Search alternatives:
using function » using functional (Expand Search), sine function (Expand Search), waning function (Expand Search)
api function » a function (Expand Search), adl function (Expand Search), gi function (Expand Search)
i function » _ function (Expand Search), a function (Expand Search), 1 function (Expand Search)
using function » using functional (Expand Search), sine function (Expand Search), waning function (Expand Search)
api function » a function (Expand Search), adl function (Expand Search), gi function (Expand Search)
i function » _ function (Expand Search), a function (Expand Search), 1 function (Expand Search)
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Curves of sigmoid functions used in our proposed algorithm.
Published 2022“…<p>Curves of sigmoid functions used in our proposed algorithm.</p>…”
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Convergence curves of the IMGO algorithm and comparison algorithms on functions <i>f</i>14−<i>f</i>23.
Published 2024“…<p>Convergence curves of the IMGO algorithm and comparison algorithms on functions <i>f</i>14−<i>f</i>23.…”
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Convergence curves of the IMGO algorithm and comparison algorithms on functions <i>f</i>8−<i>f</i>13.
Published 2024“…<p>Convergence curves of the IMGO algorithm and comparison algorithms on functions <i>f</i>8−<i>f</i>13.…”
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Standard benchmark functions used for the experimentation of EOSA and other similar optimization algorithms.
Published 2023“…<p>Standard benchmark functions used for the experimentation of EOSA and other similar optimization algorithms.…”
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Eight commonly used benchmark functions.
Published 2023“…Secondly, the nonlinear convergence factor is constructed to replace the original random factor <i>c</i><sub>1</sub> to coordinate the algorithm’s local exploitation and global exploration performance, which effectively improves the ability of the algorithm to escape extreme values and fast convergence. …”
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Objective functions (i.e., RMSEs) and time of optimization for different population sizes of the used algorithms.
Published 2023“…<p>Objective functions (i.e., RMSEs) and time of optimization for different population sizes of the used algorithms.…”
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Search Algorithms and Loss Functions for Bayesian Clustering
Published 2022“…<p>We propose a randomized greedy search algorithm to find a point estimate for a random partition based on a loss function and posterior Monte Carlo samples. …”
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