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Bibliography

Journal Article

An empirical comparison of popular structure learning algorithms with a view to gene network inference

Djordjilović V., Chiogna M., Vomlel Jiří

: International Journal of Approximate Reasoning vol.88, 1 (2017), p. 602-613

: GA16-12010S, GA ČR

: Bayesian networks, Structure learning, Reverse engineering, Gene networks

: 10.1016/j.ijar.2016.12.012

: http://library.utia.cas.cz/separaty/2017/MTR/vomlel-0477168.pdf

(eng): In this work, we study the performance of different structure learning algorithms in the context of inferring gene networks from transcription data. We consider representatives of different structure learning approaches, some of which perform unrestricted searches, such as the PC algorithm and the Gobnilp method, and some of which introduce prior information on the structure, such as the K2 algorithm. Competing methods are evaluated both in terms of their predictive accuracy and their ability to reconstruct the true underlying network. Areal data application based on an experiment performed by the University of Padova is also considered.

: JD

: 10201

2019-01-07 08:39