recall
logger = logging.getLogger(__name__) module-attribute ¶
RecallK ¶
Bases: ListwiseMetricK
Computes the fraction of true interactions that made it into the Top-K recommendations.
Recall per user is computed as:
.. math::
\text{Recall}(u) = \frac{\sum\limits_{i \in \text{Top-K}(u)} y^{true}_{u,i} }{\sum\limits_{j \in I} y^{true}_{u,j}}
ref: RecPack
:param K: Size of the recommendation list consisting of the Top-K item predictions. :type K: int
Source code in src/recnexteval/metrics/ranking/recall.py
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IS_BASE = False class-attribute instance-attribute ¶
name property ¶
Name of the metric.
params property ¶
Parameters of the metric.
identifier property ¶
Identifier of the object.
Identifier is made by combining the class name with the parameters passed at construction time.
Constructed by recreating the initialisation call. Example: Algorithm(param_1=value)
:return: Identifier of the object
micro_result property ¶
User level results for the metric.
Contains an entry for every user.
:return: The results DataFrame with columns: user_id, score :rtype: pd.DataFrame
macro_result property ¶
Global metric value obtained by taking the average over all users.
:raises ValueError: If the metric has not been calculated yet. :return: The global metric value. :rtype: float, optional
is_time_aware property ¶
Whether the metric is time-aware.
timestamp_limit property ¶
The timestamp limit for the metric.
num_items property ¶
Dimension of the item-space in both y_true and y_pred
num_users property ¶
Dimension of the user-space in both y_true and y_pred after elimination of users without interactions in y_true.
K = K instance-attribute ¶
col_names property ¶
The names of the columns in the results DataFrame.
get_params() ¶
Get the parameters of the metric.
Source code in src/recnexteval/metrics/core/base.py
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calculate(y_true, y_pred) ¶
Calculates this metric for all nonzero users in y_true, given true labels and predicted scores.
Source code in src/recnexteval/metrics/core/base.py
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prepare_matrix(y_true, y_pred) ¶
Source code in src/recnexteval/metrics/core/top_k.py
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