2021
DOI: 10.20944/preprints202105.0689.v1
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Short Note on Comparing Stacking Modelling Versus Cannistraci-Hebb Adaptive Network Automata for Link Prediction in Complex Networks

Abstract: Link prediction is an iconic problem in complex networks because deals with the ability to predict nonobserved existing or future parts of the network structure. The impact of this prediction on real applications can be disruptive: from prediction of covert links between terrorists in their social networks to repositioning of drugs in molecular diseasome networks. Here we compare: (1) an ensemble meta-learning method (Ghasemian et al.), which uses an artificial intelligence (AI) stacking strategy to create a s… Show more

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Cited by 4 publications
(10 citation statements)
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“…These methods are tested over 5500 simulations (550 networks x 10 repetitions) and the result is that: in 66% cases AUC-PR and AUC-ROC agrees that CHA performs better than SBM; in 31% cases CHA has higher AUC-PR and SBM has higher AUC-ROC; in 3% cases SBM has higher AUC-PR and CHA has higher AUC-ROC. This means that in the study of Muscoloni and Cannistraci 18,19 there is around 34% disagreement between AUC-ROC and AUC-PR that indeed is in line with Tao Zhou 17 mentioning that 1/3 of cases have disagreement. Interestingly, in a recent study, Tao Zhou 20 offers a valid theoretical explanation of the conditions under which AUC-PR and AUC-ROC evaluation agrees.…”
Section: Introductionsupporting
confidence: 63%
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“…These methods are tested over 5500 simulations (550 networks x 10 repetitions) and the result is that: in 66% cases AUC-PR and AUC-ROC agrees that CHA performs better than SBM; in 31% cases CHA has higher AUC-PR and SBM has higher AUC-ROC; in 3% cases SBM has higher AUC-PR and CHA has higher AUC-ROC. This means that in the study of Muscoloni and Cannistraci 18,19 there is around 34% disagreement between AUC-ROC and AUC-PR that indeed is in line with Tao Zhou 17 mentioning that 1/3 of cases have disagreement. Interestingly, in a recent study, Tao Zhou 20 offers a valid theoretical explanation of the conditions under which AUC-PR and AUC-ROC evaluation agrees.…”
Section: Introductionsupporting
confidence: 63%
“…Truchon and Bayly noted that, in terms of the 'early recognition', the first case is clearly better than second one, which is also significantly better than the third one. We analysed the results of a large-scale experimental study 18,19 on link prediction, which reports AUC-ROC and AUC-PR evaluations of two landmark link prediction methods -Cannistraci-Hebb adaptive network automata (CHA) and stochastic block model (SBM) -tested over 5500 simulations (550 networks x 10 repetitions). One of the interesting finding is that in 31% cases CHA has higher AUC-PR and SBM has higher AUC-ROC.…”
Section: Computational Experiments To Assess the Validity Of Auc-mrocmentioning
confidence: 99%
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