Search alternatives:
features optimization » feature optimization (Expand Search), mixture optimization (Expand Search), resource optimization (Expand Search)
level features » local features (Expand Search)
binary level » urinary levels (Expand Search), primary level (Expand Search), entry level (Expand Search)
features optimization » feature optimization (Expand Search), mixture optimization (Expand Search), resource optimization (Expand Search)
level features » local features (Expand Search)
binary level » urinary levels (Expand Search), primary level (Expand Search), entry level (Expand Search)
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Medium-scale dataset comparative analysis using the number of features selected.
Published 2023Subjects: “…requires approximate algorithms…”
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Large-scale dataset comparative analysis using the number of features selected.
Published 2023Subjects: “…requires approximate algorithms…”
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Small-scale dataset comparative analysis using the number of features selected.
Published 2023Subjects: “…requires approximate algorithms…”
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4
The flowchart showing the optimization process of the hybrid methods using BEOSA as the base algorithm and SA and FFA as integrated algorithms.
Published 2023Subjects: “…requires approximate algorithms…”
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An optimization process of the proposed hybrid BEOSA (HBEOSA) combining both SA and FFA methods into BEOSA.
Published 2023Subjects: “…requires approximate algorithms…”
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An illustration and comparison of the fitness convergence curves for the Large-scale dataset (WaveformEW), medium-scale dataset (Zoo dataset), and Small-scale (Wine dataset) using...
Published 2023Subjects: “…requires approximate algorithms…”
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Medium-scale dataset comparative analysis using fitness and cost values for population size 50 and 100.
Published 2023Subjects: “…requires approximate algorithms…”
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Large-scale dataset comparative analysis using computation resources.
Published 2023Subjects: “…requires approximate algorithms…”
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An illustration and comparison of the cost convergence curves for the Large-scale dataset (WaveformEW), medium-scale dataset (Zoo dataset), and Small-scale (Wine dataset) using 50...
Published 2023Subjects: “…requires approximate algorithms…”
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11
Small-scale dataset comparative analysis using fitness and cost values for population sizes 50 and 100.
Published 2023Subjects: “…requires approximate algorithms…”
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Small-scale dataset comparative analysis using classification accuracy for population sizes 50 and 100.
Published 2023Subjects: “…requires approximate algorithms…”
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Medium-scale dataset comparative analysis using classification accuracy for population sizes 50 and 100.
Published 2023Subjects: “…requires approximate algorithms…”
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14
A radar plot illustrating the comparison of the classification accuracy, cost values, and fitness values for the hybrids of BEOSA when applied to some high-dimensional datasets usi...
Published 2023Subjects: “…requires approximate algorithms…”
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15
Medium-scale dataset comparative analysis using computation resources.
Published 2023Subjects: “…requires approximate algorithms…”
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Large-scale dataset comparative analysis using fitness and cost values for population sizes 50 and 100.
Published 2023Subjects: “…requires approximate algorithms…”
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19
A radar plot illustrating the comparison of the classification accuracy, cost values, and fitness values for the hybrids of BEOSA when applied to some medium-sized dimensional data...
Published 2023Subjects: “…requires approximate algorithms…”
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20
Small-scale dataset comparative analysis using computation resources.
Published 2023Subjects: “…requires approximate algorithms…”