MyMediaLite  3.11
Public Member Functions | Protected Member Functions | Protected Attributes | Properties | List of all members
ItemAttributeKNN Class Reference

k-nearest neighbor (kNN) item-based collaborative filtering using the correlation of the item attibutes More...

Inheritance diagram for ItemAttributeKNN:
ItemKNN IItemAttributeAwareRecommender KNN IItemSimilarityProvider IRecommender IncrementalItemRecommender ItemRecommender IIncrementalItemRecommender Recommender IIncrementalRecommender IRecommender

Public Member Functions

override void AddFeedback (ICollection< Tuple< int, int >> feedback)
 Add positive feedback events and perform incremental training More...
 
virtual bool CanPredict (int user_id, int item_id)
 Check whether a useful prediction (i.e. not using a fallback/default answer) can be made for a given user-item combination More...
 
Object Clone ()
 create a shallow copy of the object More...
 
float GetItemSimilarity (int item_id1, int item_id2)
 get the similarity between two items More...
 
IList< int > GetMostSimilarItems (int item_id, uint n=10)
 get the most similar items More...
 
override void LoadModel (string filename)
 Get the model parameters from a file More...
 
override float Predict (int user_id, int item_id)
 Predict rating or score for a given user-item combination More...
 
IList< Tuple< int, float > > Recommend (int user_id, int n=-1, ICollection< int > ignore_items=null, ICollection< int > candidate_items=null)
 Recommend items for a given user More...
 
virtual System.Collections.Generic.IList< Tuple< int, float > > Recommend (int user_id, int n=-1, System.Collections.Generic.ICollection< int > ignore_items=null, System.Collections.Generic.ICollection< int > candidate_items=null)
 
override void RemoveFeedback (ICollection< Tuple< int, int >> feedback)
 Remove all feedback events by the given user-item combinations More...
 
virtual void RemoveItem (int item_id)
 Remove all feedback by one item More...
 
virtual void RemoveUser (int user_id)
 Remove all feedback by one user More...
 
override void SaveModel (string filename)
 Save the model parameters to a file More...
 
override string ToString ()
 Return a string representation of the recommender More...
 
override void Train ()
 Learn the model parameters of the recommender from the training data More...
 

Protected Member Functions

override void AddItem (int item_id)
 
virtual void AddUser (int user_id)
 
void RecomputeNeighbors (ICollection< int > update_entities)
 
void ResizeNearestNeighbors (int new_size)
 Resizes the nearest neighbors list if necessary More...
 
void Update (ICollection< Tuple< int, int >> feedback)
 Update the correlation matrix for the given feedback More...
 

Protected Attributes

IBinaryDataCorrelationMatrix correlation_matrix
 Correlation matrix over some kind of entity, e.g. users or items More...
 
uint k = 80
 The number of neighbors to take into account for prediction More...
 
IList< IList< int > > nearest_neighbors
 Precomputed nearest neighbors More...
 

Properties

float Alpha [get, set]
 Alpha parameter for BidirectionalConditionalProbability More...
 
BinaryCorrelationType Correlation [get, set]
 The kind of correlation to use More...
 
override IBooleanMatrix DataMatrix [get]
 
virtual IPosOnlyFeedback Feedback [get, set]
 the feedback data to be used for training More...
 
IBooleanMatrix ItemAttributes [get, set]
 
uint K [get, set]
 The number of neighbors to take into account for prediction More...
 
int MaxItemID [get, set]
 Maximum item ID More...
 
int MaxUserID [get, set]
 Maximum user ID More...
 
int NumItemAttributes [get]
 
float Q [get, set]
 Exponent to be used for transforming the neighbor's weights More...
 
bool UpdateItems [get, set]
 
bool UpdateUsers [get, set]
 
bool Weighted [get, set]
 Gets or sets a value indicating whether this MyMediaLite.ItemRecommendation.KNN is weighted. More...
 

Detailed Description

k-nearest neighbor (kNN) item-based collaborative filtering using the correlation of the item attibutes

This recommender does NOT support incremental updates.

Member Function Documentation

override void AddFeedback ( ICollection< Tuple< int, int >>  feedback)
inlinevirtualinherited

Add positive feedback events and perform incremental training

Parameters
feedbackcollection of user id - item id tuples

Reimplemented from IncrementalItemRecommender.

virtual bool CanPredict ( int  user_id,
int  item_id 
)
inlinevirtualinherited

Check whether a useful prediction (i.e. not using a fallback/default answer) can be made for a given user-item combination

It is up to the recommender implementor to decide when a prediction is useful, and to document it accordingly.

Parameters
user_idthe user ID
item_idthe item ID
Returns
true if a useful prediction can be made, false otherwise

Implements IRecommender.

Reimplemented in ExternalItemRecommender, ExternalRatingPredictor, BiPolarSlopeOne, SlopeOne, Constant, GlobalAverage, UserAverage, ItemAverage, and Random.

Object Clone ( )
inlineinherited

create a shallow copy of the object

float GetItemSimilarity ( int  item_id1,
int  item_id2 
)
inlineinherited

get the similarity between two items

Returns
the item similarity; higher means more similar
Parameters
item_id1the ID of the first item
item_id2the ID of the second item

Implements IItemSimilarityProvider.

IList<int> GetMostSimilarItems ( int  item_id,
uint  n = 10 
)
inlineinherited

get the most similar items

Returns
the items most similar to a given item
Parameters
item_idthe ID of the item
nthe number of similar items to return

Implements IItemSimilarityProvider.

override void LoadModel ( string  filename)
inlinevirtualinherited

Get the model parameters from a file

Parameters
filenamethe name of the file to read from

Reimplemented from Recommender.

override float Predict ( int  user_id,
int  item_id 
)
inlinevirtualinherited

Predict rating or score for a given user-item combination

Parameters
user_idthe user ID
item_idthe item ID
Returns
the predicted score/rating for the given user-item combination

Implements Recommender.

IList<Tuple<int, float> > Recommend ( int  user_id,
int  n = -1,
ICollection< int >  ignore_items = null,
ICollection< int >  candidate_items = null 
)
inherited

Recommend items for a given user

Parameters
user_idthe user ID
nthe number of items to recommend, -1 for as many as possible
ignore_itemscollection if items that should not be returned; if null, use empty collection
candidate_itemsthe candidate items to choose from; if null, use all items
Returns
a sorted list of (item_id, score) tuples

Implemented in WeightedEnsemble, and Ensemble.

override void RemoveFeedback ( ICollection< Tuple< int, int >>  feedback)
inlinevirtualinherited

Remove all feedback events by the given user-item combinations

Parameters
feedbackcollection of user id - item id tuples

Reimplemented from IncrementalItemRecommender.

virtual void RemoveItem ( int  item_id)
inlinevirtualinherited

Remove all feedback by one item

Parameters
item_idthe item ID

Implements IIncrementalRecommender.

Reimplemented in BPRMF, BPRSLIM, LeastSquareSLIM, MF, and MostPopular.

virtual void RemoveUser ( int  user_id)
inlinevirtualinherited

Remove all feedback by one user

Parameters
user_idthe user ID

Implements IIncrementalRecommender.

Reimplemented in LeastSquareSLIM, MF, and MostPopular.

void ResizeNearestNeighbors ( int  new_size)
inlineprotectedinherited

Resizes the nearest neighbors list if necessary

Parameters
new_sizethe new size
override void SaveModel ( string  filename)
inlinevirtualinherited

Save the model parameters to a file

Parameters
filenamethe name of the file to write to

Reimplemented from Recommender.

override string ToString ( )
inlineinherited

Return a string representation of the recommender

The ToString() method of recommenders should list the class name and all hyperparameters, separated by space characters.

Implements IRecommender.

override void Train ( )
inlinevirtualinherited

Learn the model parameters of the recommender from the training data

Implements Recommender.

void Update ( ICollection< Tuple< int, int >>  feedback)
inlineprotectedinherited

Update the correlation matrix for the given feedback

Parameters
feedbackthe feedback (user-item tuples)

Member Data Documentation

IBinaryDataCorrelationMatrix correlation_matrix
protectedinherited

Correlation matrix over some kind of entity, e.g. users or items

uint k = 80
protectedinherited

The number of neighbors to take into account for prediction

IList<IList<int> > nearest_neighbors
protectedinherited

Precomputed nearest neighbors

Property Documentation

float Alpha
getsetinherited

Alpha parameter for BidirectionalConditionalProbability

BinaryCorrelationType Correlation
getsetinherited

The kind of correlation to use

virtual IPosOnlyFeedback Feedback
getsetinherited

the feedback data to be used for training

uint K
getsetinherited

The number of neighbors to take into account for prediction

int MaxItemID
getsetinherited

Maximum item ID

int MaxUserID
getsetinherited

Maximum user ID

float Q
getsetinherited

Exponent to be used for transforming the neighbor's weights

A value of 0 leads to counting of the relevant neighbors. 1 is the usual weighted prediction. Values greater than 1 give higher weight to higher correlated neighbors.

TODO LIT

bool Weighted
getsetinherited

Gets or sets a value indicating whether this MyMediaLite.ItemRecommendation.KNN is weighted.

TODO add literature reference


The documentation for this class was generated from the following file: