A B C D E F G I K L M N P R S T misc
actualClasses | Container for Storing Classification Results |
actualClasses-method | Container for Storing Classification Results |
bartlettSelection | Selection of Differential Variability with Bartlett Statistic |
bartlettSelection-method | Selection of Differential Variability with Bartlett Statistic |
calcCVperformance | Add Performance Calculations to a ClassifyResult Object or Calculate for a Pair of Factor Vectors |
calcCVperformance-method | Add Performance Calculations to a ClassifyResult Object or Calculate for a Pair of Factor Vectors |
calcExternalPerformance | Add Performance Calculations to a ClassifyResult Object or Calculate for a Pair of Factor Vectors |
calcExternalPerformance-method | Add Performance Calculations to a ClassifyResult Object or Calculate for a Pair of Factor Vectors |
calcPerformance | Add Performance Calculations to a ClassifyResult Object or Calculate for a Pair of Factor Vectors |
characterOrDataFrame | Union of a Character and a DataFrame |
characterOrDataFrame-class | Union of a Character and a DataFrame |
classes | Asthma RNA Abundance and Patient Classes |
classifyInterface | An Interface for PoiClaClu Package's Classify Function |
classifyInterface-method | An Interface for PoiClaClu Package's Classify Function |
ClassifyResult | Container for Storing Classification Results |
ClassifyResult-class | Container for Storing Classification Results |
ClassifyResult-method | Container for Storing Classification Results |
differentMeansSelection | Selection of Differentially Abundant Features |
differentMeansSelection-method | Selection of Differentially Abundant Features |
distribution | Get Frequencies of Feature Selection and Sample Errors |
distribution-method | Get Frequencies of Feature Selection and Sample Errors |
dlda | Trained dlda Object |
dlda-class | Trained dlda Object |
DLDApredictInterface | An Interface for sparsediscrim Package's dlda Function |
DLDApredictInterface-method | An Interface for sparsediscrim Package's dlda Function |
DLDAtrainInterface | An Interface for sparsediscrim Package's dlda Function |
DLDAtrainInterface-method | An Interface for sparsediscrim Package's dlda Function |
DMDselection | Selection of Differential Distributions with Differences in Means or Medians and a Deviation Measure |
DMDselection-method | Selection of Differential Distributions with Differences in Means or Medians and a Deviation Measure |
EasyHardClassifier | Container for a Pair of Trained Classifiers |
easyHardClassifier | Two-stage Classification Using Easy-to-collect Data Set and Hard-to-collect data set. |
EasyHardClassifier-class | Container for a Pair of Trained Classifiers |
EasyHardClassifier-method | Container for a Pair of Trained Classifiers |
easyHardClassifierPredict | Two-stage Classification Using Easy-to-collect Data Set and Hard-to-collect data set. |
easyHardClassifierPredict-method | Two-stage Classification Using Easy-to-collect Data Set and Hard-to-collect data set. |
easyHardClassifierTrain | Two-stage Classification Using Easy-to-collect Data Set and Hard-to-collect data set. |
easyHardClassifierTrain-method | Two-stage Classification Using Easy-to-collect Data Set and Hard-to-collect data set. |
easyHardFeatures | Extract Chosen Features from an EasyHardClassifier Object |
easyHardFeatures-method | Extract Chosen Features from an EasyHardClassifier Object |
edgeRselection | Feature Selection Based on Differential Expression for Count Data |
edgeRselection-method | Feature Selection Based on Differential Expression for Count Data |
edgesToHubNetworks | Convert a Two-column Matrix or Data Frame into a Hub Node List |
elasticNetFeatures | Extract Vectors of Ranked and Selected Features From an Elastic Net GLM Object |
elasticNetFeatures-method | Extract Vectors of Ranked and Selected Features From an Elastic Net GLM Object |
elasticNetGLMinterface | An Interface for glmnet Package's glmnet Function |
elasticNetGLMpredictInterface | An Interface for glmnet Package's glmnet Function |
elasticNetGLMpredictInterface-method | An Interface for glmnet Package's glmnet Function |
elasticNetGLMtrainInterface | An Interface for glmnet Package's glmnet Function |
elasticNetGLMtrainInterface-method | An Interface for glmnet Package's glmnet Function |
featureNames | Container for Storing Classification Results |
featureNames-method | Container for Storing Classification Results |
features | Container for Storing Classification Results |
features-method | Container for Storing Classification Results |
FeatureSetCollection | Container for Storing A Collection of Sets |
FeatureSetCollection-class | Container for Storing A Collection of Sets |
FeatureSetCollection-method | Container for Storing A Collection of Sets |
FeatureSetCollectionOrNULL | Union of a FeatureSetCollection and NULL |
FeatureSetCollectionOrNULL-class | Union of a FeatureSetCollection and NULL |
featureSetSummary | Transform a Table of Feature Abundances into a Table of Feature Set Abundances. |
featureSetSummary-method | Transform a Table of Feature Abundances into a Table of Feature Set Abundances. |
fisherDiscriminant | Classification Using Fisher's LDA |
fisherDiscriminant-method | Classification Using Fisher's LDA |
forestFeatures | Extract Vectors of Ranked and Selected Features From a Random Forest Object |
forestFeatures-method | Extract Vectors of Ranked and Selected Features From a Random Forest Object |
functionOrList | Union of Functions and List of Functions |
functionOrList-class | Union of Functions and List of Functions |
functionOrNULL | Union of A Function and NULL |
functionOrNULL-class | Union of A Function and NULL |
getLocationsAndScales | Calculate Location and Scale |
getLocationsAndScales-method | Calculate Location and Scale |
integerOrNumeric | Union of a Integer and a Numeric |
integerOrNumeric-class | Union of a Integer and a Numeric |
interactorDifferences | Convert Individual Features into Differences Between Binary Interactors Based on Known Sub-networks |
interactorDifferences-method | Convert Individual Features into Differences Between Binary Interactors Based on Known Sub-networks |
kNNinterface | An Interface for class Package's knn Function |
kNNinterface-method | An Interface for class Package's knn Function |
KolmogorovSmirnovSelection | Selection of Differential Distributions with Kolmogorov-Smirnov Distance |
KolmogorovSmirnovSelection-method | Selection of Differential Distributions with Kolmogorov-Smirnov Distance |
kTSPclassifier | Classification Using k Pairs of Features With Relative Differences Between Classes |
kTSPclassifier-method | Classification Using k Pairs of Features With Relative Differences Between Classes |
KullbackLeiblerSelection | Selection of Differential Distributions with Kullback-Leibler Distance |
KullbackLeiblerSelection-method | Selection of Differential Distributions with Kullback-Leibler Distance |
length-method | Container for Storing A Collection of Sets |
leveneSelection | Selection of Differential Variability with Levene Statistic |
leveneSelection-method | Selection of Differential Variability with Levene Statistic |
likelihoodRatioSelection | Selection of Differential Distributions with Likelihood Ratio Statistic |
likelihoodRatioSelection-method | Selection of Differential Distributions with Likelihood Ratio Statistic |
limmaSelection | Selection of Differentially Abundant Features |
limmaSelection-method | Selection of Differentially Abundant Features |
listOrCharacterOrNULL | Union of a List and a Character Vector and NULL |
listOrCharacterOrNULL-class | Union of a List and a Character Vector and NULL |
listOrNULL | Union of a List and NULL |
listOrNULL-class | Union of a List and NULL |
measurements | Asthma RNA Abundance and Patient Classes |
mixmodels | Classification based on Differential Distribution utilising Mixtures of Normals |
MixModelsListsSet | Container for a List of Lists Containing Mixture Models |
MixModelsListsSet-class | Container for a List of Lists Containing Mixture Models |
MixModelsListsSet-method | Container for a List of Lists Containing Mixture Models |
mixModelsPredict | Classification based on Differential Distribution utilising Mixtures of Normals |
mixModelsPredict-method | Classification based on Differential Distribution utilising Mixtures of Normals |
mixModelsTrain | Classification based on Differential Distribution utilising Mixtures of Normals |
mixModelsTrain-method | Classification based on Differential Distribution utilising Mixtures of Normals |
models | Container for Storing Classification Results |
models-method | Container for Storing Classification Results |
multnet | Trained multnet Object |
multnet-class | Trained multnet Object |
naiveBayesKernel | Classification Using A Bayes Classifier with Kernel Density Estimates |
naiveBayesKernel-method | Classification Using A Bayes Classifier with Kernel Density Estimates |
networkCorrelationsSelection | Selection of Differentially Correlated Hub Sub-networks |
networkCorrelationsSelection-method | Selection of Differentially Correlated Hub Sub-networks |
NSCpredictInterface | Interface for 'pamr.predict' Function from 'pamr' CRAN Package |
NSCpredictInterface-method | Interface for 'pamr.predict' Function from 'pamr' CRAN Package |
NSCselectionInterface | Interface for 'pamr.listgenes' Function from 'pamr' CRAN Package |
NSCselectionInterface-method | Interface for 'pamr.listgenes' Function from 'pamr' CRAN Package |
NSCtrainInterface | Interface for 'pamr.train' Function from 'pamr' CRAN Package |
NSCtrainInterface-method | Interface for 'pamr.train' Function from 'pamr' CRAN Package |
pairsDifferencesSelection | Selection of Pairs of Features that are Different Between Classes |
pairsDifferencesSelection-method | Selection of Pairs of Features that are Different Between Classes |
pamrtrained | Trained pamr Object |
pamrtrained-class | Trained pamr Object |
performance | Container for Storing Classification Results |
performance-method | Container for Storing Classification Results |
performancePlot | Plot Performance Measures for Various Classifications |
performancePlot-method | Plot Performance Measures for Various Classifications |
plotFeatureClasses | Plot Density, Scatterplot, Parallel Plot or Bar Chart for Features By Class |
plotFeatureClasses-method | Plot Density, Scatterplot, Parallel Plot or Bar Chart for Features By Class |
predictions | Container for Storing Classification Results |
predictions-method | Container for Storing Classification Results |
PredictParams | Parameters for Classifier Prediction |
PredictParams-class | Parameters for Classifier Prediction |
PredictParams-method | Parameters for Classifier Prediction |
previousSelection | Automated Selection of Previously Selected Features |
previousSelection-method | Automated Selection of Previously Selected Features |
previousTrained | Automated Usage of Previously Created Classifiers |
previousTrained-method | Automated Usage of Previously Created Classifiers |
randomForest | Trained randomForest Object |
randomForest-class | Trained randomForest Object |
randomForestInterface | An Interface for randomForest Package's randomForest Function |
randomForestPredictInterface | An Interface for randomForest Package's randomForest Function |
randomForestPredictInterface-method | An Interface for randomForest Package's randomForest Function |
randomForestTrainInterface | An Interface for randomForest Package's randomForest Function |
randomForestTrainInterface-method | An Interface for randomForest Package's randomForest Function |
rankingPlot | Plot Pair-wise Overlap of Ranked Features |
rankingPlot-method | Plot Pair-wise Overlap of Ranked Features |
ResubstituteParams | Parameters for Resubstitution Error Calculation |
ResubstituteParams-class | Parameters for Resubstitution Error Calculation |
ResubstituteParams-method | Parameters for Resubstitution Error Calculation |
ROCplot | Plot Receiver Operating Curve Graphs for Classification Results |
ROCplot-method | Plot Receiver Operating Curve Graphs for Classification Results |
runTest | Perform a Single Classification |
runTest-method | Perform a Single Classification |
runTestEasyHard | Perform a Single Classification |
runTestEasyHard-method | Perform a Single Classification |
runTests | Reproducibly Run Various Kinds of Cross-Validation |
runTests-method | Reproducibly Run Various Kinds of Cross-Validation |
runTestsEasyHard | Reproducibly Run Various Kinds of Cross-Validation |
runTestsEasyHard-method | Reproducibly Run Various Kinds of Cross-Validation |
sampleNames | Container for Storing Classification Results |
sampleNames-method | Container for Storing Classification Results |
samplesMetricMap | Plot a Grid of Sample Error Rates or Accuracies |
samplesMetricMap-method | Plot a Grid of Sample Error Rates or Accuracies |
selectionPlot | Plot Pair-wise Overlap or Selection Size Distribution of Selected Features |
selectionPlot-method | Plot Pair-wise Overlap or Selection Size Distribution of Selected Features |
SelectParams | Parameters for Feature Selection |
SelectParams-class | Parameters for Feature Selection |
SelectParams-method | Parameters for Feature Selection |
SelectResult | Container for Storing Feature Selection Results |
SelectResult-class | Container for Storing Feature Selection Results |
SelectResult-method | Container for Storing Feature Selection Results |
show-method | Container for Storing Classification Results |
show-method | Container for a Pair of Trained Classifiers |
show-method | Container for Storing A Collection of Sets |
show-method | Container for Storing Feature Selection Results |
subtractFromLocation | Subtract Numeric Feature Measurements from a Location |
subtractFromLocation-method | Subtract Numeric Feature Measurements from a Location |
svm | Trained svm Object |
svm-class | Trained svm Object |
SVMpredictInterface | An Interface for e1071 Package's Support Vector Machine Classifier. |
SVMpredictInterface-method | An Interface for e1071 Package's Support Vector Machine Classifier. |
SVMtrainInterface | An Interface for e1071 Package's Support Vector Machine Classifier. |
SVMtrainInterface-method | An Interface for e1071 Package's Support Vector Machine Classifier. |
totalPredictions | Container for Storing Classification Results |
totalPredictions-method | Container for Storing Classification Results |
TrainParams | Parameters for Classifier Training |
TrainParams-class | Parameters for Classifier Training |
TrainParams-method | Parameters for Classifier Training |
TransformParams | Parameters for Data Transformation |
TransformParams-class | Parameters for Data Transformation |
TransformParams-method | Parameters for Data Transformation |
tunedParameters | Container for Storing Classification Results |
tunedParameters-method | Container for Storing Classification Results |
[-method | Container for Storing A Collection of Sets |
[[-method | Container for Storing A Collection of Sets |