an efficient communication manner without exchanging private data. Traditional FL assumes that all clients have sufficient local resources to train models with the same architecture, and does not consider the reality that clients may struggle to deploy the same model across devices with varying computational
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Structure mode shapes classification using graph convolutional networks in automotive application Comput. Struct. (IF 4.4) Pub Date : 2025-04-19 Sitthichart Tohmuang, Mohammad Fard, Pier Marzocca, James L. Swayze, John E. Huber, Haytham M. Fayek
Classifying vibration mode shapes of a structure in an engineering design cycle can be a labor intensive and repetitive task. Although several methods have been proposed to automatically classify mode shapes, most existing models cannot fully represent mode shapes using both structural and modal information, limiting their application to specific structures. In this paper, we propose a graph convolutional
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Knowledge Learning-Based Dimensionality Reduction for Solving Large-Scale Sparse Multiobjective Optimization Problems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-18 Shuai Shao, Ye Tian, Yajie Zhang, Xingyi Zhang
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Correlation Information Enhanced Graph Anomaly Detection via Hypergraph Transformation IEEE Trans. Cybern. (IF 9.4) Pub Date : 2025-04-18 Changqin Huang, Chengling Gao, Ming Li, Yongzhi Li, Xizhe Wang, Yunliang Jiang, Xiaodi Huang