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To obtain the best model, the Preservability was assessed from three different approaches: objective, objective-weighted and weighted.
The selection process of the sample introduction approach involved comparing the results obtained from three different approaches: a) use of gas sampling bag followed by SPME (Tedlar®-SPME), b) gas sampling bag followed by TD (Tedlar®-TD), and c) sampling directly on TD sorbents (Direct-TD).
The comparison of 40Ar/39Ar ages derived from three different approaches clearly indicate the sensitivity of age determination to the choice of trapped (40Ar/36Ar t.
It appears from the comparative analysis of the results from three different approaches that the results were consistent and very similar.
QbE STD has been mainly addressed from three different approaches: methods based on the word/subword transcription of the query, methods based on template matching of features, and hybrid approaches.
The results from three different approaches: the Average linkage method, the scree plot of within groups sum of squares, ratio of between-cluster variability and within-cluster variability, and the Multi-scale bootstrap of Ward's method are described and discussed below in (a), (b) and (c).
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We compare the results from two different approaches to data linkage, focusing on the need to account for spatial scale and the support of spatial data in the analysis.
By integrating the results obtained from two different approaches, nondetections are reduced.
The historical timelines of the selected users from two different approaches; activity-based and random sampling are retrieved using the REST API.
We do it from two different approaches, the first is Δ-symmetric property recently studied in Samet and Vetro (Coupled fixed point theorems for multi-valued nonlinear contraction mappings in partially ordered metric spaces, Nonlinear Anal.
In this article, an integrated system of unsupervised classification named unsupervised multiple classifier system (UMCS) is developed using individual classifiers from two different approaches, traditional (classical) and artificial neural network.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com