Showing 121 - 140 results of 18,420 for search '(( auc ((values increased) OR (largest decrease)) ) OR ( ((i larger) OR (a large)) decrease ))', query time: 0.98s Refine Results
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    Geographical distribution of large cities and small cities. by Saul Estrin (8629173)

    Published 2024
    “…The Figure reveals two patterns: 1) the maximum level of innovation is higher in large cities (2.53) than in small cities (2.02); 2) among large cities in <b>a</b>, innovation levels in general decrease with nightlight density. …”
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    <b>Supporting data for manuscript</b> "<b>Voluntary locomotion induces an early and remote hemodynamic decrease in the large cerebral veins</b>" by Kira Shaw (18796168)

    Published 2025
    “…<p dir="ltr">The CSV file 'Eyreetal_DrainingVein_SourceData' contains the averaged time series traces and extracted metrics from individual experiments used across Figures 1-5 in the manuscript "Voluntary locomotion induces an early and remote hemodynamic decrease in the large cerebral veins". …”
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    The introduction of mutualisms into assembled communities increases their connectance and complexity while decreasing their richness. by Gui Araujo (22170819)

    Published 2025
    “…Parameter values: interaction strengths were drawn from a half-normal distribution of zero mean and a standard deviation of 0.2, and strength for consumers was made no larger than the strength for resources. …”
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    Spatial information of excitatory neurons in APP/PS1 mice are decreased in dCA1 and vCA1. by Udaysankar Chockanathan (18510288)

    Published 2024
    “…<p>(A) In dCA1, spatial information was decreased in APP/PS1 mice relative to C57BL/6 controls (mean ± std: C57BL/6 = 0.134 ± 0.050, APP/PS1 = 0.132 ± 0.054, p < 0.01, two-sided Wilcoxon rank-sum test, n<sub>C57BL/6</sub> = 229 units from 5 recording sessions, n<sub>APP/PS1</sub> = 124 units from 4 recording sessions). …”
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    Observation of a Large Slip Effect in the Nanoscale Flow of Highly Viscous Supercooled Liquid Metals by Jun-Xiang Xiang (16751412)

    Published 2023
    “…Here, we report the observation of a large boundary slip in the nanoscale flow of highly viscous supercooled liquid metals (with viscosities of ≲10<sup>8</sup> Pa s), enabled by the hydrophobic treatment of smooth nanochannels. …”
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    Observation of a Large Slip Effect in the Nanoscale Flow of Highly Viscous Supercooled Liquid Metals by Jun-Xiang Xiang (16751412)

    Published 2023
    “…Here, we report the observation of a large boundary slip in the nanoscale flow of highly viscous supercooled liquid metals (with viscosities of ≲10<sup>8</sup> Pa s), enabled by the hydrophobic treatment of smooth nanochannels. …”
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    Scheme of g-λ model with larger values λ. by Zhanfeng Fan (20390992)

    Published 2024
    “…And if the value of λ assumes larger values, the distortion in the shape of the transmitted wave is associated with the plastic deformation in the uncoupled rock mass. …”
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    AUC statistics comparing statistical trends in control and test populations. by Madeline Jarvis-Cross (22394247)

    Published 2025
    “…<p>To evaluate statistical trends, we calculated Kendall’s rank correlation coefficient during the pre-critical interval (here, days one to sixty), and compared control (constant temperature, non-epidemic) and warming (warming treatment, epidemic emergence) coefficients across simulations and experimental populations by calculating the area under the curve (AUC) statistic. Values less than 0.5 suggest that a decrease in the statistical metric indicates emergence, while values greater than 0.5 suggest that an increase in the statistical metric indicates emergence, with more extreme values indicating stronger trends. …”
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    Original datasets for providing ROC-AUC curves. by Xueliang Guo (4797057)

    Published 2025
    “…By employing skip connections, the model effectively integrates the high-resolution features from the encoder with the up-sampling features from the decoder, thereby increasing the model’s sensitivity to 3D spatial characteristics. …”