@ModelData(value={"isRanking","ranksgd","userFactors","itemFactors","trainMatrix"}) public class RankSGDRecommender extends MatrixFactorizationRecommender
Modifier and Type | Field and Description |
---|---|
protected java.util.List<java.util.Map.Entry<java.lang.Integer,java.lang.Double>> |
itemProbs |
initMean, initStd, itemFactors, learnRate, maxLearnRate, numFactors, numIterations, regItem, regUser, userFactors
conf, context, decay, earlyStop, globalMean, isBoldDriver, isRanking, itemMappingData, lastLoss, LOG, loss, maxRate, minRate, numItems, numRates, numUsers, ratingScale, recommendedList, testMatrix, topN, trainMatrix, userMappingData, validMatrix, verbose
Constructor and Description |
---|
RankSGDRecommender() |
Modifier and Type | Method and Description |
---|---|
protected void |
setup()
setup
init member method
|
protected void |
trainModel()
train Model
|
predict, updateLRate
cleanup, evaluate, evaluateMap, getContext, getDataModel, getRecommendedList, isConverged, loadModel, predict, recommend, recommend, recommendRank, recommendRating, saveModel, setContext
protected java.util.List<java.util.Map.Entry<java.lang.Integer,java.lang.Double>> itemProbs
protected void setup() throws LibrecException
MatrixFactorizationRecommender
setup
in class MatrixFactorizationRecommender
LibrecException
- if error occurs during setting upprotected void trainModel() throws LibrecException
AbstractRecommender
trainModel
in class AbstractRecommender
LibrecException
- if error occurs during training modelCopyright © 2017. All Rights Reserved.