def compute_SVDNeighbourhood():
	svd = SVDNeighbourhood()
	svd.set_data(load_data())

	K=100
	svd.compute(k=K, min_values=10, pre_normalize=None, mean_center=True, post_normalize=True, savefile=None)
	svd.save_model(os.path.join(utils.get_add_dir(), 'ratings_neigh'))
Example #2
0
data = Data()
data.load(sys.argv[1], sep="::", format={"col": 0, "row": 1, "value": 2, "ids": int})

rmse_svd_all = []
mae_svd_all = []
rmse_svd_neig_all = []
mae_svd_neig_all = []

RUNS = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10]
for run in RUNS:
    print "RUN(%d)" % run
    # Train & Test data
    train, test = data.split_train_test(percent=PERCENT_TRAIN)

    svd.set_data(train)
    svd_neig.set_data(train)

    # Compute SVD
    svd.compute(k=K, min_values=None, pre_normalize=None, mean_center=True, post_normalize=True)
    svd_neig.compute(k=K, min_values=None, pre_normalize=None, mean_center=True, post_normalize=True)

    # Evaluate
    rmse_svd = RMSE()
    mae_svd = MAE()
    rmse_svd_neig = RMSE()
    mae_svd_neig = MAE()

    i = 1
    total = len(test.get())
    print "Total Test ratings: %s" % total
    for rating, item_id, user_id in test:
    #   'row': 1 -> Rows in matrix come from column 1 in ratings.dat file
    #   'col': 0 -> Cols in matrix come from column 0 in ratings.dat file
    #   'value': 2 -> Values (Mij) in matrix come from column 2 in ratings.dat file
    #   'ids': int -> Ids (row and col ids) are integers (not strings)

#Create SVD
list = []
for j in range(50,80,2):
    sum_value = 0.0
    for i in range(1,11):
        #Train & Test data
        train, test = data.split_train_test(percent=PERCENT_TRAIN)

        K=j
        svd = SVDNeighbourhood()
        svd.set_data(train)
        svd.compute(k=K, min_values=5, pre_normalize=None, mean_center=True, post_normalize=True)

        #Evaluation using prediction-based metrics
        rmse = RMSE()
        mae = MAE()
        for rating, item_id, user_id in test.get():
            try:
                pred_rating = svd.predict(item_id, user_id)
                rmse.add(rating, pred_rating)
                mae.add(rating, pred_rating)
            except KeyError:
                continue

        print 'RMSE=%s' % rmse.compute()
        sum_value = sum_value + rmse.compute()
Example #4
0
              'ids': int
          })

rmse_svd_all = []
mae_svd_all = []
rmse_svd_neig_all = []
mae_svd_neig_all = []

RUNS = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10]
for run in RUNS:
    print 'RUN(%d)' % run
    #Train & Test data
    train, test = data.split_train_test(percent=PERCENT_TRAIN)

    svd.set_data(train)
    svd_neig.set_data(train)

    #Compute SVD
    svd.compute(k=K,
                min_values=None,
                pre_normalize=None,
                mean_center=True,
                post_normalize=True)
    svd_neig.compute(k=K,
                     min_values=None,
                     pre_normalize=None,
                     mean_center=True,
                     post_normalize=True)

    # Evaluate
    rmse_svd = RMSE()
Example #5
0
class Collaborative_filtering(object):
    def __init__(self, ratings_file,
                 movies):  #No need to pass as ,will be provided in views.py
        #self.users = users
        self.movies = movies
        self.K = 100
        self.PERCENT_TRAIN = 85
        #Need to provide a default file location for ratings.csv instead of loading everytime.run below 2lines only once
        #or just provide this file instead.
        #self.users.to_csv("/home/sourabhkondapaka/Desktop/ratingsss.csv",index= False)
        self.ratings_file = ratings_file  #Give your path to ratings.csv created from above 2 lines.
        self.data = None
        self.svd = None
        self.recommend_movies_list = None
        self.recommend_movies_ids = None
        self.similar_movies_list = None
        self.similar_movies_ids = None

        self.movie_id = None
        self.train = None
        self.test = None

    def compute_svd(self):
        '''    
        ratings = pd.read_csv("/home/sourabhkondapaka/Desktop/ratingsss.csv",index_col= False)
        ratings = ratings.ix[1:]
        ratings.to_csv("/home/sourabhkondapaka/Desktop/ratingsss.csv",index = False)
        self.data = Data()      
        self.data.load(self.ratings_file, sep=',', format={'col':0, 'row':1 ,'value':2, 'ids':float})
        self.train , self.test = self.data.split_train_test(percent=self.PERCENT_TRAIN)    
        self.svd = SVD()
        self.svd.set_data(self.train)    
        self.svd.compute(k=self.K, min_values=1, pre_normalize=None, mean_center=True, post_normalize=True)'''
        self.data = Data()
        self.data.load(self.ratings_file,
                       sep=',',
                       format={
                           'col': 0,
                           'row': 1,
                           'value': 2,
                           'ids': float
                       })
        self.train, self.test = self.data.split_train_test(percent=85)
        self.svd = SVDNeighbourhood()
        self.svd.set_data(self.train)
        self.svd.compute(k=100,
                         min_values=1,
                         pre_normalize=None,
                         mean_center=False,
                         post_normalize=True)

    def similarity_measure(
            self, movie1,
            movie2):  #gives a similarity measure value between -1 to 1
        return round(self.svd.similarity(movie1, movie2), 4)

    def recommend_movies(self, user_id):
        l = self.svd.recommend(user_id, n=10, only_unknowns=True, is_row=False)
        self.recommend_movies_list = []
        self.recommend_movies_ids = []
        for p in l:
            #movie names
            bb = str(movies.ix[movies['movie_id'] == p[0]]['title']).split()
            q = bb.index('Name:')
            bb = ' '.join(bb[1:q])
            self.recommend_movies_list.append(bb)
            #movie ids
            gg = movies.ix[movies['movie_id'] == p[0]]
            gg = gg.reset_index()
            del gg['index']
            gg = gg.ix[:, 0:2].as_matrix(columns=None).tolist()
            self.recommend_movies_ids.append(gg[0][0])
        return self.recommend_movies_list, self.recommend_movies_ids

    def get_similar_movies(self,
                           movie1):  #Returns a PYTHON list for similar movies.
        movie1 = int(movie1)
        l = self.svd.similar(movie1)
        self.similar_movies_list = []
        self.similar_movies_ids = []
        l = l[1:]

        for p in l:
            #getting movie names
            bb = str(movies.ix[movies['movie_id'] == p[0]]['title']).split()
            q = bb.index('Name:')
            bb = ' '.join(bb[1:q])
            self.similar_movies_list.append(bb)
            #getting movie id's
            self.similar_movies_ids.append(p[0])

        return self.similar_movies_list, self.similar_movies_ids