Search alternatives:
largest decrease » larger decrease (Expand Search), marked decrease (Expand Search)
values decrease » values increased (Expand Search)
linear decrease » linear increase (Expand Search)
laser decrease » larger decrease (Expand Search), water decreases (Expand Search), teer decrease (Expand Search)
largest decrease » larger decrease (Expand Search), marked decrease (Expand Search)
values decrease » values increased (Expand Search)
linear decrease » linear increase (Expand Search)
laser decrease » larger decrease (Expand Search), water decreases (Expand Search), teer decrease (Expand Search)
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Data Sheet 1_Spatial and temporal variability in blue carbon accumulation in the largest salt marsh in British Columbia, Canada.docx
Published 2025“…We combined C measurements with <sup>210</sup>Pb chronologies, in addition to existing data from western Boundary Bay (BBW), to estimate C stocks (g C m<sup>-2</sup>) and accumulation rates (g C m<sup>-2</sup> yr<sup>-1</sup>) for the entire marsh. Total C stocks averaged 71 ± 37 Mg C ha<sup>-1</sup> for high marsh and 41 ± 36 Mg C ha<sup>-1</sup> for low marsh, with higher values in western Boundary Bay (BBW, BBM) compared to the east (BBE, MB). …”
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Study 1_CFA1.
Published 2025“…Findings from Analysis of Covariance (ANCOVA) in Study II indicate that in Experiment I, positive electronic word of mouth does not help improve value co-creation among spectators while negative electronic word of mouth does decrease value co-creation among spectators. …”
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Maximum and mean SL values of the call types.
Published 2024“…Those modelled calls were then used in a permuted discriminant function analysis, support vector machine models, and linear models of Beecher’s information statistic, to investigate whether transmission loss will affect the retention of individual information of the signal. …”
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A Locally Linear Dynamic Strategy for Manifold Learning.
Published 2025“…For 10-30% noise, where the Hebbian network employs a local linear transform, learning selectively increases signal direction alignment (blue) while simultaneously decreasing noise direction alignment (orange). …”
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