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Table 2 Performances of GASA, TSNI, NCA, GAGA and GA-regular SA applied to data simulated from Eq. (2) with medium level of noise, where the averaged results of five repeats are reported

From: Inferring genetic interactions via a nonlinear model and an optimization algorithm

  

# inta

# pcb

TPRc

TNRd

FPRd

mFPRe

GASA

AIC/no power law

  

0.79

0.99

0.01

0.05

 

BIC/power law

  

0.79

0.99

0.01

0.05

GA-regular SA

AIC/no power law

  

0.46

0.97

0.03

0.25

 

BIC/power law

  

0.42

0.93

0.07

0.42

NCA

100% true connectivity

  

0.51

0.92

0.08

0.41

 

50% true connectivity

  

0.29

0.86

0.14

0.68

TSNI

Inputting prior knowledge: 26 true links

3

1

0.50

0.89

0.11

0.50

  

3

2

0.50

0.89

0.11

0.50

  

3

3

0.50

0.89

0.11

0.50

GA-GA

AIC/no power law

  

0.35

0.78

0.22

0.74

 

BIC/power law

  

0.31

0.85

0.15

0.69

  1. a '# int' denotes the number of interpolations.
  2. b '# PC' denotes the number of principal components
  3. c TPR is the ratio of the correctly predicted links to the total existing links in a simulated network. Note signs of interactions were not accounted toward TPR and other performance measure.
  4. d TNR (FPR) is the ratio of correctly predicted non-existing links (false positives) over the total true negatives.
  5. e mFPR is the ratio of incorrectly predicted links to the total predicted links.