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influential

Overview

The goal of influential is to help identification of the most influential nodes in a network as well as the classification and ranking of top candidate features. This package contains functions for the classification and ranking of features, reconstruction of networks from adjacency matrices and data frames, analysis of the topology of the network and calculation of centrality measures as well as a novel and powerful influential node ranking. The Experimental data-based Integrative Ranking (ExIR) is a sophisticated model for classification and ranking of the top candidate features based on only the experimental data. The first integrative method, namely the Integrated Value of Influence (IVI), that captures all topological dimensions of the network for the identification of network most influential nodes is also provided as a function. Also, neighborhood connectivity, H-index, local H-index, and collective influence (CI), all of which required centrality measures for the calculation of IVI, are for the first time provided in an R package. Additionally, a function is provided for running SIRIR model, which is the combination of leave-one-out cross validation technique and the conventional SIR model, on a network to unsupervisedly rank the true influence of vertices. Furthermore, some functions have been provided for the assessment of dependence and correlation of two network centrality measures as well as the conditional probability of deviation from their corresponding means in opposite directions.

Check out our paper for a more complete description of the IVI formula and all of its underpinning methods and analyses.

Author

The influential package was written by Adrian (Abbas) Salavaty

Advisors

Mirana Ramialison and Peter D. Currie

How to Install

You can install the official CRAN release of the influential with the following code:

install.packages("influential")

Or the development version from GitHub:

## install.packages("devtools")
devtools::install_github("asalavaty/influential", 
                         build_vignettes = TRUE)

Vignettes

A comprehensive introduction to influential and all of its functions is available in the vignette.

You may browse Vignettes from within R using the following code.

browseVignettes("influential")

Shiny apps

You can also access the IVI shiny app offline from within R and run it on your local machine using the following command.

influential::runShinyApp("IVI")
  • ExIR Shiny App: A shiny app for running the Experimental-data-based Integrative Ranking (ExIR) model as well as visualization of its results.

You can also access the ExIR shiny app offline from within R and run it on your local machine using the following command.

influential::runShinyApp("ExIR")

How to cite influential

To cite influential, please cite its associated paper:

  • Integrated Value of Influence: An Integrative Method for the Identification of the Most Influential Nodes within Networks. Abbas Salavaty, Mirana Ramialison, Peter D Currie. Patterns. 2020.08.14 (Read online).

You can also refer to the package’s citation information using the citation() function.

citation("influential")

How to contribute

Please don’t hesitate to report any bugs/issues and request for enhancement or any other contributions. To submit a bug report or enhancement request, please use the influential GitHub issues tracker.

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Version

Install

install.packages('influential')

Monthly Downloads

408

Version

2.2.3

License

GPL-3

Issues

Pull Requests

Stars

Forks

Maintainer

Adrian Salavaty

Last Published

July 17th, 2021

Functions in influential (2.2.3)

graph_from_adjacency_matrix

Creating igraph graphs from adjacency matrices
ivi

Integrated Value of Influence (IVI)
ivi.from.indices

Integrated Value of Influence (IVI)
graph_from_data_frame

Creating igraph graphs from data frames
diff_data.assembly

Assembling the differential/regression data
degree

Degree of the vertices
cond.prob.analysis

Conditional probability of deviation from means
coexpression.data

Co-expression dataset
neighborhood.connectivity

Neighborhood connectivity
collective.influence

Collective Influence (CI)
lh_index

local H-index (LH-index)
spreading.score

Spreading score
V

Vertices of an igraph graph
exir

Experimental data-based Integrated Ranking
hubness.score

Hubness score
exir.vis

Visualization of ExIR results
betweenness

Vertex betweenness centrality
double.cent.assess

Assessment of innate features and associations of two network centrality measures (dependent and independent)
influential-package

Influential package
runShinyApp

Run shiny app
sif2igraph

SIF to igraph
double.cent.assess.noRegression

Assessment of innate features and associations of two network centrality measures
comp_manipulate

Computational manipulation of cells
coexpression.adjacency

Adjacency matrix
cent_network.vis

Centrality-based network visualization
clusterRank

ClusterRank (CR)
centrality.measures

Centrality measures dataset
sirir

SIR-based Influence Ranking
graph_from_incidence_matrix

Creating igraph graphs from incidence matrices
h_index

H-index