Basic and Utility Algorithms¶
The lenskit.algorithms.basic module contains baseline and utility algorithms
for nonpersonalized recommendation and testing.
Most Popular Item Recommendation¶
The Popular algorithm implements most-popular-item recommendation.
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class
lenskit.algorithms.basic.Popular(selector=None)¶ Bases:
lenskit.RecommenderRecommend the most popular items.
- Parameters
selector (CandidateSelector) – The candidate selector to use. If
None, uses a newUnratedItemCandidateSelector.
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item_pop_¶ Item rating counts (popularity)
- Type
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fit(ratings, **kwargs)¶ Train a model using the specified ratings (or similar) data.
- Parameters
ratings (pandas.DataFrame) – The ratings data.
kwargs – Additional training data the algorithm may require. Algorithms should avoid using the same keyword arguments for different purposes, so that they can be more easily hybridized.
- Returns
The algorithm object.
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recommend(user, n=None, candidates=None, ratings=None)¶ Compute recommendations for a user.
- Parameters
user – the user ID
n (int) – the number of recommendations to produce (
Nonefor unlimited)candidates (array-like) – The set of valid candidate items; if
None, a default set will be used. For many algorithms, this is theirCandidateSelector.ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
a frame with an
itemcolumn; if the recommender also produces scores, they will be in ascorecolumn.- Return type
Random Item Recommendation¶
The Random algorithm implements random-item recommendation.
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class
lenskit.algorithms.basic.Random(selector=None, rng_spec=None)¶ Bases:
lenskit.RecommenderA random-item recommender.
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selector¶ Selects candidate items for recommendation. Default is
UnratedItemCandidateSelector.- Type
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rng_spec¶ Seed or random state for generating recommendations. Pass
'user'to deterministically derive per-user RNGS from the user IDs for reproducibility.
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fit(ratings, **kwargs)¶ Train a model using the specified ratings (or similar) data.
- Parameters
ratings (pandas.DataFrame) – The ratings data.
kwargs – Additional training data the algorithm may require. Algorithms should avoid using the same keyword arguments for different purposes, so that they can be more easily hybridized.
- Returns
The algorithm object.
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recommend(user, n=None, candidates=None, ratings=None)¶ Compute recommendations for a user.
- Parameters
user – the user ID
n (int) – the number of recommendations to produce (
Nonefor unlimited)candidates (array-like) – The set of valid candidate items; if
None, a default set will be used. For many algorithms, this is theirCandidateSelector.ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
a frame with an
itemcolumn; if the recommender also produces scores, they will be in ascorecolumn.- Return type
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Top-N Recommender¶
The TopN class implements a standard top-N recommender that wraps a
Predictor and CandidateSelector and returns the top N
candidate items by predicted rating. It is the type of recommender returned by
Recommender.adapt() if the provided algorithm is not a recommender.
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class
lenskit.algorithms.basic.TopN(predictor, selector=None)¶ Bases:
lenskit.Recommender,lenskit.PredictorBasic recommender that implements top-N recommendation using a predictor.
Note
This class does not do anything of its own in
fit(). If its predictor and candidate selector are both fit, the top-N recommender does not need to be fit.- Parameters
predictor (Predictor) – The underlying predictor.
selector (CandidateSelector) – The candidate selector. If
None, usesUnratedItemCandidateSelector.
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fit(ratings, **kwargs)¶ Fit the recommender.
- Parameters
ratings (pandas.DataFrame) – The rating or interaction data. Passed changed to the predictor and candidate selector.
args – Additional arguments for the predictor to use in its training process.
kwargs – Additional arguments for the predictor to use in its training process.
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recommend(user, n=None, candidates=None, ratings=None)¶ Compute recommendations for a user.
- Parameters
user – the user ID
n (int) – the number of recommendations to produce (
Nonefor unlimited)candidates (array-like) – The set of valid candidate items; if
None, a default set will be used. For many algorithms, this is theirCandidateSelector.ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
a frame with an
itemcolumn; if the recommender also produces scores, they will be in ascorecolumn.- Return type
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predict(pairs, ratings=None)¶ Compute predictions for user-item pairs. This method is designed to be compatible with the general SciKit paradigm; applications typically want to use
predict_for_user().- Parameters
pairs (pandas.DataFrame) – The user-item pairs, as
useranditemcolumns.ratings (pandas.DataFrame) – user-item rating data to replace memorized data.
- Returns
The predicted scores for each user-item pair.
- Return type
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predict_for_user(user, items, ratings=None)¶ Compute predictions for a user and items.
- Parameters
user – the user ID
items (array-like) – the items to predict
ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
scores for the items, indexed by item id.
- Return type
Unrated Item Candidate Selector¶
UnratedItemCandidateSelector is a candidate selector that remembers items
users have rated, and returns a candidate set consisting of all unrated items. It is the
default candidate selector for TopN.
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class
lenskit.algorithms.basic.UnratedItemCandidateSelector¶ Bases:
lenskit.CandidateSelectorCandidateSelectorthat selects items a user has not rated as candidates. When this selector is fit, it memorizes the rated items.-
items_¶ All known items.
- Type
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users_¶ All known users.
- Type
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fit(ratings, **kwargs)¶ Train a model using the specified ratings (or similar) data.
- Parameters
ratings (pandas.DataFrame) – The ratings data.
kwargs – Additional training data the algorithm may require. Algorithms should avoid using the same keyword arguments for different purposes, so that they can be more easily hybridized.
- Returns
The algorithm object.
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candidates(user, ratings=None)¶ Select candidates for the user.
- Parameters
user – The user key or ID.
ratings (pandas.Series or array-like) – Ratings or items to use instead of whatever ratings were memorized for this user. If a
pandas.Series, the series index is used; if it is another array-like it is assumed to be an array of items.
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Fallback Predictor¶
The Fallback rating predictor is a simple hybrid that takes a list of composite algorithms,
and uses the first one to return a result to predict the rating for each item.
A common case is to fill in with Bias when a primary predictor cannot score an item.
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class
lenskit.algorithms.basic.Fallback(algorithms, *others)¶ Bases:
lenskit.PredictorThe Fallback algorithm predicts with its first component, uses the second to fill in missing values, and so forth.
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fit(ratings, **kwargs)¶ Train a model using the specified ratings (or similar) data.
- Parameters
ratings (pandas.DataFrame) – The ratings data.
kwargs – Additional training data the algorithm may require. Algorithms should avoid using the same keyword arguments for different purposes, so that they can be more easily hybridized.
- Returns
The algorithm object.
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predict_for_user(user, items, ratings=None)¶ Compute predictions for a user and items.
- Parameters
user – the user ID
items (array-like) – the items to predict
ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
scores for the items, indexed by item id.
- Return type
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Memorized Predictor¶
The Memorized recommender is primarily useful for test cases. It memorizes a set of
rating predictions and returns them.
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class
lenskit.algorithms.basic.Memorized(scores)¶ Bases:
lenskit.PredictorThe memorized algorithm memorizes socres provided at construction time.
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fit(*args, **kwargs)¶ Train a model using the specified ratings (or similar) data.
- Parameters
ratings (pandas.DataFrame) – The ratings data.
kwargs – Additional training data the algorithm may require. Algorithms should avoid using the same keyword arguments for different purposes, so that they can be more easily hybridized.
- Returns
The algorithm object.
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predict_for_user(user, items, ratings=None)¶ Compute predictions for a user and items.
- Parameters
user – the user ID
items (array-like) – the items to predict
ratings (pandas.Series) – the user’s ratings (indexed by item id); if provided, they may be used to override or augment the model’s notion of a user’s preferences.
- Returns
scores for the items, indexed by item id.
- Return type
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