UserCF#
- class libreco.algorithms.UserCF(task, data_info, sim_type='cosine', k_sim=20, store_top_k=True, block_size=None, num_threads=1, min_common=1, mode='invert', seed=42, lower_upper_bound=None)[source]#
Bases:
CfBase
User Collaborative Filtering algorithm. See UserCF / ItemCF for more details.
- Parameters:
task ({'rating', 'ranking'}) – Recommendation task. See Task.
data_info (
DataInfo
object) – Object that contains useful information for training and inference.sim_type ({'cosine', 'pearson', 'jaccard'}, default: 'cosine') – Types for computing similarities.
k_sim (int, default: 20) – Number of similar items to use.
store_top_k (bool, default: True) – Whether to store top k similar users after training.
block_size (int or None, default: None) – Block size for computing similarity matrix. Large block size makes computation faster, but may cause memory issue.
num_threads (int, default: 1) – Number of threads to use.
min_common (int, default: 1) – Number of minimum common users to consider when computing similarities.
mode ({'forward', 'invert'}, default: 'invert') – Whether to use forward index or invert index.
seed (int, default: 42) – Random seed.
lower_upper_bound (tuple or None, default: None) – Lower and upper score bound for rating task.
- predict(user, item, cold_start='popular', inner_id=False)[source]#
Make prediction(s) on given user(s) and item(s).
- Parameters:
user (int or str or array_like) – User id or batch of user ids.
item (int or str or array_like) – Item id or batch of item ids.
cold_start ({'popular'}, default: 'popular') – Cold start strategy, ItemCF can only use ‘popular’ strategy.
inner_id (bool, default: False) – Whether to use inner_id defined in libreco. For library users inner_id may never be used.
- Returns:
prediction – Predicted scores for each user-item pair.
- Return type:
- fit(train_data, neg_sampling, verbose=1, eval_data=None, metrics=None, k=10, eval_batch_size=8192, eval_user_num=None)#
Fit CF model on the training data.
- Parameters:
train_data (
TransformedSet
object) – Data object used for training.neg_sampling (bool) –
Whether to perform negative sampling for evaluating data.
New in version 1.1.0.
verbose (int, default: 1) – Print verbosity. If eval_data is provided, setting it to higher than 1 will print evaluation metrics during training.
eval_data (
TransformedSet
object, default: None) – Data object used for evaluating.metrics (list or None, default: None) – List of metrics for evaluating.
k (int, default: 10) – Parameter of metrics, e.g. recall at k, ndcg at k
eval_batch_size (int, default: 8192) – Batch size for evaluating.
eval_user_num (int or None, default: None) – Number of users for evaluating. Setting it to a positive number will sample users randomly from eval data.
- classmethod load(path, model_name, data_info, **kwargs)#
Load saved model for inference.
- Parameters:
- Returns:
model – Loaded model.
- Return type:
type(cls)
See also
- recommend_user(user, n_rec, cold_start='popular', inner_id=False, filter_consumed=True, random_rec=False)#
Recommend a list of items for given user(s).
- Parameters:
user (int or str or array_like) – User id or batch of user ids to recommend.
n_rec (int) – Number of recommendations to return.
cold_start ({'popular'}, default: 'popular') – Cold start strategy, CF models can only use ‘popular’ strategy.
inner_id (bool, default: False) – Whether to use inner_id defined in libreco. For library users inner_id may never be used.
filter_consumed (bool, default: True) – Whether to filter out items that a user has previously consumed.
random_rec (bool, default: False) – Whether to choose items for recommendation based on their prediction scores.
- Returns:
recommendation – Recommendation result with user ids as keys and array_like recommended items as values.
- Return type:
dict[Union[int, str, array_like], numpy.ndarray]