def run(batchID: str, divisionDatasetPercentualSize: int, uBehaviour: str,
            repetition: int, jobID: str):

        aConf: AML1MConf = AML1MConf(batchID, divisionDatasetPercentualSize,
                                     uBehaviour, repetition)

        pDescr: APortfolioDescription = None
        if jobID == "CosCBmax":
            pDescr = Portfolio1MethDescription(
                "CosCBmax", "cosCBmax",
                InputRecomDefinition.exportRDescCBmean(aConf.datasetID))
        elif jobID == "CosCBwindow3":
            pDescr = Portfolio1MethDescription(
                "CosCBwindow3", "cosCBwindow3",
                InputRecomDefinition.exportRDescCBwindow3(aConf.datasetID))
        elif jobID == "TMPopular":
            pDescr = Portfolio1MethDescription(
                "TMPopular", "theMostPopular",
                InputRecomDefinition.exportRDescTheMostPopular(
                    aConf.datasetID))
        elif jobID == "TMPopular":
            pDescr = Portfolio1MethDescription(
                "W2vPosnegMean", "w2vPosnegMean",
                InputRecomDefinition.exportRDescW2vPosnegMean(aConf.datasetID))
        elif jobID == "W2vPosnegWindow3":
            pDescr = Portfolio1MethDescription(
                "W2vPosnegWindow3", "w2vPosnegWindow3",
                InputRecomDefinition.exportRDescW2vPosnegWindow3(
                    aConf.datasetID))

        model: DataFrame = pd.DataFrame()
        eTool: List = EToolSingleMethod({})

        aConf.run(pDescr, model, eTool)
def test01():
    print("Test 01")

    rDescr: RecommenderDescription = RecommenderDescription(
        RecommenderTheMostPopular, {})

    recommenderID: str = "TheMostPopular"
    pDescr: Portfolio1MethDescription = Portfolio1MethDescription(
        recommenderID.title(), recommenderID, rDescr)

    dataset: ADataset = DatasetST.readDatasets()

    history: AHistory = HistoryDF("test")
    p: APortfolio = pDescr.exportPortfolio("jobID", history)

    portFolioModel: DataFrame = DataFrame()

    p.train(history, dataset)

    df: DataFrame = DataFrame(
        [[1, 555]], columns=[Events.COL_USER_ID, Events.COL_OBJECT_ID])

    p.update(ARecommender.UPDT_CLICK, df)

    userID: int = 1
    r, rp = p.recommend(userID, portFolioModel,
                        {APortfolio.ARG_NUMBER_OF_AGGR_ITEMS: 20})
    print(r)
Exemple #3
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def test01():

    print("Simulation: ML TheMostPopular")

    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescTheMostPopular()

    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.THE_MOST_POPULAR.title(),
                                                             InputRecomMLDefinition.THE_MOST_POPULAR, rDescr)

    batchID:str = "ml1mDiv90Ulinear0109R1"
    dataset:DatasetML = DatasetML.readDatasets()
    behaviourFile:str = BehavioursML.getFile(BehavioursML.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursML.readFromFileMl1m(behaviourFile)

    # remove old results
    #path:str = ".." + os.sep + "results" + os.sep + batchID
    #try:
    #    os.remove(path + os.sep + "computation-theMostPopular.txt")
    #    os.remove(path + os.sep + "historyOfRecommendation-theMostPopular.txt")
    #    os.remove(path + os.sep + "portfModelTimeEvolution-theMostPopular.txt")
    #except:
    #    print("An exception occurred")

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationML, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
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def test02():
    print("Test 02")

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescTheMostPopular(
    )
    recommenderID: str = InputRecomRRDefinition.THE_MOST_POPULAR

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescKNN()
    recommenderID: str = InputRecomRRDefinition.KNN

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescBPRMFIMPL(
    )
    recommenderID: str = InputRecomRRDefinition.BPRMFIMPL

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescVMContextKNN(
    )
    recommenderID: str = InputRecomRRDefinition.VMC_KNN

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescCosineCB(
    )
    recommenderID: str = InputRecomRRDefinition.COSINECB

    rDescr: RecommenderDescription = InputRecomRRDefinition.exportRDescW2V()
    recommenderID: str = InputRecomRRDefinition.W2V

    pDescr: Portfolio1MethDescription = Portfolio1MethDescription(
        recommenderID.title(), recommenderID, rDescr)

    dataset: ADataset = DatasetRetailRocket.readDatasetsWithFilter(
        minEventCount=50)

    behavioursDF: DataFrame = BehavioursRR.readFromFileRR(
        BehavioursRR.getFile("static08"))

    history: AHistory = HistoryDF("test")
    p: APortfolio = pDescr.exportPortfolio("jobID", history)
    p.train(history, dataset)

    argsSimulationDict: Dict[str, str] = {
        SimulationRR.ARG_WINDOW_SIZE: 50,
        SimulationRR.ARG_RECOM_REPETITION_COUNT: 1,
        SimulationRR.ARG_NUMBER_OF_RECOMM_ITEMS: 100,
        SimulationRR.ARG_NUMBER_OF_AGGR_ITEMS:
        InputSimulatorDefinition.numberOfAggrItems,
        SimulationRR.ARG_DIV_DATASET_PERC_SIZE: 90,
        SimulationRR.ARG_HISTORY_LENGTH: 10
    }

    # simulation of portfolio
    simulator: Simulator = Simulator("test", SimulationRR, argsSimulationDict,
                                     dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})],
                       [HistoryHierDF("a")])
    def run(self, batchID:str, jobID:str):
        divisionDatasetPercentualSize:int
        uBehaviour:str
        repetition:int
        divisionDatasetPercentualSize, uBehaviour, repetition = InputABatchDefinition().getBatchParameters(self.datasetID)[batchID]

        rDescr:RecommenderDescription = self.getParameters()[jobID]
        recommenderID:str = "W2V" + jobID

        pDescr:APortfolioDescription = Portfolio1MethDescription(recommenderID.title(), recommenderID, rDescr)

        simulator:Simulator = InputSimulatorDefinition().exportSimulatorRetailRocket(
            batchID, divisionDatasetPercentualSize, uBehaviour, repetition)
        simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #6
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def test26():

    print("Simulation: ST VMCMF")

    rDescr:RecommenderDescription = InputRecomSTDefinition.exportRDescVMContextKNN()

    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomSTDefinition.VMC_KNN.title(),
                                                             InputRecomSTDefinition.VMC_KNN, rDescr)

    batchID:str = "slantourDiv90Ulinear0109R1"
    dataset:DatasetST = DatasetST.readDatasets()
    behaviourFile:str = BehavioursST.getFile(BehavioursST.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursST.readFromFileST(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationST, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #7
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def test24():

    print("Simulation: ST CB")

    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescCosineCBcbdOHEupsweightedMeanups3()

    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.COS_CB_MEAN.title(),
                                                             InputRecomMLDefinition.COS_CB_MEAN, rDescr)

    batchID:str = "slantourDiv90Ulinear0109R1"
    dataset:DatasetST = DatasetST.readDatasets()
    behaviourFile:str = BehavioursST.getFile(BehavioursST.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursST.readFromFileST(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationST, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #8
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def test11():

    print("Simulation: RR TheMostPopular")

    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescTheMostPopular()

    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.THE_MOST_POPULAR.title(),
                                                             InputRecomMLDefinition.THE_MOST_POPULAR, rDescr)

    batchID:str = "retailrocketDiv90Ulinear0109R1"
    dataset:DatasetRetailRocket = DatasetRetailRocket.readDatasets()
    behaviourFile:str = BehavioursRR.getFile(BehavioursRR.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursRR.readFromFileRR(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationRR, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #9
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def test03():

    print("Simulation: ML KNN")

    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescKNN()

    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.KNN.title(),
                                                             InputRecomMLDefinition.KNN, rDescr)

    batchID:str = "ml1mDiv90Ulinear0109R1"
    dataset:DatasetML = DatasetML.readDatasets()
    behaviourFile:str = BehavioursML.getFile(BehavioursML.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursML.readFromFileMl1m(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationML, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #10
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def test02():

    print("Simulation: ML W2V")

    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescW2Vtpositivei50000ws1vs32upsweightedMeanups3()

    pDescr:APortfolioDescription = Portfolio1MethDescription("W2vPositiveMax",
                                    "w2vPositiveMax", rDescr)

    batchID:str = "ml1mDiv90Ulinear0109R1"
    dataset:DatasetML = DatasetML.readDatasets()
    behaviourFile:str = BehavioursML.getFile(BehavioursML.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursML.readFromFileMl1m(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationML, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #11
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def getW2Vtalli100000ws1vs32upsmaxups1():

  taskID:str = "Web" + "W2Vtalli100000ws1vs32upsmaxups1"
  rDescr:RecommenderDescription = InputRecomSTDefinition.exportRDescW2Vtalli100000ws1vs32upsmaxups1()

  recommenderID:str = "W2V"
  pDescr:Portfolio1MethDescription = Portfolio1MethDescription(recommenderID.title(), recommenderID, rDescr)

  dataset:ADataset = DatasetST.readDatasets()

  history:AHistory = HistoryHierDF(taskID)
  port:APortfolio = pDescr.exportPortfolio(taskID, history)
  port.train(history, dataset)

  model:DataFrame = DataFrame()
  evalTool:AEvalTool = EToolDoNothing({})

  return (taskID, port, model, evalTool, history)
    def run(self, batchID:str, jobID:str):

        divisionDatasetPercentualSize:int
        uBehaviour:str
        repetition:int
        divisionDatasetPercentualSize, uBehaviour, repetition = InputABatchDefinition().getBatchParameters(self.datasetID)[batchID]

        kI:str = self.getParameters()[jobID]

        recommenderID:str = "RecommendervmContextKNN" + "K" + str(kI)

        rVMCtKNN:RecommenderDescription = RecommenderDescription(RecommenderVMContextKNN, {
                    RecommenderVMContextKNN.ARG_K: kI})

        pDescr:APortfolioDescription = Portfolio1MethDescription(recommenderID.title(), recommenderID, rVMCtKNN)

        simulator:Simulator = InputSimulatorDefinition().exportSimulatorSlantour(
                batchID, divisionDatasetPercentualSize, uBehaviour, repetition)
        simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
Exemple #13
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def test04():

    print("Simulation: ML CB")

    #rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescCBmean()
    rDescr:RecommenderDescription = InputRecomMLDefinition.exportRDescCosineCBcbdOHEupsmaxups1()


    #pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.COS_CB_MEAN.title(),
    #                                InputRecomMLDefinition.COS_CB_MEAN, rDescr)
    pDescr:APortfolioDescription = Portfolio1MethDescription(InputRecomMLDefinition.COS_CB_WINDOW3.title(),
                                                             InputRecomMLDefinition.COS_CB_WINDOW3, rDescr)


    batchID:str = "ml1mDiv90Ulinear0109R1"
    dataset:DatasetML = DatasetML.readDatasets()
    behaviourFile:str = BehavioursML.getFile(BehavioursML.BHVR_LINEAR0109)
    behavioursDF:DataFrame = BehavioursML.readFromFileMl1m(behaviourFile)

    # simulation of portfolio
    simulator:Simulator = Simulator(batchID, SimulationML, argsSimulationDict, dataset, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})], [HistoryHierDF(pDescr.getPortfolioID())])
    def run(self, batchID: str, jobID: str):

        from execute.generateBatches import BatchParameters  #class
        divisionDatasetPercentualSize: int
        uBehaviour: str
        repetition: int
        divisionDatasetPercentualSize, uBehaviour, repetition = BatchParameters.getBatchParameters(
        )[batchID]

        datasetID: str = "ml1m" + "Div" + str(divisionDatasetPercentualSize)

        recommenderID: str = self.getParameters()[jobID]

        rDescr: RecommenderDescription = InputRecomDefinition.exportInputRecomDefinition(
            recommenderID, datasetID)

        pDescr: APortfolioDescription = Portfolio1MethDescription(
            recommenderID.title(), recommenderID, rDescr)

        simulator: Simulator = InputSimulatorDefinition.exportSimulatorML1M(
            batchID, divisionDatasetPercentualSize, uBehaviour, repetition)
        simulator.simulate([pDescr], [DataFrame()], [EToolSingleMethod({})],
                           HistoryHierDF)
Exemple #15
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def test01():
    print("Test 01")

    rDescr: RecommenderDescription = RecommenderDescription(
        RecommenderTheMostPopular, {})

    recommenderID: str = "TheMostPopular"
    pDescr: Portfolio1MethDescription = Portfolio1MethDescription(
        recommenderID.title(), recommenderID, rDescr)

    dataset: ADataset = DatasetML.readDatasets()

    history: AHistory = HistoryDF("test")
    p: APortfolio = pDescr.exportPortfolio("jobID", history)
    p.train(history, dataset)

    #    r, rwr = p.recommend(1, DataFrame(), {APortfolio.ARG_NUMBER_OF_AGGR_ITEMS:20})
    #    rItemID1 = r[0]
    #    rItemID2 = r[1]
    #    rItemID3 = r[2]
    #
    #    print(r)
    #    print("rItemID1: " + str(rItemID1))
    #    print("rItemID2: " + str(rItemID2))
    #    print("rItemID3: " + str(rItemID3))

    testRatingsDF: DataFrame = DataFrame(columns=[
        Ratings.COL_USERID, Ratings.COL_MOVIEID, Ratings.COL_RATING,
        Ratings.COL_TIMESTAMP
    ])
    timeStampI: int = 1000

    userID1: int = 1
    userID2: int = 2
    userID3: int = 3
    rItemID1: int = 9001
    rItemID2: int = 9002
    rItemID3: int = 9003
    # training part of dataset
    for i in [i + 0 for i in range(5 * 8)]:
        timeStampI = timeStampI + 1
        testRatingsDF.loc[i] = [userID1] + list([9000, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID2] + list(
        [rItemID1, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID2] + list(
        [rItemID2, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID3] + list(
        [rItemID3, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID2] + list(
        [rItemID2, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID2] + list(
        [rItemID2, 5, timeStampI])

    # testing part of dataset
    userID11: int = 11
    userID12: int = 12
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID11] + list(
        [rItemID1, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID11] + list(
        [rItemID2, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID11] + list(
        [rItemID3, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID12] + list(
        [rItemID2, 5, timeStampI])
    timeStampI = timeStampI + 1
    testRatingsDF.loc[len(testRatingsDF)] = [userID11] + list(
        [rItemID2, 5, timeStampI])

    print("len(testRatingsDF): " + str(len(testRatingsDF)))
    print(testRatingsDF.head(20))
    print(testRatingsDF.tail(20))

    datasetMy: ADataset = DatasetML("", testRatingsDF, dataset.usersDF,
                                    dataset.itemsDF)

    behavioursDF: DataFrame = DataFrame(
        columns=[BehavioursML.COL_REPETITION, BehavioursML.COL_BEHAVIOUR])
    for ratingIndexI in range(len(testRatingsDF)):
        for repetitionI in range(5):
            behavioursDF.loc[ratingIndexI * 5 + repetitionI] = list(
                [repetitionI, [True] * 20])
    print(behavioursDF.head(20))

    argsSimulationDict: Dict[str, str] = {
        SimulationML.ARG_WINDOW_SIZE: 5,
        SimulationML.ARG_RECOM_REPETITION_COUNT: 1,
        SimulationML.ARG_NUMBER_OF_RECOMM_ITEMS: 100,
        SimulationML.ARG_NUMBER_OF_AGGR_ITEMS:
        InputSimulatorDefinition.numberOfAggrItems,
        SimulationML.ARG_DIV_DATASET_PERC_SIZE: 90,
        SimulationML.ARG_HISTORY_LENGTH: 10
    }

    # simulation of portfolio
    simulator: Simulator = Simulator("test", SimulationML, argsSimulationDict,
                                     datasetMy, behavioursDF)
    simulator.simulate([pDescr], [DataFrame()], [EToolDoNothing({})],
                       HistoryHierDF)