Showing 281 - 300 results of 7,635 for search 'mean algorithm', query time: 0.10s Refine Results
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    A Solution Method for Non-Linear Underdetermined Equation Systems in Grounding Grid Corrosion Diagnosis Based on an Enhanced Hippopotamus Optimization Algorithm by Jinhe Chen, Jianyu Qi, Yiyang Ao, Keying Wang, Xin Song

    Published 2025-07-01
    “…We propose the Enhanced Biomimetic Hippopotamus Optimization (EBOHO) algorithm, which distills the river-dwelling hippo’s ecological wisdom into three synergistic strategies: a beta-function herd seeding that replicates the genetic diversity of juvenile hippos diffusing through wetlands, an elite–mean cooperative foraging rule that echoes the way dominant bulls steer the herd toward nutrient-rich pastures, and a lens imaging opposition maneuver inspired by moonlit water reflections that spawn mirror candidates to avert premature convergence. …”
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  6. 286

    A Novel Adaptive Algorithm Addresses Potential Problems of Blind Algorithm by Muhammad Yasin, Muhammad Junaid Hussain

    Published 2016-01-01
    “…A hybrid algorithm called constant modulus least mean square (CMLMS) algorithm is proposed in order to address the potential problems existing with constant modulus algorithm (CMA) about its convergence. …”
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    Approach for distributed BPEL engine placement using K-means by Rong-heng LIN, Bu-dan WU, Yao ZHAO, Fang-chun YANG

    Published 2014-05-01
    “…Aiming to solve the distributed BPEL engine placing problem in cloud, a K-means based distributed BPEL en-gine placing algorithm was proposed. …”
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  14. 294

    Local Outlier Detection Method Based on Improved K-means by Yu ZHOU, Hao XIA, Xuezhen YUE, Peichong WANG

    Published 2024-07-01
    “…A local outlier detection method, named KLOD (local outlier detection based on improved K-means and least squares methods), is developed to achieve precise detection of local outliers.Methods The K-means clustering algorithm is characterized by hard clustering, meaning that after clustering the dataset, each data point has a clear association with one cluster or another. …”
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  15. 295

    Application of Semi-Supervised Mean Teacher to Rock Image Segmentation by Jiashan Li, Yuxue Wang

    Published 2025-03-01
    “…Then, we introduce self-attention mechanism into the semi-supervised Mean Teacher algorithm to further enhance its performance in rock image segmentation. …”
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    Computing the Mean-Variance-Sustainability Nondominated Surface by ev-MOGA by A. Garcia-Bernabeu, J. V. Salcedo, A. Hilario, D. Pla-Santamaria, Juan M. Herrero

    Published 2019-01-01
    “…Multiobjective evolutionary algorithms (MOEAs) have been recently used for portfolio selection, thus extending the mean-variance methodology to obtain a mean-variance-sustainability nondominated surface. …”
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    Using Artificial Intelligence Techniques for Image Compression by Baydaa Khaleel

    Published 2014-12-01
    Subjects: “…k-means algorithm, gath-geva (gg) fuzzy clustering algorithm…”
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    MODERN MEANS OF IMMUNE THERAPHY FOR SICKLY CHILDREN WITH ALLERGIC DISEASES by L.S. Namazova, V.V. Botvin'eva, N.I. Voznesenskaya

    Published 2007-02-01
    “…They provide detailed information on the indices of the cytokine status, humoral and cellular immunity, eicosanoids and their changes during the preventive therapy by means of ribosome immunocorrector. Based on the obtained findings, the authors proposed an algorithm to conduct immunocorrective therapy among sickly children with allergy.Key words: acute respiratory infections, prevention, immunotherapy, bronchial asthma, atopic dermatitis, interleukins, ribosome immunocorrector.…”
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    Riemannian Means on Special Euclidean Group and Unipotent Matrices Group by Xiaomin Duan, Huafei Sun, Linyu Peng

    Published 2013-01-01
    “…And the sum of the geodesic distances is taken as the cost function, whose minimizer is the Riemannian mean. Moreover, a Riemannian gradient algorithm for computing the Riemannian mean on the special Euclidean group and an iterative formula for that on the unipotent matrix group are proposed, respectively. …”
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