netClass-package |
An R package for network-Based microarray Classification |
ad.matrix |
An adjacency matrix of a sample graph... |
calc.diffusionKernelp |
Computing the Random Walk Kernel matrix of network |
classify.aep |
Training and predicting using aepSVM (aepSVM) classification methods |
classify.frsvm |
Training and predicting using FrSVM |
classify.hubc |
Training and predicting using hub nodes classification methods |
classify.pac |
Training and predicting using PAC classification methods |
classify.stsvm |
Training and predicting using stSVM classification methods |
cv.aep |
Cross validation for aepSVM (aepSVM) |
cv.frsvm |
Cross validation for FrSVM |
cv.hubc |
Cross validation for hub nodes classification |
cv.pac |
Cross validation for Pathway Activities Classification(PAC) |
cv.stsvm |
Cross validation for smoothed t-statistic to select significant top ranked differential expressed genes |
EN2SY |
An list for mapping gene entre ids to symbol ids |
expr |
Two expression profile matrixs and their labels |
getGeneRanking |
Get gene ranking based on geneRank algorithm. |
getGraphRank |
Random walk kernel matrix smoothing t-statistic |
Gs2 |
An subgraph of hub nodes |
netClass |
An R package for network-Based microarray Classification |
pGeneRANK |
GeneRANK |
pOfHubs |
Computing p value of hubs using the permutation test |
predictAep |
Predicting the test tdata using aep trained model |
predictFrsvm |
Predicting the test data using frsvm trained model |
predictHubc |
Predicting the test data using hubc trained model |
predictPac |
Predicting the test data using pac trained model |
predictStsvm |
Predicting the test data using stsvm trained model |
probeset2pathway |
Generae a mean gene expression of genes of each pathway matrix |
probeset2pathwayTrain |
Search CROG in training data |
probeset2pathwayTst |
Applied CROG to testing data |
train.aep |
Training the data using aep methods |
train.frsvm |
Training the data using frsvm method |
train.hubc |
Predicting the data using hub nodes classification model |
train.pac |
Training the data using pac methods |
train.stsvm |
Training the data using stsvm methods |