Showing 261 - 280 results of 5,137 for search '"The Descent"', query time: 0.09s Refine Results
  1. 261

    Stochastic gradient descent optimisation for convolutional neural network for medical image segmentation by Nagendram Sanam, Singh Arunendra, Harish Babu Gade, Joshi Rahul, Pande Sandeep Dwarkanath, Ahammad S. K. Hasane, Dhabliya Dharmesh, Bisht Aadarsh

    Published 2023-08-01
    “…The study develops a novel technique of segmenting medical images merged with CNNs with an architectural comparison that incorporates neural networks of U-net and fully convolutional networks (FCN) schemas with loss functions associated with Jaccard distance and Binary-cross entropy under optimised stochastic gradient descent + Nesterov practices. Digital image over clinical approach significantly built the diagnosis and determination of the best treatment for a patient’s condition. …”
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  2. 262
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    A Modified Stein Variational Inference Algorithm with Bayesian and Gradient Descent Techniques by Limin Zhang, Jing Dong, Junfang Zhang, Junzi Yang

    Published 2022-06-01
    “…This paper introduces a novel variational inference (VI) method with Bayesian and gradient descent techniques. To facilitate the approximation of the posterior distributions for the parameters of the models, the Stein method has been used in Bayesian variational inference algorithms in recent years. …”
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  4. 264

    Hybrid fuzzy inference rules of descent method and wavelet function for volatility forecasting by Abdullah H. Alenezy, Mohd Tahir Ismail, Jamil J. Jaber, S. AL Wadi, Rami S. Alkhawaldeh

    Published 2022-01-01
    “…This research employs the gradient descent learning (FIR.DM) approach as a learning process in a nonlinear spectral model of maximum overlapping discrete wavelet transform (MODWT) to improve volatility prediction of daily stock market prices using Saudi Arabia’s stock exchange (Tadawul) data. …”
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    Almost sure convergence of randomised‐difference descent algorithm for stochastic convex optimisation by Xiaoxue Geng, Gao Huang, Wenxiao Zhao

    Published 2021-11-01
    “…Abstract Stochastic gradient descent algorithm is a classical and useful method for stochastic optimisation. …”
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    SUBGRADIENT MINIMIZATION METHOD WITH DESCENT VECTORS CORRECTION BY MEANS OF TRAINING RELATIONS PAIRS by V. N. Krutikov, Ya. N. Vershinin

    Published 2014-02-01
    “…The paper introduces a conjugate subgradient method whose descent is corrected by a pair of current training relations. …”
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    Characteristics Related to Choice of Obstetrician-Gynecologist among Women of Ethiopian Descent in Israel by Avi Zigdon, Gideon Koren, Liat Korn

    Published 2020-10-01
    “…Previous studies examined characteristics of a woman’s choice of gynecologist, but information regarding reasons for these choices among women of Ethiopian descent is lacking. The objective of this study was to identify characteristics related preference of an obstetrician-gynecologist based on gender among women of Ethiopian descent. …”
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    K-Value Effect for Detecting Stairs Descent using Combination GLCM and KNN by Ahmad Wali Satria Bahari Johan, Fitri Utaminingrum, Agung Setia Budi

    Published 2020-02-01
    “…Both classes are stairs descent and floor classes. The gray level co-occurrence matrix method is used to extract features. …”
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  20. 280

    Modified nonlinear conjugate gradient method with sufficient descent condition for unconstrained optimization by Liu Jinkui, Wang Shaoheng

    Published 2011-01-01
    “…Numerical results show that the modified method is efficient and stationary by comparing with the well-known Polak-Ribi&#233;re-Polyak method, CG-DESCENT method and DSP-CG method using the unconstrained optimization problems from More and Garbow (ACM Trans Math Softw <b>7</b>, 17-41, 1981), so it can be widely used in scientific computation.…”
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