بدائل البحث:
algorithm three » algorithm where (توسيع البحث), algorithm pre (توسيع البحث)
three function » three functional (توسيع البحث), tree functional (توسيع البحث), time function (توسيع البحث)
algorithm ai » algorithm i (توسيع البحث), algorithm _ (توسيع البحث), algorithm b (توسيع البحث)
ai function » api function (توسيع البحث), i function (توسيع البحث), gi function (توسيع البحث)
algorithm a » algorithm _ (توسيع البحث), algorithm b (توسيع البحث), algorithms _ (توسيع البحث)
a function » _ function (توسيع البحث)
algorithm three » algorithm where (توسيع البحث), algorithm pre (توسيع البحث)
three function » three functional (توسيع البحث), tree functional (توسيع البحث), time function (توسيع البحث)
algorithm ai » algorithm i (توسيع البحث), algorithm _ (توسيع البحث), algorithm b (توسيع البحث)
ai function » api function (توسيع البحث), i function (توسيع البحث), gi function (توسيع البحث)
algorithm a » algorithm _ (توسيع البحث), algorithm b (توسيع البحث), algorithms _ (توسيع البحث)
a function » _ function (توسيع البحث)
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Algorithm results based on FE simulated likelihood functions.
منشور في 2020"…<p>(A) Nodule depth estimation by the algorithm with the likelihood functions obtained by FEM simulation. …"
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A hybrid algorithm based on improved threshold function and wavelet transform.
منشور في 2024الموضوعات: -
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Pseudo-code of DMDDPG algorithm.
منشور في 2025"…Next, a reward function is designed by integrating the decoupled multi-agent deterministic deep deterministic policy gradient (DMDDPG) algorithm. …"
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Genetic Algorithm for Automated Parameterization of Network Hamiltonian Models of Amyloid Fibril Formation
منشور في 2024"…The models generated by the AI produced fibril fractions that surpass previously published fibril fractions in 3 of 5 cases, including the most naturally abundant amyloid fibril topology, the <i>1,2 2-ribbon</i>, which features a steric zipper. …"
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datasheet1_Algorithmic Probability-Guided Machine Learning on Non-Differentiable Spaces.pdf
منشور في 2021"…In doing so we use examples which enable the two approaches to be compared (small, given the computational power required for estimations of algorithmic complexity). We find and report that 1) machine learning can successfully be performed on a non-smooth surface using algorithmic complexity; 2) that solutions can be found using an algorithmic-probability classifier, establishing a bridge between a fundamentally discrete theory of computability and a fundamentally continuous mathematical theory of optimization methods; 3) a formulation of an algorithmically directed search technique in non-smooth manifolds can be defined and conducted; 4) exploitation techniques and numerical methods for algorithmic search to navigate these discrete non-differentiable spaces can be performed; in application of the (a) identification of generative rules from data observations; (b) solutions to image classification problems more resilient against pixel attacks compared to neural networks; (c) identification of equation parameters from a small data-set in the presence of noise in continuous ODE system problem, (d) classification of Boolean NK networks by (1) network topology, (2) underlying Boolean function, and (3) number of incoming edges.…"
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datasheet2_Algorithmic Probability-Guided Machine Learning on Non-Differentiable Spaces.zip
منشور في 2021"…In doing so we use examples which enable the two approaches to be compared (small, given the computational power required for estimations of algorithmic complexity). We find and report that 1) machine learning can successfully be performed on a non-smooth surface using algorithmic complexity; 2) that solutions can be found using an algorithmic-probability classifier, establishing a bridge between a fundamentally discrete theory of computability and a fundamentally continuous mathematical theory of optimization methods; 3) a formulation of an algorithmically directed search technique in non-smooth manifolds can be defined and conducted; 4) exploitation techniques and numerical methods for algorithmic search to navigate these discrete non-differentiable spaces can be performed; in application of the (a) identification of generative rules from data observations; (b) solutions to image classification problems more resilient against pixel attacks compared to neural networks; (c) identification of equation parameters from a small data-set in the presence of noise in continuous ODE system problem, (d) classification of Boolean NK networks by (1) network topology, (2) underlying Boolean function, and (3) number of incoming edges.…"
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datasheet1_Algorithmic Probability-Guided Machine Learning on Non-Differentiable Spaces.pdf
منشور في 2021"…In doing so we use examples which enable the two approaches to be compared (small, given the computational power required for estimations of algorithmic complexity). We find and report that 1) machine learning can successfully be performed on a non-smooth surface using algorithmic complexity; 2) that solutions can be found using an algorithmic-probability classifier, establishing a bridge between a fundamentally discrete theory of computability and a fundamentally continuous mathematical theory of optimization methods; 3) a formulation of an algorithmically directed search technique in non-smooth manifolds can be defined and conducted; 4) exploitation techniques and numerical methods for algorithmic search to navigate these discrete non-differentiable spaces can be performed; in application of the (a) identification of generative rules from data observations; (b) solutions to image classification problems more resilient against pixel attacks compared to neural networks; (c) identification of equation parameters from a small data-set in the presence of noise in continuous ODE system problem, (d) classification of Boolean NK networks by (1) network topology, (2) underlying Boolean function, and (3) number of incoming edges.…"
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datasheet2_Algorithmic Probability-Guided Machine Learning on Non-Differentiable Spaces.zip
منشور في 2021"…In doing so we use examples which enable the two approaches to be compared (small, given the computational power required for estimations of algorithmic complexity). We find and report that 1) machine learning can successfully be performed on a non-smooth surface using algorithmic complexity; 2) that solutions can be found using an algorithmic-probability classifier, establishing a bridge between a fundamentally discrete theory of computability and a fundamentally continuous mathematical theory of optimization methods; 3) a formulation of an algorithmically directed search technique in non-smooth manifolds can be defined and conducted; 4) exploitation techniques and numerical methods for algorithmic search to navigate these discrete non-differentiable spaces can be performed; in application of the (a) identification of generative rules from data observations; (b) solutions to image classification problems more resilient against pixel attacks compared to neural networks; (c) identification of equation parameters from a small data-set in the presence of noise in continuous ODE system problem, (d) classification of Boolean NK networks by (1) network topology, (2) underlying Boolean function, and (3) number of incoming edges.…"