Example #1
0
    def test_rank_single_representation(self, classifier: Classifier):
        clf = classifier

        # Single representation
        alg = ClassifierRecommender({'Plot': ['tfidf']}, clf, threshold=0)

        user_ratings = self.ratings.query('from_id == "A000"')

        alg.process_rated(user_ratings, self.movies_dir)
        alg.fit()

        # rank with filter_list
        res_filtered = alg.rank(user_ratings, self.movies_dir, filter_list=self.filter_list)
        item_ranked_set = set(res_filtered['to_id'])
        self.assertEqual(len(item_ranked_set), len(self.filter_list))
        self.assertCountEqual(item_ranked_set, self.filter_list)

        # rank without filter_list
        res_all_unrated = alg.rank(user_ratings, self.movies_dir)
        item_rated_set = set(user_ratings['to_id'])
        item_ranked_set = set(res_all_unrated['to_id'])
        # We expect this to be empty, since the alg should rank only unrated items (unless in filter list)
        rated_in_ranked = item_ranked_set.intersection(item_rated_set)
        self.assertEqual(len(rated_in_ranked), 0)

        # rank with n_recs specified
        n_recs = 5
        res_n_recs = alg.rank(user_ratings, self.movies_dir, n_recs)
        self.assertEqual(len(res_n_recs), n_recs)
        item_rated_set = set(user_ratings['to_id'])
        item_ranked_set = set(res_n_recs['to_id'])
        # We expect this to be empty, since the alg should rank only unrated items (unless in filter list)
        rated_in_ranked = item_ranked_set.intersection(item_rated_set)
        self.assertEqual(len(rated_in_ranked), 0)
    def test_empty_frame(self):
        ratings_only_positive = pd.DataFrame.from_records(
            [("A000", "tt0114576", 5, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        ratings_only_negative = pd.DataFrame.from_records(
            [("A000", "tt0114576", 1, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        ratings_item_inexistent = pd.DataFrame.from_records(
            [("A000", "not exists", 1, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        # ClassifierRecommender returns an empty frame
        alg = ClassifierRecommender({'Plot': ['tfidf', 'embedding']},
                                    SkSVC(),
                                    threshold=3)
        rs = ContentBasedRS(alg, ratings_only_positive, self.movies_multiple)
        result = rs.fit_rank('A000')
        self.assertTrue(result.empty)

        alg = ClassifierRecommender({'Plot': ['tfidf', 'embedding']},
                                    SkSVC(),
                                    threshold=3)
        rs = ContentBasedRS(alg, ratings_only_negative, self.movies_multiple)
        result = rs.fit_rank('A000')
        self.assertTrue(result.empty)

        alg = ClassifierRecommender({'Plot': ['tfidf', 'embedding']},
                                    SkSVC(),
                                    threshold=3)
        rs = ContentBasedRS(alg, ratings_item_inexistent, self.movies_multiple)
        result = rs.fit_rank('A000')
        self.assertTrue(result.empty)

        # CentroidVector returns an empty frame
        alg = CentroidVector({'Plot': ['tfidf', 'embedding']},
                             CosineSimilarity(),
                             threshold=3)
        rs = ContentBasedRS(alg, ratings_only_negative, self.movies_multiple)
        result = rs.fit_rank('A000')
        self.assertTrue(result.empty)

        alg = CentroidVector({'Plot': ['tfidf', 'embedding']},
                             CosineSimilarity(),
                             threshold=3)
        rs = ContentBasedRS(alg, ratings_item_inexistent, self.movies_multiple)
        result = rs.fit_rank('A000')
        self.assertTrue(result.empty)
Example #3
0
    def test_predict(self):
        # Doesn't matter which classifier we chose
        alg = ClassifierRecommender({'Plot': ['tfidf']}, SkSVC(), threshold=0)
        user_ratings = self.ratings.query('from_id == "A000"')
        alg.process_rated(user_ratings, self.movies_dir)
        alg.fit()

        # Will raise Exception since it's not a Score Prediction Algorithm
        with self.assertRaises(NotPredictionAlg):
            alg.predict(user_ratings, self.movies_dir)
    def test_classifier_recommender(self):
        recs_number = 3

        # Test prediction and ranking with the Classifier Recommender algorithm
        alg = ClassifierRecommender({'Plot': ['tfidf', 'embedding']}, SkSVC())
        rs = ContentBasedRS(alg, ratings, self.movies_multiple)

        # Prediction should raise error since it's not a ScorePredictionAlg
        with self.assertRaises(NotPredictionAlg):
            rs.fit_predict('A000')

        # Test ranking with the Classifier Recommender algorithm on specified items
        result_rank_filtered = rs.fit_rank('A000',
                                           filter_list=self.filter_list)
        self.assertEqual(len(result_rank_filtered), len(self.filter_list))

        # Test top-n ranking with the Classifier Recommender algorithm
        result_rank_numbered = rs.fit_rank('A000', recs_number=recs_number)
        self.assertEqual(len(result_rank_numbered), recs_number)
Example #5
0
    def test_raise_errors(self):
        # Only positive available
        self.ratings = pd.DataFrame.from_records(
            [("A000", "tt0112281", 1, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        alg = ClassifierRecommender({'Plot': 'tfidf'}, SkKNN(), 0)
        user_ratings = self.ratings.query('from_id == "A000"')

        with self.assertRaises(OnlyPositiveItems):
            alg.process_rated(user_ratings, self.movies_dir)

        # Only negative available
        self.ratings = pd.DataFrame.from_records(
            [("A000", "tt0112281", -1, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        alg = ClassifierRecommender({'Plot': 'tfidf'}, SkKNN(), 0)
        user_ratings = self.ratings.query('from_id == "A000"')

        with self.assertRaises(OnlyNegativeItems):
            alg.process_rated(user_ratings, self.movies_dir)

        # No Item avilable locally
        self.ratings = pd.DataFrame.from_records(
            [("A000", "non existent", 0.5, "54654675")],
            columns=["from_id", "to_id", "score", "timestamp"])

        alg = ClassifierRecommender({'Plot': 'tfidf'}, SkKNN(), 0)
        user_ratings = self.ratings.query('from_id == "A000"')

        with self.assertRaises(NoRatedItems):
            alg.process_rated(user_ratings, self.movies_dir)