Table 1

Mean accuracy and standard error of the mean of various classifiers, using three features derived from the alignment of the sequences to be compared. 100-fold jackknife resampling was employed. "± " denotes the standard error of the mean.

SVM classifier

Accuracy
Precision
True Positives
True Negatives
False Positives
False Negatives

99.55% ± 0.008
99.31% ± 0.015
1897.1 ± 0.21
1887.9 ± 0.28
13.1 ± 0.28
3.9 ± 0.21

RBF network classifier

Accuracy
Precision
True Positives
True Negatives
False Positives
False Negatives

99.33% ± 0.011
98.91% ± 0.019
1896.5 ± 0.22
1880.1 ± 0.38
20.9 ± 0.38
4.6 ± 0.22

3-feature linear classifier

Accuracy
Precision
True Positives
True Negatives
False Positives
False Negatives

99.42% ± 0.011
99.22% ± 0.020
1893.8 ± 0.35
1886.0 ± 0.39
15.0 ± 0.39
7.2 ± 0.35

Spitzer et al. BMC Bioinformatics 2006 7:110   doi:10.1186/1471-2105-7-110