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synRNASeqNet (version 1.0)

synRNASeqNet-package: Synthetic RNA-Seq Network Generation and Mutual Information Estimates

Description

It implements various estimators of mutual information, such as the maximum likelihood and the Millow-Madow estimator, various Bayesian estimators, the shrinkage estimator, and the Chao-Shen estimator. It also offers wrappers to the kNN and kernel density estimators. Furthermore, it provides various index of performance evaluation such as precision, recall, FPR, F-Score, ROC-PR Curves and so on. Lastly, it provides a brand new way of generating synthetic RNA-Seq Network with known dependence structure.

Arguments

Index

synRNASeqNet-package:
Synthetic RNA-Seq Network Generation and Mutual Information Estimates
parMIEstimate:
Parallel Mutual Information Estimation
parEntropyEstimate:
Parallel Entropy Estimation
entropyML:
Maximum Likelihood Entropy Estimate
entropyMM:
Miller-Madow corrected Entropy Estimate
entropyBayes:
Bayesian Entropy Estimate
entropyCS:
Chao-Shen Entropy Estimate
entropyShrink:
James-Stein Shrinkage Entropy Estimate
parMIKD:
Parallel Kernel Density Mutual Information Estimate
simulatedData:
Random Generation Networks for RNA-Seq Data
mainNetFunction:
Main Estimation and Evaluation Function
plotROC:
Plot ROC Curve
plotPR:
Plot PR Curve
aucDisc:
Calculate Area Under a (ROC/PR) Curve
performanceIndex:
Evalutate Performance Indices
performanceNET:
Evalutate Performance Indices
YoudenIndex:
Youden's Index
Likelihoods:
Likelihood Indices
DiscriminantPower:
Discriminant Power