Abstract
BackgroundThe generalized relevance network approach to network inference reconstructs network links based on the strength of associations between data in individual network nodes. It can reconstruct undirected networks, i.e., relevance networks, sensu stricto, as well as directed networks, referred to as causal relevance networks. The generalized approach allows the use of an arbitrary measure of pairwise association between nodes, an arbitrary scoring scheme that transforms the associations into weights of the network links, and a method for inferring the directions of the links. While this makes the approach powerful and flexible, it introduces the challenge of finding a combination of components that would perform well on a given inference task.ResultsWe address this challenge by performing an extensive empirical analysis of the performance of 114 variants of the generalized relevance network approach on 47 tasks of gene network inference from time-series data and 39 tasks of gene network inference from steady-state data. We compare the different variants in a multi-objective manner, considering their ranking in terms of different performance metrics. The results suggest a set of recommendations that provide guidance for selecting an appropriate variant of the approach in different data settings.ConclusionsThe association measures based on correlation, combined with a particular scoring scheme of asymmetric weighting, lead to optimal performance of the relevance network approach in the general case. In the two special cases of inference tasks involving short time-series data and/or large networks, association measures based on identifying qualitative trends in the time series are more appropriate.
Highlights
2 abstract: It is a general algorithm that allows the use of an arbitrary measure of pairwise association between nodes, an arbitrary scoring scheme that transforms the associations into weights of the network links, and a method for inferring the directions of the network links
4 the most general one, groups the approaches to network inference in the two broad categories of modelbased and lazy methods, where the group of model-based approaches is further split into super- vised and semi-supervised methods [4, 1]
You are dealing in your paper with causal networks
Summary
Title: Extensive evaluation of the generalized relevance network approach to inferring gene regulatory networks. 2 abstract: It is a general algorithm that allows the use of an arbitrary measure of pairwise association between nodes, an arbitrary scoring scheme that transforms the associations into weights of the network links, and a method for inferring the directions of the network links. All methods discussed in this paper (including the above mentioned one) have been introduced by NOT inferring the direction between links. 4 the most general one, groups the approaches to network inference in the two broad categories of modelbased and lazy (unsupervised) methods, where the group of model-based approaches is further split into super- vised and semi-supervised methods [4, 1] You need to convert it back because otherwise it is labersome to understand what you mean
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