recpack.algorithms.SLIM
- class recpack.algorithms.SLIM(l1_reg=0.0005, l2_reg=5e-05, fit_intercept=True, ignore_neg_weights=True)
Implementation of the SLIM model.
SLIM Model described in Ning, Xia, and George Karypis. “Slim: Sparse linear methods for top-n recommender systems.” 2011 IEEE 11th International Conference on Data Mining. IEEE, 2011
Code loosely based on https://github.com/Mendeley/mrec
- Parameters
l1_reg (float, optional) – l1 regularization coefficient, defaults to 0.0005
l2_reg (float, optional) – l2 regularization coefficient, defaults to 0.00005
fit_intercept (bool, optional) – Whether the intercept should be estimated or not during gradient descent. If False, the data is assumed to be already centered., defaults to True
ignore_neg_weights (bool, optional) – Remove negative weights after training to increase speed of predict, defaults to True
Methods
fit
(X)Fit the model to the input interaction matrix.
Get metadata routing of this object.
get_params
([deep])Get parameters for this estimator.
predict
(X)Predicts scores, given the interactions in X
set_params
(**params)Set the parameters of the estimator.
Attributes
Name of the object.
Name of the object's class.
- fit(X: Union[recpack.matrix.interaction_matrix.InteractionMatrix, scipy.sparse._csr.csr_matrix]) recpack.algorithms.base.Algorithm
Fit the model to the input interaction matrix.
After fitting the model will be ready to use for prediction.
This function will handle some generic bookkeeping for each of the child classes,
The fit function gets timed, and this will get printed
Input data is converted to expected type using call to
_transform_predict_input()
The model is trained using the
_fit()
method_check_fit_complete()
is called to check fitting was succesful
- Parameters
X (Matrix) – The interactions to fit the model on.
- Returns
self, fitted algorithm
- Return type
- get_metadata_routing()
Get metadata routing of this object.
Please check User Guide on how the routing mechanism works.
- Returns
routing – A
MetadataRequest
encapsulating routing information.- Return type
MetadataRequest
- get_params(deep=True)
Get parameters for this estimator.
- Parameters
deep (bool, default=True) – If True, will return the parameters for this estimator and contained subobjects that are estimators.
- Returns
params – Parameter names mapped to their values.
- Return type
dict
- property identifier
Name of the object.
Name 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)
- property name
Name of the object’s class.
- predict(X: Union[recpack.matrix.interaction_matrix.InteractionMatrix, scipy.sparse._csr.csr_matrix]) scipy.sparse._csr.csr_matrix
Predicts scores, given the interactions in X
Recommends items for each nonzero user in the X matrix.
This function is a wrapper around the
_predict()
method, and performs checks on in- and output data to guarantee proper computation.Checks that model is fitted correctly
checks the output using
_check_prediction()
function
- Parameters
X (Matrix) – interactions to predict from.
- Returns
The recommendation scores in a sparse matrix format.
- Return type
csr_matrix
- set_params(**params)
Set the parameters of the estimator.
- Parameters
params (dict) – Estimator parameters