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based optimization » whale optimization (Expand Search)
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based optimization » whale optimization (Expand Search)
sample bayesian » applied bayesian (Expand Search)
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data sample » data samples (Expand Search)
mask based » task based (Expand Search), tasks based (Expand Search), risk based (Expand Search)
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Bayesian network for BMV_OD model.
Published 2024“…Subsequently, Bayesian Network (BN) structure learning algorithms were utilized to construct 32 BN models after pairing the accident data from the four accident cluster types before and after sampling. …”
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Bayesian network for BMV_C1 model.
Published 2024“…Subsequently, Bayesian Network (BN) structure learning algorithms were utilized to construct 32 BN models after pairing the accident data from the four accident cluster types before and after sampling. …”
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Bayesian network for BMV_C3 model.
Published 2024“…Subsequently, Bayesian Network (BN) structure learning algorithms were utilized to construct 32 BN models after pairing the accident data from the four accident cluster types before and after sampling. …”
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Bayesian network for BMV_C2 model.
Published 2024“…Subsequently, Bayesian Network (BN) structure learning algorithms were utilized to construct 32 BN models after pairing the accident data from the four accident cluster types before and after sampling. …”
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TSEC: A Framework for Online Experimentation under Experimental Constraints
Published 2023“…<p>Thompson sampling is a popular algorithm for tackling multi-armed bandit problems, and has been applied in a wide range of applications, from website design to portfolio optimization. …”
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Data_Sheet_1_Interpretability With Accurate Small Models.pdf
Published 2020“…The mixture model parameters are learned using Bayesian Optimization. Under simplistic assumptions, we would need to optimize for O(d) variables for a distribution over a d-dimensional input space, which is cumbersome for most real-world data. …”