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  1. 581

    Localization Algorithm Based on Maximum a Posteriori in Wireless Sensor Networks by Kezhong Lu, Xiaohua Xiang, Dian Zhang, Rui Mao, Yuhong Feng

    Published 2011-12-01
    “…Many applications and protocols in wireless sensor networks need to know the locations of sensor nodes. …”
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    Article
  2. 582

    Multimedia Vision Improvement and Simulation in Consideration of Virtual Reality Reconstruction Algorithms by Jing He

    Published 2022-01-01
    “…Due to the large noise and many discrete points of the image in the traditional image reconstruction process, the reconstruction quality of the image deviates greatly from the actual target. …”
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    Article
  3. 583

    Optimal Layout of Sensors on Wind Turbine Blade Based on Combinational Algorithm by Guimei Gu, Yu Zhao, Xin Zhang

    Published 2016-02-01
    “…This algorithm integrates the advantages of kinetic energy method, effective independence method, modal assurance criterion (MAC), and many other optimal methods. …”
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    Article
  4. 584

    Improved ant colony optimization algorithm for solving constraint satisfaction problem by HANGYong-gang Z, HANGSi-bo Z, UEQiu-shi X

    Published 2015-05-01
    “…The traditional backtracking algorithm was less efficient on solving large-scale constraint satisfaction problem,and more difficult to be solved within a reasonable time.In order to overcome this problem,many incompleteness algo-rithms based on heuristic search have been proposed.Two improvements based on ant colony optimization meta-heuristic constraint solving algorithm were presented:First,arc consistency checks was done to preprocess before exploring the search space,Second,a new parameter setting scheme was proposed for ant colony optimization to improve the effi-ciency of the search.Finally,the improved algorithm is applied to solve random problems and combinatorial optimization problems.The results of the experiment have showed its superiority.…”
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  5. 585
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  7. 587

    An Implementable First-Order Primal-Dual Algorithm for Structured Convex Optimization by Feng Ma, Mingfang Ni, Lei Zhu, Zhanke Yu

    Published 2014-01-01
    “…Many application problems of practical interest can be posed as structured convex optimization models. …”
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    Article
  8. 588

    Heterogeneous Resource Allocation Algorithm for Ad Hoc Networks with Utility Fairness by Bing-Qing Han, Guo-Fu Feng, Yi-Fei Chen

    Published 2015-01-01
    “…In this paper, a novel heterogeneous resource allocation algorithm (HRA) is presented for ad hoc networks, supporting both elastic and inelastic traffic. …”
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    Article
  9. 589

    A Mahalanobis Hyperellipsoidal Learning Machine Class Incremental Learning Algorithm by Yuping Qin, Hamid Reza Karimi, Dan Li, Shuxian Lun, Aihua Zhang

    Published 2014-01-01
    “…A Mahalanobis hyperellipsoidal learning machine class incremental learning algorithm is proposed. To each class sample, the hyperellipsoidal that encloses as many as possible and pushes the outlier samples away is trained in the feature space. …”
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    Article
  10. 590

    PREDICTION OF TELECOM SERVICES CONSUMERS CHURN BY USING MACHINE LEARNING ALGORITHMS by Edin Osmanbegović, Anel Džinić, Mirza Suljić

    Published 2022-11-01
    “…Machine learning is gaining importance in many different areas of the economy. One of those areas is the prediction and prevention of consumer churn. …”
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    Article
  11. 591

    PREDICTION OF TELECOM SERVICES CONSUMERS CHURN BY USING MACHINE LEARNING ALGORITHMS by Edin Osmanbegović, Anel Džinić, Mirza Suljić

    Published 2022-11-01
    “…Machine learning is gaining importance in many different areas of the economy. One of those areas is the prediction and prevention of consumer churn. …”
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    Article
  12. 592

    Personalization in Mobile Activity Recognition System Using -Medoids Clustering Algorithm by Quang Viet Vo, Minh Thang Hoang, Deokjai Choi

    Published 2013-07-01
    “…Nowadays mobile activity recognition (AR) has been creating great potentials in many applications including mobile healthcare and context-aware systems. …”
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    Article
  13. 593

    Newton-Krylov Type Algorithm for Solving Nonlinear Least Squares Problems by Mohammedi R. Abdel-Aziz, Mahmoud M. El-Alem

    Published 2009-01-01
    “…The minimization of a quadratic function within an ellipsoidal trust region is an important subproblem for many nonlinear programming algorithms. When the number of variables is large, one of the most widely used strategies is to project the original problem into a small dimensional subspace. …”
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  14. 594

    Application of the Artificial Bee Colony Algorithm for Solving the Set Covering Problem by Broderick Crawford, Ricardo Soto, Rodrigo Cuesta, Fernando Paredes

    Published 2014-01-01
    “…Here, we present a novel application of the artificial bee colony algorithm to solve the non-unicost set covering problem. …”
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  15. 595

    Application of the spectral bisection algorithm for the analysis of criminal communities in social networks by K. M. Bondar, V. S. Dunin, P. B. Skripko, N. S. Khokhlov

    Published 2024-07-01
    “…The purpose of the study is to substantiate the use of one of the graph separation methods – the spectral bisection algorithm for the analysis of social networks, as well as to evaluate the possibilities of software implementation of this algorithm during the collection of evidence-based information in the investigation of crimes committed using information and telecommunications technologies.Method. …”
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    Article
  16. 596

    Methods and Algorithms for Flexible Job Shop Scheduling − A State of the Art by Guliashki Vassil, Kirilov Leoneed, Marinova Galia

    Published 2025-06-01
    “…The Job Shop Scheduling Problem (JSSP) attracts many researchers due to its combinatorial nature and its discovery in numerous practical applications. …”
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  17. 597
  18. 598

    Deduplication algorithm based on condensed nearest neighbor rule for deduplication metadata by Wen-bin YAO, Peng-di YE, Xiao-yong LI, Jing-kun CHANG

    Published 2015-08-01
    “…Building effective deduplication index in the memory could reduce disk access times and enhance chunk fingerprint lookup speed,which was a big challenge for deduplication algorithms in massive data environments.As deduplication data set had many samples with high similarity,a deduplication algorithm based on condensed nearest neighbor rule,which was called Dedup<sup>2</sup>,was proposed.Dedup<sup>2</sup>uses clustering algorithm to divide the original deduplication metadata into several categories.According to these categories,it employs condensed nearest neighbor rule to remove the highest similar data in the deduplication metadata.After that it can get the subset of deduplication metadata.Based on this subset,new data objects will be deduplicated based on the principle of data similarity.The results of experiments show that Dedup<sup>2</sup>can reduce the size of deduplication data set more than 50% effectively while maintain similar deduplication ratio.…”
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  19. 599

    A Novel Image Mosaicking Algorithm for Wireless Multimedia Sensor Networks by Zhiyuan Li, Weiting Kong, Yongzhao Zhan, Junlei Bi

    Published 2013-10-01
    “…After the image registration, the adaptive weighted average algorithm is proposed to do the image fusion. The simulation experiments show that compared with homogeneous algorithms, the IMBPW algorithm has higher real-time and fast convergence speed. …”
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  20. 600

    CSI feedback algorithm based on deep unfolding for massive MIMO systems by Yong LIAO, Gang CHENG, Yujie LI

    Published 2022-12-01
    “…In order to solve the problem that the channel state information (CSI) feedback algorithm based on deep learning in massive MIMO systems at present had too many parameters to be trained and could not be explained well, two CSI feedback algorithms based on depth expansion were proposed.The first one was approximate message delivery (AMP) algorithm based on learnable parameters.The learnable parameters in deep learning were used to replace the threshold value of the threshold function in the AMP algorithm and the parameters of the Onsage correction term.The nonlinear ability of threshold function in dealing with non-strict sparse data was enhanced.The other was the AMP algorithm based on convolutional network, which replaced the threshold function module with the convolutional residual learning module, and used the module to remove the Gaussian random noise generated by each iteration of the AMP algorithm.Simulation results show that the proposed two algorithms have better CSI feedback performance than AMP algorithm, and the AMP algorithm based on convolutional network has better CSI reconstruction performance than the representative method based on deep learning.…”
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