Example #1
0
        public string RunPrefMRF(double regularization, double learnRate, int maxEpoch, List <double> quantizer,
                                 int topN = 10)
        {
            // Load OMFDistribution from file
            Dictionary <Tuple <int, int>, List <double> > OMFDistributionByUserItem;

            if (File.Exists(GetDataFileName("PrefOMF_")))
            {
                OMFDistributionByUserItem = Utils.IO <Dictionary <Tuple <int, int>, List <double> > > .LoadObject(GetDataFileName("PrefOMF_"));
            }
            else
            {
                return("Abort, Run OMF first.");
            }

            if (!ReadyForOrdinal)
            {
                GetReadyForOrdinal();
            }
            StringBuilder log = new StringBuilder();

            log.AppendLine(Utils.PrintHeading("PrefMRF: PrefNMF based ORF"));

            // Prediction
            Utils.StartTimer();
            DataMatrix R_predicted_expectations;
            DataMatrix R_predicted_mostlikely;

            // Convert PR_train into user-wise preferences
            DataMatrix R_train_positions = new DataMatrix(PR_train.GetPositionMatrix());

            R_train_positions.Quantization(quantizer[0], quantizer[quantizer.Count - 1] - quantizer[0], quantizer);

            ORF orf = new ORF();

            orf.PredictRatings(R_train_positions, R_unknown, StrongSimilarityIndicatorsByItemPref,
                               OMFDistributionByUserItem, regularization, learnRate, maxEpoch,
                               quantizer.Count, out R_predicted_expectations, out R_predicted_mostlikely);

            log.AppendLine(Utils.StopTimer());

            // Evaluation
            var topNItemsByUser_expectations = ItemRecommendationCore.GetTopNItemsByUser(R_predicted_expectations, topN);

            for (int n = 1; n <= topN; n++)
            {
                log.AppendLine(Utils.PrintValue("NCDG@" + n, NCDG.Evaluate(RelevantItemsByUser,
                                                                           topNItemsByUser_expectations, n).ToString("0.0000")));
            }
            for (int n = 1; n <= topN; n++)
            {
                log.AppendLine(Utils.PrintValue("MAP@" + n, MAP.Evaluate(RelevantItemsByUser, topNItemsByUser_expectations, n).ToString("0.0000")));
            }

            return(log.ToString());
        }
Example #2
0
            public void GetPositionMatrix()
            {
                /*
                 * 5  3  0  1
                 * 4  0  0  1
                 * 1  1  0  5
                 * 1  0  0  4
                 * 0  1  5  4
                 */
                DataMatrix    R  = GetSampleRatingMatrix();
                PrefRelations PR = PrefRelations.CreateDiscrete(R);

                // act
                SparseMatrix positionMatrix = PR.GetPositionMatrix();

                // assert
                // How many ratings we have then how many positions we have
                Debug.Assert(positionMatrix.NonZerosCount == R.AsSparseMatrix.NonZerosCount);

                // Check if each rating has a corresponding position
                // we have check the count so don't need to check the oppsite
                foreach (Tuple <int, int, double> element in R.AsSparseMatrix.EnumerateIndexed(Zeros.AllowSkip))
                {
                    int    indexOfUser = element.Item1;
                    int    indexOfItem = element.Item2;
                    double rating      = element.Item3;

                    Debug.Assert(positionMatrix[indexOfUser, indexOfItem] != SparseMatrix.Zero);
                }
            }
Example #3
0
        public string GetReadyForOrdinal(bool saveLoadedData = true)
        {
            if (!ReadyForNumerical)
            {
                GetReadyForNumerical();
            }
            if (ReadyForOrdinal)
            {
                return("Is ready.");
            }

            StringBuilder log = new StringBuilder();

            Utils.StartTimer();
            log.AppendLine(Utils.PrintHeading("Prepare preferecen relation data"));

            Console.WriteLine("Converting R_train into PR_train");
            log.AppendLine("Converting R_train into PR_train");
            PR_train = PrefRelations.CreateDiscrete(R_train);

            //Console.WriteLine("Converting R_test into PR_test");
            //log.AppendLine("Converting R_test into PR_test");
            //PR_test = PrefRelations.CreateDiscrete(R_test);

            log.AppendLine(Utils.StopTimer());

            #region Prepare similarity data
            if (File.Exists(GetDataFileName("USP")) &&
                File.Exists(GetDataFileName("ISP")) &&
                File.Exists(GetDataFileName("SSIIP")))
            {
                Utils.StartTimer();
                Utils.PrintHeading("Load user, item, indicators variables (Pref based)");
                UserSimilaritiesOfPref = Utils.IO <SimilarityData> .LoadObject(GetDataFileName("USP"));

                ItemSimilaritiesOfPref = Utils.IO <SimilarityData> .LoadObject(GetDataFileName("ISP"));

                StrongSimilarityIndicatorsByItemPref = Utils.IO <HashSet <Tuple <int, int> > > .LoadObject(GetDataFileName("SSIIP"));

                Utils.StopTimer();
            }
            else
            {
                Utils.StartTimer();
                Utils.PrintHeading("Compute user-user similarities (Pref based)");
                Metric.GetCosineOfPrefRelations(PR_train, MaxCountOfNeighbors,
                                                StrongSimilarityThreshold, out UserSimilaritiesOfPref);
                Utils.StopTimer();

                // For the moment, we use user-wise preferences to compute
                // item-item similarities, it is not the same as user-user pref similarities
                Utils.StartTimer();
                Utils.PrintHeading("Compute item-item similarities (Pref based)");
                DataMatrix PR_userwise_preferences = new DataMatrix(PR_train.GetPositionMatrix());
                Metric.GetPearsonOfColumns(PR_userwise_preferences, MaxCountOfNeighbors, StrongSimilarityThreshold,
                                           out ItemSimilaritiesOfPref, out StrongSimilarityIndicatorsByItemPref);
                Utils.StopTimer();

                if (saveLoadedData)
                {
                    Utils.IO <SimilarityData> .SaveObject(UserSimilaritiesOfPref, GetDataFileName("USP"));

                    Utils.IO <SimilarityData> .SaveObject(ItemSimilaritiesOfPref, GetDataFileName("ISP"));

                    Utils.IO <HashSet <Tuple <int, int> > >
                    .SaveObject(StrongSimilarityIndicatorsByItemPref, GetDataFileName("SSIIP"));
                }
                Utils.StopTimer();
            }
            #endregion



            ReadyForOrdinal = true;

            return(log.ToString());
        }