Search alternatives:
complement based » complement past (Expand Search), complement cascade (Expand Search), complement system (Expand Search)
making algorithm » learning algorithm (Expand Search), finding algorithm (Expand Search), means algorithm (Expand Search)
data algorithm » data algorithms (Expand Search), update algorithm (Expand Search), atlas algorithm (Expand Search)
level making » level mapping (Expand Search), level mixing (Expand Search), level speaking (Expand Search)
complement based » complement past (Expand Search), complement cascade (Expand Search), complement system (Expand Search)
making algorithm » learning algorithm (Expand Search), finding algorithm (Expand Search), means algorithm (Expand Search)
data algorithm » data algorithms (Expand Search), update algorithm (Expand Search), atlas algorithm (Expand Search)
level making » level mapping (Expand Search), level mixing (Expand Search), level speaking (Expand Search)
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Relevant Parameters.
Published 2025“…This approach often leads to problems like excessive inventory levels and high management costs. To enhance the reliability of intercity railway operations and reduce spare parts management costs, this paper employs the Zebra Optimization Algorithm-Least Squares Support Vector Machine (ZOA-LSSVM) to analyze the reliability of the important Weibull distribution spare parts of the intercity railway and fit the parameters of the reliability function for spare parts. …”
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Comparison of the EODA algorithm with existing algorithms in terms of recall.
Published 2025Subjects: -
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Comparison of the EODA algorithm with existing algorithms in terms of precision.
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Comparison of the EODA algorithm with existing algorithms in terms of F1-Score.
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Goal relevance.
Published 2024“…They highlighted an important number of ethical issues which could be grouped into five overarching categories: goal relevance, adverse side effects, role of employees, data process, and vagueness. …”
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