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Exact(5)
The classification error obtained by the decision tree classifier is also below the baseline error for several other diseases, although by a substantially smaller margin.
Both classifiers have a classification error that is clearly below the baseline error, and provide evidence of similarity between the two diseases.
We then show that we are able to train classifiers that achieve a classification error that is clearly below the baseline error for T1D, T2D, BD, HT and CAD.
For the remaining diseases (including HT and BD), the classifiers using only one of the control sets do not achieve a classification error below the baseline error, most likely due to the smaller training set (i.e. overfitting).
These SNPs were also removed in the preprocessing step of our study, and the results we obtain when trying to distinguish the two control sets therefore show that the decision tree classifier is able to achieve a classification error below the baseline error even though the SNPs with the strongest association could not be used by the classifier.
Similar(55)
The baseline error rates for data entry in each province are well below the 1% level of acceptability.
We refer to this value as the baseline error.
The baseline errors of different combination strategies are shown in Figs. 7 and 8. Baseline errors are the difference between the estimated baseline length and precise reference baseline length.
Such analysis is carried out to understand the yet unsolved discrepancy between the predicted baseline errors and the observed ones.
Of those families, 27 started out below the baseline.
The incidence of AKI remained below the baseline from 2012.
Related(20)
below the reference error
below the background error
below the prediction error
below the baseline week
below the observation error
below the baseline chow
below the baseline frequency
below the baseline threshold
below the estimation error
below the truncation error
below the baseline mean
below the baseline score
below the quantum error
below the baseline blood
below the baseline rate
below the measurement error
below the baseline pressure
below the baseline debt
below the baseline assumption
below the baseline amplitude
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