A B C D E G H J K L M O P R S T U V
DMwR-package | Functions and data for the book "Data Mining with R" |
algae | Training data for predicting algae blooms |
algae.sols | The solutions for the test data set for predicting algae blooms |
bestScores | Obtain the best scores from an experimental comparison |
bootRun | Class "bootRun" |
bootRun-class | Class "bootRun" |
bootSettings | Class "bootSettings" |
bootSettings-class | Class "bootSettings" |
bootstrap | Runs a bootstrap experiment |
centralImputation | Fill in NA values with central statistics |
centralValue | Obtain statistic of centrality |
class.eval | Calculate Some Standard Classification Evaluation Statistics |
compAnalysis | Analyse and print the statistical significance of the differences between a set of learners. |
compExp | Class "compExp" |
compExp-class | Class "compExp" |
CRchart | Plot a Cumulative Recall chart |
crossValidation | Run a Cross Validation Experiment |
cvRun | Class "cvRun" |
cvRun-class | Class "cvRun" |
cvSettings | Class "cvSettings" |
cvSettings-class | Class "cvSettings" |
dataset | Class "dataset" |
dataset-class | Class "dataset" |
dist.to.knn | An auxiliary function of 'lofactor()' |
DMwR | Functions and data for the book "Data Mining with R" |
dsNames | Obtain the name of the data sets involved in an experimental comparison |
experimentalComparison | Carry out Experimental Comparisons Among Learning Systems |
expSettings | Class "expSettings" |
expSettings-class | Class "expSettings" |
getFoldsResults | Obtain the results on each iteration of a learner |
getSummaryResults | Obtain a set of descriptive statistics of the results of a learner |
getVariant | Obtain the learner associated with an identifier within a comparison |
growingWindowTest | Obtain the predictions of a model using a growing window learning approach. |
GSPC | A set of daily quotes for SP500 |
hldRun | Class "hldRun" |
hldRun-class | Class "hldRun" |
hldSettings | Class "hldSettings" |
hldSettings-class | Class "hldSettings" |
holdOut | Runs a Hold Out experiment |
join | Merging several 'compExp' class objects |
kNN | k-Nearest Neighbour Classification |
knneigh.vect | An auxiliary function of 'lofactor()' |
knnImputation | Fill in NA values with the values of the nearest neighbours |
learner | Class "learner" |
learner-class | Class "learner" |
learnerNames | Obtain the name of the learning systems involved in an experimental comparison |
LinearScaling | Normalize a set of continuous values using a linear scaling |
lofactor | An implementation of the LOF algorithm |
loocv | Run a Leave One Out Cross Validation Experiment |
loocvRun | Class "loocvRun" |
loocvRun-class | Class "loocvRun" |
loocvSettings | Class "loocvSettings" |
loocvSettings-class | Class "loocvSettings" |
manyNAs | Find rows with too many NA values |
mcRun | Class "mcRun" |
mcRun-class | Class "mcRun" |
mcSettings | Class "mcSettings" |
mcSettings-class | Class "mcSettings" |
monteCarlo | Run a Monte Carlo experiment |
outliers.ranking | Obtain outlier rankings |
plot-method | Class "compExp" |
plot-method | Class "cvRun" |
plot-method | Class "hldRun" |
plot-method | Class "mcRun" |
plot-method | Class "tradeRecord" |
PRcurve | Plot a Precision/Recall curve |
prettyTree | Visual representation of a tree-based model |
rankSystems | Provide a ranking of learners involved in an experimental comparison. |
reachability | An auxiliary function of 'lofactor()' |
regr.eval | Calculate Some Standard Regression Evaluation Statistics |
ReScaling | Re-scales a set of continuous values into a new range using a linear scaling |
resp | Obtain the target variable values of a prediction problem |
rpartXse | Obtain a tree-based model |
rt.prune | Prune a tree-based model using the SE rule |
runLearner | Run a Learning Algorithm |
sales | A data set with sale transaction reports |
SelfTrain | Self train a model on semi-supervised data |
show-method | Class "bootSettings" |
show-method | Class "compExp" |
show-method | Class "cvSettings" |
show-method | Class "dataset" |
show-method | Class "hldSettings" |
show-method | Class "learner" |
show-method | Class "loocvSettings" |
show-method | Class "mcSettings" |
show-method | Class "task" |
show-method | Class "tradeRecord" |
sigs.PR | Precision and recall of a set of predicted trading signals |
slidingWindowTest | Obtain the predictions of a model using a sliding window learning approach. |
SMOTE | SMOTE algorithm for unbalanced classification problems |
SoftMax | Normalize a set of continuous values using SoftMax |
statNames | Obtain the name of the statistics involved in an experimental comparison |
statScores | Obtains a summary statistic of one of the evaluation metrics used in an experimental comparison, for all learners and data sets involved in the comparison. |
subset-method | Methods for Function subset in Package 'DMwR' |
subset-methods | Methods for Function subset in Package 'DMwR' |
summary-method | Class "bootRun" |
summary-method | Class "compExp" |
summary-method | Class "cvRun" |
summary-method | Class "hldRun" |
summary-method | Class "loocvRun" |
summary-method | Class "mcRun" |
summary-method | Class "tradeRecord" |
task | Class "task" |
task-class | Class "task" |
test.algae | Testing data for predicting algae blooms |
tradeRecord | Class "tradeRecord" |
tradeRecord-class | Class "tradeRecord" |
trading.signals | Discretize a set of values into a set of trading signals |
trading.simulator | Simulate daily trading using a set of trading signals |
tradingEvaluation | Obtain a set of evaluation metrics for a set of trading actions |
ts.eval | Calculate Some Standard Evaluation Statistics for Time Series Forecasting Tasks |
unscale | Invert the effect of the scale function |
variants | Generate variants of a learning system |