يعرض 101 - 120 نتائج من 4,841 نتيجة بحث عن '(( algorithm from function ) OR ( ((algorithm python) OR (algorithm a)) function ))*', وقت الاستعلام: 0.57s تنقيح النتائج
  1. 101

    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. …"
  2. 102

    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. …"
  3. 103

    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. …"
  4. 104

    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. …"
  5. 105

    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. …"
  6. 106

    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. …"
  7. 107

    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. …"
  8. 108

    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. …"
  9. 109

    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. …"
  10. 110

    Flow chart diagram of quantum hash function. حسب Sultan H. Almotiri (14029251)

    منشور في 2024
    "…However, in the pursuit of complexity, vulnerabilities may be introduced inadvertently, posing a substantial danger to software security. Our study addresses five major components of the quantum method to overcome these challenges: lattice-based cryptography, fully homomorphic algorithms, quantum key distribution, quantum hash functions, and blind quantum algorithms. …"
  11. 111

    NRPStransformer, an Accurate Adenylation Domain Specificity Prediction Algorithm for Genome Mining of Nonribosomal Peptides حسب Zhihan Zhang (1403308)

    منشور في 2025
    "…Leveraging the sequences within the flavodoxin-like subdomain, we developed a substrate specificity prediction algorithm using a protein language model, achieving 92% overall prediction accuracy for 43 frequently observed amino acids, significantly improving the prediction reliability. …"
  12. 112

    Data Sheet 1_A modified A* algorithm combining remote sensing technique to collect representative samples from unmanned surface vehicles.docx حسب Lei Wang (6656)

    منشور في 2024
    "…Water quality parameters were initially retrieved using satellite remote sensing imagery and a deep belief network model, with the parameter value incorporated as coefficient Q in the heuristic function of A* algorithm. …"
  13. 113
  14. 114

    A framework for improving localisation prediction algorithms. حسب Sven B. Gould (12237287)

    منشور في 2024
    "…One can expect that the combination of multi-dimensional parameters from evolutionary biology, cell biology and molecular biology on evolutionary diverse species will significantly improve the next generation of machine leaning algorithms that serve localisation (and function) predictions.…"
  15. 115

    A detailed process of iterative simulation coupled with bone density algorithm; (a) a function of stimulus and related bone density changes, and (b) iterative calculations of finite element analysis coupled with user’s subroutine for changes in bone density. حسب Hassan Mehboob (8960273)

    منشور في 2025
    "…<p>A detailed process of iterative simulation coupled with bone density algorithm; (a) a function of stimulus and related bone density changes, and (b) iterative calculations of finite element analysis coupled with user’s subroutine for changes in bone density.…"
  16. 116

    Type-1 membership function for distance. حسب Seung-Min Ryu (21463891)

    منشور في 2025
    "…<div><p>In this study, we present an algorithm to estimate the distance between a vehicle and a target object using light from headlights captured by a camera. …"
  17. 117

    Type-1 membership function for speed. حسب Seung-Min Ryu (21463891)

    منشور في 2025
    "…<div><p>In this study, we present an algorithm to estimate the distance between a vehicle and a target object using light from headlights captured by a camera. …"
  18. 118

    The convergence curves of the test functions. حسب Ruiyu Zhan (21602031)

    منشور في 2025
    "…Utilizing the diabetes dataset from 130 U.S. hospitals, the LGWO-BP algorithm achieved a precision rate of 0.97, a sensitivity of 1.00, a correct classification rate of 0.99, a harmonic mean of precision and recall (F1-score) of 0.98, and an area under the ROC curve (AUC) of 1.00. …"
  19. 119

    Single-peaked reference functions. حسب Ruiyu Zhan (21602031)

    منشور في 2025
    "…Utilizing the diabetes dataset from 130 U.S. hospitals, the LGWO-BP algorithm achieved a precision rate of 0.97, a sensitivity of 1.00, a correct classification rate of 0.99, a harmonic mean of precision and recall (F1-score) of 0.98, and an area under the ROC curve (AUC) of 1.00. …"
  20. 120