Search alternatives:
robust optimization » process optimization (Expand Search), robust estimation (Expand Search), joint optimization (Expand Search)
linear optimization » lead optimization (Expand Search), after optimization (Expand Search)
levels based » level based (Expand Search), models based (Expand Search), cells based (Expand Search)
based robust » based probes (Expand Search)
binary based » library based (Expand Search), linac based (Expand Search), binary mask (Expand Search)
based linear » based library (Expand Search), best linear (Expand Search), wise linear (Expand Search)
robust optimization » process optimization (Expand Search), robust estimation (Expand Search), joint optimization (Expand Search)
linear optimization » lead optimization (Expand Search), after optimization (Expand Search)
levels based » level based (Expand Search), models based (Expand Search), cells based (Expand Search)
based robust » based probes (Expand Search)
binary based » library based (Expand Search), linac based (Expand Search), binary mask (Expand Search)
based linear » based library (Expand Search), best linear (Expand Search), wise linear (Expand Search)
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Image_1_Identification of a Novel Prognostic Signature for Gastric Cancer Based on Multiple Level Integration and Global Network Optimization.TIF
Published 2021“…To mine for novel prognostic signatures associated with GC, we performed topological analysis, a random walk with restart algorithm, in the GCsLMM from three levels, miRNA-, mRNA-, and lncRNA-levels. …”
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Model robustness testing results.
Published 2025“…Current traffic monitoring systems often rely on single data sources, which limits their detection accuracy and robustness in complex environments. To address these limitations, we propose a framework based on multimodal deep fusion and heterogeneous graph neural networks (HGNNs), incorporating an Ensemble Contrastive Pessimistic Likelihood Estimation (CPLE) algorithm to optimize performance. …”
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Location scheme of the new entrant (<i>γ</i><sub>1</sub> = 0.9, <i>γ</i><sub>2</sub> = 1).
Published 2022Subjects: -
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Location scheme of the new entrant (<i>γ</i><sub>1</sub> = 0.4, <i>γ</i><sub>2</sub> = 0.6).
Published 2022Subjects: -
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