Пример #1
0
        public void TestIUF()
        {
            List<User> users = new List<User>(5);
            users.Add(GetUser("test1", 0.1));
            users.Add(GetUser("test2", 0.2, 0.3));
            users.Add(GetUser("test3", 0.4, 0.5, 0.6));
            users.Add(GetUser("test4", 0.7, 0.8, 0.9, 1.0));
            users.Add(GetUser("test5", 1.0, 1.0, 1.0, 1.0, 1.0));
            GenericDataModel dummy = new GenericDataModel(users);
            InverseUserFrequency iuf = new InverseUserFrequency(dummy, 10.0);

            User user = dummy.GetUser("test5");
            for (int i = 0; i < 5; i++)
            {
                Preference pref = user.GetPreferenceFor(i.ToString());
                Assert.IsNotNull(pref);
                Assert.AreEqual(Math.Log(5.0 / (double)(5 - i)) / Math.Log(iuf.LogBase),
                             iuf.GetTransformedValue(pref), EPSILON);
            }

            // Make sure this doesn't throw an exception
            iuf.Refresh();
        }
		public IRStatistics Evaluate(RecommenderBuilder recommenderBuilder,
		                             DataModel dataModel,
		                             int at,
		                             double relevanceThreshold,
		                             double evaluationPercentage) 
		{

			if (recommenderBuilder == null) {
				throw new ArgumentNullException("recommenderBuilder is null");
			}
			if (dataModel == null) {
				throw new ArgumentNullException("dataModel is null");
			}
			if (at < 1) {
				throw new ArgumentException("at must be at least 1");
			}
			if (double.IsNaN(evaluationPercentage) || evaluationPercentage <= 0.0 || evaluationPercentage > 1.0) 
			{
				throw new ArgumentException("Invalid evaluationPercentage: " + evaluationPercentage);
			}
			if (double.IsNaN(relevanceThreshold)) {
				throw new ArgumentException("Invalid relevanceThreshold: " + evaluationPercentage);
			}

			RunningAverage precision = new FullRunningAverage();
			RunningAverage recall = new FullRunningAverage();
			foreach (User user in dataModel.GetUsers()) 
			{
				Object id = user.ID;
				if (random.NextDouble() < evaluationPercentage) 
				{
					ICollection<Item> relevantItems = new HashedSet<Item>(/* at */);
                    Preference[] prefs = user.GetPreferencesAsArray();

					foreach (Preference pref in prefs) 
					{
						if (pref.Value >= relevanceThreshold) 
                        {
							relevantItems.Add(pref.Item);
						}
					}
					int numRelevantItems = relevantItems.Count;
					if (numRelevantItems > 0) 
                    {
						ICollection<User> trainingUsers = new List<User>(dataModel.GetNumUsers());
						foreach (User user2 in dataModel.GetUsers()) 
                        {
							if (id.Equals(user2.ID)) 
							{
								ICollection<Preference> trainingPrefs = new List<Preference>();
                                prefs = user2.GetPreferencesAsArray();
								foreach (Preference pref in prefs) 
								{
									if (!relevantItems.Contains(pref.Item)) 
									{
										trainingPrefs.Add(pref);
									}
								}
								if (trainingPrefs.Count > 0) 
								{
									User trainingUser = new GenericUser<String>(id.ToString(), trainingPrefs);
									trainingUsers.Add(trainingUser);
								}
							} 
                            else 
                            {
								trainingUsers.Add(user2);
							}

						}
						DataModel trainingModel = new GenericDataModel(trainingUsers);
						Recommender recommender = recommenderBuilder.BuildRecommender(trainingModel);

						try 
						{
							trainingModel.GetUser(id);
						} 
                        catch (NoSuchElementException) 
                        {
							continue; // Oops we excluded all prefs for the user -- just move on
						}
						
						int intersectionSize = 0;
						foreach (RecommendedItem recommendedItem in recommender.Recommend(id, at)) 
						{
							if (relevantItems.Contains(recommendedItem.Item)) 
							{
								intersectionSize++;
							}
						}
						precision.AddDatum((double) intersectionSize / (double) at);
						recall.AddDatum((double) intersectionSize / (double) numRelevantItems);					
					}
				}
			}

			return new IRStatisticsImpl(precision.Average, recall.Average);
		}