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Towards fairness-aware multi-objective optimization Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-20 Guo Yu, Lianbo Ma, Xilu Wang, Wei Du, Wenli Du, Yaochu Jin
Recent years have seen the rapid development of fairness-aware machine learning in mitigating unfairness or discrimination in decision-making in a wide range of applications. However, much less attention has been paid to the fairness-aware multi-objective optimization, which is indeed commonly seen in real life, such as fair resource allocation problems and data-driven multi-objective optimization
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Low-frequency spectral graph convolution networks with one-hop connections information for personalized tag recommendation Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-19 Zhengshun Fei, Haotian Zhou, Jinglong Wang, Gui Chen, Xinjian Xiang
Graph neural networks (GNNs) have gained prominence as an effective technique for representation learning and have found wide application in tag recommendation tasks. Existing approaches aim to encode the hidden collaborative information among entities into embedding representations by propagating node information between connected nodes. However, in sparse observable graph structures, a significant
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A decentralized feedback-based consensus model considering the consistency maintenance and readability of probabilistic linguistic preference relations for large-scale group decision-making Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-19 Xian-Yong Zhang, Yi-Yang Zhou, Jian-Lan Zhou
With the enrichment of large-scale group decision-making (LSGDM) methods, the decentralized consensus reaching process (CRP) has demonstrated many advantages. However, when the probabilistic linguistic preference relation (PLPR) is utilized in the decentralized CRP, its consistency and readability are hardly to maintain. Besides, the low-cost consensus adjustment and non-cooperative behaviors of subgroups
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Interval Secure Event-Triggered Mechanism for Load Frequency Control Active Defense Against DoS Attack IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-19 Zihao Cheng, Songlin Hu, Dong Yue, Xuhui Bu, Xiaolong Ruan, Chenggang Xu
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Prediction of nonlinear dynamic responses and generation of seismic fragility curves for steel moment frames using boosting machine learning techniques Comput. Struct. (IF 4.4) Pub Date : 2024-11-19 Farzaneh Zareian, Mehdi Banazadeh, Mohammad Sajjad Zareian
The main objective of this paper is to develop machine learning (ML) models for predicting the seismic responses of steel moment frames. For this purpose, four boosting ML techniques-gradient boosting, XGBoost, LightGBM, and CatBoost-were developed in Python. To create an inclusive dataset, 92,400 nonlinear time-history analyses were performed on 1,848 steel moment frames under 50 earthquakes using
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Multimodal heterogeneous graph fusion for automated obstructive sleep apnea-hypopnea syndrome diagnosis Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-18 Haoyu Wang, Xihe Qiu, Bin Li, Xiaoyu Tan, Jingjing Huang
Polysomnography is the diagnostic gold standard for obstructive sleep apnea-hypopnea syndrome (OSAHS), requiring medical professionals to analyze apnea-hypopnea events from multidimensional data throughout the sleep cycle. This complex process is susceptible to variability based on the clinician’s experience, leading to potential inaccuracies. Existing automatic diagnosis methods often overlook multimodal
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Enhancing classification efficiency in capsule networks through windowed routing: tackling gradient vanishing, dynamic routing, and computational complexity challenges Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-18 Gangqi Chen, Zhaoyong Mao, Junge Shen, Dongdong Hou
Capsule networks overcome the two drawbacks of convolutional neural networks: weak rotated object recognition and poor spatial discrimination. However, they still have encountered problems with complex images, including high computational cost and limited accuracy. To address these challenges, this work has developed effective solutions. Specifically, a novel windowed dynamic up-and-down attention
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A dynamic preference recommendation model based on spatiotemporal knowledge graphs Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-18 Xinyu Fan, Yinqin Ji, Bei Hui
Recommender systems are of increasing importance owing to the growth of social networks and the complexity of user behavior, and cater to the personalized needs of users. To improve recommendation performance, several methods have emerged and made a combination of knowledge graphs and recommender systems. However, the majority of approaches faces issues like overlooking spatiotemporal features and
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Pri-DDQN: learning adaptive traffic signal control strategy through a hybrid agent Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-18 Yanliu Zheng, Juan Luo, Han Gao, Yi Zhou, Keqin Li
Adaptive traffic signal control is the core of the intelligent transportation system (ITS), which can effectively reduce the pressure on traffic congestion and improve travel efficiency. Methods based on deep Q-leaning network (DQN) have become the mainstream to solve single-intersection traffic signal control. However, most of them neglect the important difference of samples and the dependence of
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Granular Computing for Machine Learning: Pursuing New Development Horizons IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Witold Pedrycz
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Bayesian Transfer Filtering Using Pseudo Marginal Measurement Likelihood IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Shunyi Zhao, Tianyu Zhang, Yuriy S. Shmaliy, Xiaoli Luan, Fei Liu
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Collaborative Multimodal Fusion Network for Multiagent Perception IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Lei Zhang, Binglu Wang, Yongqiang Zhao, Yuan Yuan, Tianfei Zhou, Zhijun Li
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Safe Reinforcement Learning: Optimal Formation Control With Collision Avoidance of Multiple Satellite Systems IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Hui Yu, Liqian Dou, Xiuyun Zhang, Jinna Li, Qun Zong
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A Hierarchical Surrogate-Assisted Differential Evolution With Core Space Localization IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Laiqi Yu, Zhenyu Meng, Haibin Zhu
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Observer-Based Human-in-the-Loop Optimal Output Cluster Synchronization Control for Multiagent Systems: A Model-Free Reinforcement Learning Method IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Zongsheng Huang, Tieshan Li, Yue Long, Hongjing Liang
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Distributed Secure Control for Nonlinear Descriptor Multiagent Systems With Unknown Inputs Under Denial-of-Service Attacks IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-18 Tianbiao Shi, Fanglai Zhu
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Bearing capacity analysis of RC slabs under cyclic loads: Dual numerical approaches Comput. Struct. (IF 4.4) Pub Date : 2024-11-16 Phuc L.H. Ho, Canh V. Le, Dung T. Tran, Phuong H. Nguyen, Jurng-Jae Yee
Shakedown analysis is a powerful and efficient tool for calculating the safety factors of structures under variable and repeated external quasi-static loads, that can prevent structures from incremental and alternative plasticity collapses. RC slabs in practical engineering applications are usually under long-tern variable and cyclic loads, but their fatigue behavior was rarely reported in the literature
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Material parameter sensitivity analysis for intralaminar damage of laminated composites through direct differentiation Comput. Struct. (IF 4.4) Pub Date : 2024-11-16 P. Minigher, A. Arteiro, A. Turon, J. Fatemi, L. Barrière, P.P. Camanho
Understanding the effect of the material parameters variability on the mechanical response of laminated composites is of great importance for many engineering problems. Not only an accurate sensitivity analysis enables to estimate how much each parameter under consideration affects the response, but the linearization of the output provides also the possibility to, for example, use gradient-based optimization
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ATBHC-YOLO: aggregate transformer and bidirectional hybrid convolution for small object detection Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 Dandan Liao, Jianxun Zhang, Ye Tao, Xie Jin
Object detection using UAV images is a current research focus in the field of computer vision, with frequent advancements in recent years. However, many methods are ineffective for challenging UAV images that feature uneven object scales, sparse spatial distribution, and dense occlusions. We propose a new algorithm for detecting small objects in UAV images, called ATBHC-YOLO. Firstly, the MS-CET module
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Enhancing misogyny detection in bilingual texts using explainable AI and multilingual fine-tuned transformers Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 Ehtesham Hashmi, Sule Yildirim Yayilgan, Muhammad Mudassar Yamin, Mohib Ullah
Gendered disinformation undermines women’s rights, democratic principles, and national security by worsening societal divisions through authoritarian regimes’ intentional weaponization of social media. Online misogyny represents a harmful societal issue, threatening to transform digital platforms into environments that are hostile and inhospitable to women. Despite the severity of this issue, efforts
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Influence maximization under imbalanced heterogeneous networks via lightweight reinforcement learning with prior knowledge Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 Kehong You, Sanyang Liu, Yiguang Bai
Influence Maximization (IM) stands as a central challenge within the domain of complex network analysis, with the primary objective of identifying an optimal seed set of a predetermined size that maximizes the reach of influence propagation. Over time, numerous methodologies have been proposed to address the IM problem. However, one certain network referred to as Imbalanced Heterogeneous Networks (IHN)
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Deep weighted survival neural networks to survival risk prediction Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 Hui Yu, Qingyong Wang, Xiaobo Zhou, Lichuan Gu, Zihao Zhao
Survival risk prediction models have become important tools for clinicians to improve cancer treatment decisions. In the medical field, using gene expression data to build deep survival neural network models significantly improves accurate survival prognosis. However, it still poses a challenge in building an efficient method to improve the accuracy of cancer-specific survival risk prediction, such
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Enhancing zero-shot relation extraction with a dual contrastive learning framework and a cross-attention module Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 Diyou Li, Lijuan Zhang, Jie Huang, Neal Xiong, Lei Zhang, Jian Wan
Zero-shot relation extraction (ZSRE) is essential for improving the understanding of natural language relations and enhancing the accuracy and efficiency of natural language processing methods in practical applications. However, the existing ZSRE models ignore the importance of semantic information fusion and possess limitations when used for zero-shot relation extraction tasks. Thus, this paper proposes
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Theoretical understanding of gradients of spike functions as boolean functions Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-15 DongHyung Yoo, Doo Seok Jeong
Applying an error-backpropagation algorithm to spiking neural networks frequently needs to employ fictive derivatives of spike functions (popularly referred to as surrogate gradients) because the spike function is considered non-differentiable. The non-differentiability comes into play given that the spike function is viewed as a numeric function, most popularly, the Heaviside step function of membrane
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SAT-Net: A staggered attention network using graph neural networks for encrypted traffic classification J. Netw. Comput. Appl. (IF 7.7) Pub Date : 2024-11-15 Zhiyuan Li, Hongyi Zhao, Jingyu Zhao, Yuqi Jiang, Fanliang Bu
With the increasing complexity of network protocol traffic in the modern network environment, the task of traffic classification is facing significant challenges. Existing methods lack research on the characteristics of traffic byte data and suffer from insufficient model generalization, leading to decreased classification accuracy. In response, we propose a method for encrypted traffic classification
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Theoretical study of multipoint ground motion characteristics under V-shaped site induced P1 wave Comput. Struct. (IF 4.4) Pub Date : 2024-11-15 Feng Guang-rui, Xie Li-quan
An advanced analytical technique known as the Oblique Coordinate Wave Function Integral Method builds on Biot’s wave theory for saturated porous material, has been developed to address seismic wave scattering in irregular media. This method employs an integral representation of scattered waves, solved by using an oblique coordinate transformation within a rectangular coordinate system with wave function
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DADNet: text detection of arbitrary shapes from drone perspective based on boundary adaptation Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-14 Jun Liu, Jianxun Zhang, Ting Tang, Shengyuan Wu
The rapid development of drone technology has made drones one of the essential tools for acquiring aerial information. The detection and localization of text information through drones greatly enhance their understanding of the environment, enabling tasks of significant importance such as community commercial planning and autonomous navigation in intelligent environments. However, the unique perspective
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Relieving popularity bias in recommendation via debiasing representation enhancement Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-14 Junsan Zhang, Sini Wu, Te Wang, Fengmei Ding, Jie Zhu
The interaction data used for training recommender systems often exhibit a long-tail distribution. Such highly imbalanced data distribution results in an unfair learning process among items. Contrastive learning alleviates the above issue by data augmentation. However, it lacks consideration of the significant disparity in popularity between items and may even introduce false negatives during the data
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Two-stage deep reinforcement learning method for agile optical satellite scheduling problem Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-14 Zheng Liu, Wei Xiong, Zhuoya Jia, Chi Han
This paper investigates the agile optical satellite scheduling problem, which aims to arrange an observation sequence and observation actions for observation tasks. Existing research mainly aims to maximize the number of completed tasks or the total priorities of the completed tasks but ignores the influence of the observation actions on the imaging quality. Besides, the conventional exact methods
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Mix-layers semantic extraction and multi-scale aggregation transformer for semantic segmentation Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-14 Tianping Li, Xiaolong Yang, Zhenyi Zhang, Zhaotong Cui, Zhou Maoxia
Recently, a number of vision transformer models for semantic segmentation have been proposed, with the majority of these achieving impressive results. However, they lack the ability to exploit the intrinsic position and channel features of the image and are less capable of multi-scale feature fusion. This paper presents a semantic segmentation method that successfully combines attention and multiscale
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Segment anything model for few-shot medical image segmentation with domain tuning Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-14 Weili Shi, Penglong Zhang, Yuqin Li, Zhengang Jiang
Medical image segmentation constitutes a crucial step in the analysis of medical images, possessing extensive applications and research significance within the realm of medical research and practice. Convolutional neural network achieved great success in medical image segmentation. However, acquiring large labeled datasets remains unattainable due to the substantial expertise and time required for
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Online Trajectory Planning Method for Autonomous Ground Vehicles Confronting Sudden and Moving Obstacles Based on LSTM-Attention Network IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-14 Zhida Xing, Runqi Chai, Kaiyuan Chen, Yuanqing Xia, Senchun Chai
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Data-Driven Event-Triggered Sliding Mode Secure Control for Autonomous Vehicles Under Actuator Attacks IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-14 Hong-Tao Sun, Xinran Chen, Zhengqiang Zhang, Xiaohua Ge, Chen Peng
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Bridge roughness scanned by Dual-Wheeled 3D test vehicle and processed by augmented Kalman filter: Theory and application Comput. Struct. (IF 4.4) Pub Date : 2024-11-14 Z. Li, Z. Liu, Z.L. Wang, W.Y. He, B.Q. Wang, Y. He, Y.B. Yang
A novel method is presented for estimating the bridge surface roughness scanned by a single-axle dual-wheeled 3D test vehicle and processed by an augmented Kalman filter (AKF). Two acceleration sensors are installed atop the axle near the two wheels of the vehicle to measure its vertical and rocking motions. Meanwhile, the Kalman filter algorithm is augmented specially for the vehicle-bridge interaction
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LCANet: a model for analysis of students real-time sentiment by integrating attention mechanism and joint loss function Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Pengyun Hu, Xianpiao Tang, Liu Yang, Chuijian Kong, Daoxun Xia
By recognizing students’ facial expressions in actual classroom situations, the students’ emotional states can be quickly uncovered, which can help teachers grasp the students’ learning rate, which allows teachers to adjust their teaching strategies and methods, thus improving the quality and effectiveness of classroom teaching. However, most previous facial expression recognition methods have problems
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IEDSFAN: information enhancement and dynamic-static fusion attention network for traffic flow forecasting Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Lianfei Yu, Ziling Wang, Wenxi Yang, Zhijian Qu, Chongguang Ren
Accurate forecasting of traffic flow in the future period is very important for planning traffic routes and alleviating traffic congestion. However, traffic flow forecasting still faces serious challenges. Most of the existing traffic flow forecasting methods are static graph convolutional networks based on prior knowledge, ignoring the special spatial–temporal dynamics of spatial–temporal data. Using
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A multi-task genetic programming approach for online multi-objective container placement in heterogeneous cluster Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Ruochen Liu, Haoyuan Lv, Ping Yang, Rongfang Wang
Owing to the potential for fast deployment, containerization technology has been widely used in web applications based on microservice architecture. Online container placement aims to improve resource utilization and meet other service quality requirements of cloud data centers. Most current heuristic and hyper-heuristic methods for container placement rely on single allocation rules, which are inefficient
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Early stroke behavior detection based on improved video masked autoencoders for potential patients Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Meng Wang, Guanci Yang, Kexin Luo, Yang Li, Ling He
Stroke is the prevalent cerebrovascular disease characterized by significant incidence and disability rates. To enhance the early perceive and detection of potential stroke patients, the early stroke behavior detection based on improved Video Masked Autoencoders (VideoMAE) for potential patients (EPBR-PS) is proposed. The proposed method begins with novel time interval-based sampling strategy, capturing
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GAN-based pseudo random number generation optimized through genetic algorithms Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Xuguang Wu, Yiliang Han, Minqing Zhang, Yu Li, Su Cui
Pseudo-random number generators (PRNGs) are deterministic algorithms that generate sequences of numbers approximating the properties of random numbers, which are widely utilized in various fields. In this paper, we present a Genetic Algorithm Optimized Generative Adversarial Network (hereinafter referred to as GAGAN), which is designed for the effective training of discrete generative adversarial networks
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Bridging the gap: multi-granularity representation learning for text-based vehicle retrieval Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-13 Xue Bo, Junjie Liu, Di Yang, Wentao Ma
Text-based cross-modal vehicle retrieval has been widely applied in smart city contexts and other scenarios. The objective of this approach is to identify semantically relevant target vehicles in videos using text descriptions, thereby facilitating the analysis of vehicle spatio-temporal trajectories. Current methodologies predominantly employ a two-tower architecture, where single-granularity features
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Self-Supervised Learning for Intuitive Control of Prosthetic Hand Movements via Sonomyography IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Xingchen Yang, Zongtian Yin, Yixuan Sheng, Dario Farina, Honghai Liu
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Extended Kalman Filtering-Based Nonlinear Model Predictive Control for Underactuated Systems With Multiple Constraints and Obstacle Avoidance IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Meng Zhai, Tong Yang, Qingxiang Wu, Shudong Guo, Ruiping Pang, Ning Sun
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Periodic Event-Triggered Optimal Output Consensus of Heterogeneous Multiagent Systems Subject to Communication Delays IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Tianyu Liu, Lu Liu
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Uncovering Reward Goals in Distributed Drone Swarms Using Physics-Informed Multiagent Inverse Reinforcement Learning IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Adolfo Perrusquía, Weisi Guo
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A Modified Dynamic Event-Triggered Mechanism for Output Consensus of Heterogeneous MASs IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Wang Yang, Jiuxiang Dong
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Task-Oriented Tool Manipulation With Robotic Dexterous Hands: A Knowledge Graph Approach From Fingers to Functionality IEEE Trans. Cybern. (IF 9.4) Pub Date : 2024-11-13 Fan Yang, Wenrui Chen, Haoran Lin, Sijie Wu, Xin Li, Zhiyong Li, Yaonan Wang
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Identifying runtime libraries in statically linked linux binaries Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2024-11-13 Javier Carrillo-Mondéjar, Ricardo J. Rodríguez
Vulnerabilities in unpatched applications can originate from third-party dependencies in statically linked applications, as they must be relinked each time to take advantage of libraries that have been updated to fix any vulnerability. Despite this, malware binaries are often statically linked to ensure they run on target platforms and to complicate malware analysis. In this sense, identification of
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A nonrevisiting genetic algorithm based on multi-region guided search strategy Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-12 Qijun Wang, Chunxin Sang, Haiping Ma, Chao Wang
Recently, nonrevisiting genetic algorithms have demonstrated superior capabilities compared with classic genetic algorithms and other single-objective evolutionary algorithms. However, the search efficiency of nonrevisiting genetic algorithms is currently low for some complex optimisation problems. This study proposes a nonrevisiting genetic algorithm with a multi-region guided search to improve the
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Towards accurate anomaly detection for cloud system via graph-enhanced contrastive learning Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-12 Zhen Zhang, Zhe Zhu, Chen Xu, Jinyu Zhang, Shaohua Xu
As a critical technology, anomaly detection ensures the smooth operation of cloud systems while maintaining the market competitiveness of cloud service providers. However, the resource data in real-world cloud systems is predominantly unannotated, leading to insufficient supervised signals for anomaly detection. Moreover, complicated topological associations existed between cloud servers (e.g., computation
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Unveiling user identity across social media: a novel unsupervised gradient semantic model for accurate and efficient user alignment Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-12 Yongqiang Peng, Xiaoliang Chen, Duoqian Miao, Xiaolin Qin, Xu Gu, Peng Lu
The field of social network analysis has identified User Alignment (UA) as a crucial area of investigation. The objective of UA is to identify and connect user accounts across diverse social networks, even when there are no explicit interconnections. UA plays a pivotal role in synthesising coherent user profiles and delving into the intricacies of user behaviour across platforms. However, traditional
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Automatical sampling with heterogeneous corpora for grammatical error correction Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-12 Shichang Zhu, Jianjian Liu, Ying Li, Zhengtao Yu
Thanks to the strong representation capability of the pre-trained language models, supervised grammatical error correction has achieved promising performance. However, traditional model training depends significantly on the large scale of similar distributed samples. The model performance decreases sharply once the distributions of training and testing data are inconsistent. To address this issue,
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Adversarial imitation learning with deep attention network for swarm systems Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-12 Yapei Wu, Tao Wang, Tong Liu, Zhicheng Zheng, Demin Xu, Xingguang Peng
Swarm systems consist of a large number of interacting individuals, which exhibit complex behavior despite having simple interaction rules. However, crafting individual motion policies that can manifest desired collective behaviors poses a significant challenge due to the intricate relationship between individual policies and swarm dynamics. This paper addresses this issue by proposing an imitation
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High throughput edit distance computation on FPGA-based accelerators using HLS Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2024-11-12 Sebastiano Fabio Schifano, Marco Reggiani, Enrico Calore, Rino Micheloni, Alessia Marelli, Cristian Zambelli
Edit distance is a computational grand challenge problem to quantify the minimum number of editing operations required to modify one string of characters to the other, finding many applications of natural language processing. In recent years, relevant and increasing interest has also emerged from deoxyribonucleic acid (DNA) applications, like Next Generation Sequencing and DNA storage technologies
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In silico framework for genome analysis Future Gener. Comput. Syst. (IF 6.2) Pub Date : 2024-11-12 M. Saqib Nawaz, M. Zohaib Nawaz, Yongshun Gong, Philippe Fournier-Viger, Abdoulaye Baniré Diallo
Genomes hold the complete genetic information of an organism. Examining and analyzing genomic data plays a critical role in properly understanding an organism, particularly the main characteristics, functionalities, and evolving nature of harmful viruses. However, the rapid increase in genomic data poses new challenges and demands for extracting meaningful and valuable insights from large and complex
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A computationally efficient method for evaluating impact sound insulation for custom concrete floor geometries Comput. Struct. (IF 4.4) Pub Date : 2024-11-12 Jonathan M. Broyles, Micah R. Shepherd, Andrew R. Barnard, Nathan C. Brown
Advanced construction technologies are creating opportunities to design and fabricate non-traditional concrete structural geometries. While removing structurally unnecessary material can aid in sustainability efforts, it can also reduce a structure’s ability to attenuate impact sound. An assessment of the impact sound insulation performance of custom concrete floors has often been excluded from previous
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Static, free vibration, and buckling analysis of functionally graded plates using the dual mesh control domain method Comput. Struct. (IF 4.4) Pub Date : 2024-11-12 Zeyu Jiao, Tanmaye Heblekar, Guannan Wang, Rongqiao Xu, J.N. Reddy
In this paper, the Dual Mesh Control Domain Method (DMCDM) put forward by Reddy is applied to solve linear static, free vibration, and buckling problems of functionally graded plates modeled using the First-Order Shear Deformation Theory (FSDT). The material properties are assumed to vary continuously through the thickness of the plate according to a power-law. Formulations are presented for linear
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Poromechanical cohesive interface element with combined Mode I-II cohesive zone elastoplasticity for simulating fracture in fluid-saturated porous media Comput. Struct. (IF 4.4) Pub Date : 2024-11-12 Dafer K. Jadaan, Jessica Rimsza, Reese Jones, Richard A. Regueiro
A combined Mode I-II cohesive zone (CZ) elasto-plastic constitutive model, and a two-dimensional (2D) cohesive interface element (CIE) are formulated and implemented at small strain within an ABAQUS User Element (UEL) for simulating 2D crack nucleation and propagation in fluid-saturated porous media. The CZ model mitigates problems of convergence for the global Newton-Raphson solver within ABAQUS,
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RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-09 Qianyu Wang, Wei-Tek Tsai, Bowen Du
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PCNet: a human pose compensation network based on incremental learning for sports actions estimation Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-11 Jia-Hong Jiang, Nan Xia
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Document-level relation extraction via dual attention fusion and dynamic asymmetric loss Complex Intell. Syst. (IF 5.0) Pub Date : 2024-11-11 Xiaoyao Ding, Dongyan Ding, Gang Zhou, Jicang Lu, Taojie Zhu