Journal article
Gaining confidence in inferred networks
LPM Diaz, MPH Stumpf
Scientific Reports | Published : 2022
Open access
Abstract
Network inference is a notoriously challenging problem. Inferred networks are associated with high uncertainty and likely riddled with false positive and false negative interactions. Especially for biological networks we do not have good ways of judging the performance of inference methods against real networks, and instead we often rely solely on the performance against simulated data. Gaining confidence in networks inferred from real data nevertheless thus requires establishing reliable validation methods. Here, we argue that the expectation of mixing patterns in biological networks such as gene regulatory networks offers a reasonable starting point: interactions are more likely to occur b..
View full abstractGrants
Funding Acknowledgements
This work is funded through the University of Melbourne's Deputy Vice Chancellor Driving Research Momentum Fund.