The standard ordinary least squares based Granger causality is one of the widely used methods for detecting causal interactions between time series data. However, recent developments in technology limit the utilization of some existing implementations due to the availability of high dimensional data. In this paper, we are proposing a technique called Bi-directional Random Forest Granger causality. This technique uses the random forest regularization together with the idea of reusing the time series data by reversing the time stamp to extract more causal information. We have demonstrated the effectiveness of our proposed method by applying it to simulated data and then applied it to two real biological datasets, i.e., fMRI and HeLa cell. fMR...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Biological network diagrams provide a natural means to characterize the association between biologic...
In bioinformatics, the inference of biological networks is one of the most active research areas. It...
Background: Inference and understanding of gene networks from experimental data is an important but ...
www.ufl.edu Granger causality is becoming an important tool for determining causal relations between...
We introduce a novel method called Prophetic Granger Causality (PGC) for inferring gene regulatory n...
We introduce a novel method called Prophetic Granger Causality (PGC) for inferring gene regulatory n...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
The discovery of gene regulatory network (GRN) using gene expression data is one of the promising di...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Biological network diagrams provide a natural means to characterize the association between biologic...
In bioinformatics, the inference of biological networks is one of the most active research areas. It...
Background: Inference and understanding of gene networks from experimental data is an important but ...
www.ufl.edu Granger causality is becoming an important tool for determining causal relations between...
We introduce a novel method called Prophetic Granger Causality (PGC) for inferring gene regulatory n...
We introduce a novel method called Prophetic Granger Causality (PGC) for inferring gene regulatory n...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
The discovery of gene regulatory network (GRN) using gene expression data is one of the promising di...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...