يعرض 61 - 80 نتائج من 15,670 نتيجة بحث عن '(( algorithm python function ) OR ((( algorithm a function ) OR ( algorithm where function ))))', وقت الاستعلام: 0.64s تنقيح النتائج
  1. 61

    Wav2DDK: An automated DDK estimation algorithm (Kadambi et al., 2023) حسب Prad Kadambi (16680635)

    منشور في 2023
    "…<p><strong>Purpose:</strong> Oral diadochokinesis is a useful task in assessment of speech motor function in the context of neurological disease. …"
  2. 62

    Simulation results for average reward rate function using the UCB algorithm , where <i>A</i> = 100, <i>ℓ</i> = 20, <i>μ</i> = [0.75, …(×50), 0.5, …(×50)], and <i>T</i> = 1000, and . حسب Justin Zobel (241587)

    منشور في 2022
    "…<p>Simulation results for average reward rate function using the UCB algorithm , where <i>A</i> = 100, <i>ℓ</i> = 20, <i>μ</i> = [0.75, …(×50), 0.5, …(×50)], and <i>T</i> = 1000, and .…"
  3. 63

    Brief sketch of the quasi-attraction/alignment algorithm. حسب Takayuki Niizato (162226)

    منشور في 2023
    "…The focal agent selects its next direction randomly based on . (D) A brief sketch of the avoidance algorithm. Upper: Each direction is extended to the repulsion area = {<b><i>r</i></b>||<b><i>r</i></b>| = <i>R</i>}, where is the minimal sphere cap that covers all points on . …"
  4. 64

    NLDock: a Fast Nucleic Acid–Ligand Docking Algorithm for Modeling RNA/DNA–Ligand Complexes حسب Yuyu Feng (11371729)

    منشور في 2021
    "…Here, we have developed a fast nucleic acid–ligand docking algorithm, named NLDock, by implementing our intrinsic scoring function ITScoreNL for nucleic acid–ligand interactions into a modified version of the MDock program. …"
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    Autonomous Experiments in Scanning Probe Microscopy and Spectroscopy: Choosing Where to Explore Polarization Dynamics in Ferroelectrics حسب Rama K. Vasudevan (1612174)

    منشور في 2021
    "…Polarization dynamics in ferroelectric materials are explored <i>via</i> automated experiment in piezoresponse force microscopy/spectroscopy (PFM/S). A Bayesian optimization (BO) framework for imaging is developed, and its performance for a variety of acquisition and pathfinding functions is explored using previously acquired data. …"
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    Performance of the three algorithms. حسب Juanjuan Lin (2096830)

    منشور في 2024
    "…An integrated framework based on a novel genetic algorithm and the Frank—Wolfe algorithm is designed to solve the stochastic model. …"
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    Rosenbrock function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  15. 75

    Rosenbrock function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  16. 76

    Levy function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  17. 77

    Rastrigin function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  18. 78

    Levy function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  19. 79

    Rastrigin function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"
  20. 80

    Levy function losses for . حسب Shikun Chen (14625352)

    منشور في 2025
    "…This approach bridges the gap between model accuracy and optimization efficiency, offering a practical solution for optimizing non-differentiable machine learning models that can be extended to other tree-based ensemble algorithms. …"