org.apache.spark.mllib.recommendation
MatrixFactorizationModel 
            Companion object MatrixFactorizationModel
          
      class MatrixFactorizationModel extends Saveable with Serializable with Logging
Model representing the result of matrix factorization.
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 - @Since( "0.8.0" )
 - Source
 - MatrixFactorizationModel.scala
 - Note
 If you create the model directly using constructor, please be aware that fast prediction requires cached user/product features and their associated partitioners.
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        new
      
      
        MatrixFactorizationModel(rank: Int, userFeatures: RDD[(Int, Array[Double])], productFeatures: RDD[(Int, Array[Double])])
      
      
      
- rank
 Rank for the features in this model.
- userFeatures
 RDD of tuples where each tuple represents the userId and the features computed for this user.
- productFeatures
 RDD of tuples where each tuple represents the productId and the features computed for this product.
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 - @Since( "0.8.0" )
 
 
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        def
      
      
        predict(usersProducts: JavaPairRDD[Integer, Integer]): JavaRDD[Rating]
      
      
      
Java-friendly version of
MatrixFactorizationModel.predict.Java-friendly version of
MatrixFactorizationModel.predict.- Annotations
 - @Since( "1.2.0" )
 
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        predict(usersProducts: RDD[(Int, Int)]): RDD[Rating]
      
      
      
Predict the rating of many users for many products.
Predict the rating of many users for many products. The output RDD has an element per each element in the input RDD (including all duplicates) unless a user or product is missing in the training set.
- usersProducts
 RDD of (user, product) pairs.
- returns
 RDD of Ratings.
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 - @Since( "0.9.0" )
 
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        def
      
      
        predict(user: Int, product: Int): Double
      
      
      
Predict the rating of one user for one product.
Predict the rating of one user for one product.
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 - @Since( "0.8.0" )
 
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        val
      
      
        productFeatures: RDD[(Int, Array[Double])]
      
      
      
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 - @Since( "0.8.0" )
 
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        val
      
      
        rank: Int
      
      
      
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        recommendProducts(user: Int, num: Int): Array[Rating]
      
      
      
Recommends products to a user.
Recommends products to a user.
- user
 the user to recommend products to
- num
 how many products to return. The number returned may be less than this.
- returns
 Rating objects, each of which contains the given user ID, a product ID, and a "score" in the rating field. Each represents one recommended product, and they are sorted by score, decreasing. The first returned is the one predicted to be most strongly recommended to the user. The score is an opaque value that indicates how strongly recommended the product is.
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 - @Since( "1.1.0" )
 
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        recommendProductsForUsers(num: Int): RDD[(Int, Array[Rating])]
      
      
      
Recommends top products for all users.
Recommends top products for all users.
- num
 how many products to return for every user.
- returns
 [(Int, Array[Rating])] objects, where every tuple contains a userID and an array of rating objects which contains the same userId, recommended productID and a "score" in the rating field. Semantics of score is same as recommendProducts API
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        recommendUsers(product: Int, num: Int): Array[Rating]
      
      
      
Recommends users to a product.
Recommends users to a product. That is, this returns users who are most likely to be interested in a product.
- product
 the product to recommend users to
- num
 how many users to return. The number returned may be less than this.
- returns
 Rating objects, each of which contains a user ID, the given product ID, and a "score" in the rating field. Each represents one recommended user, and they are sorted by score, decreasing. The first returned is the one predicted to be most strongly recommended to the product. The score is an opaque value that indicates how strongly recommended the user is.
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 - @Since( "1.1.0" )
 
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        def
      
      
        recommendUsersForProducts(num: Int): RDD[(Int, Array[Rating])]
      
      
      
Recommends top users for all products.
Recommends top users for all products.
- num
 how many users to return for every product.
- returns
 [(Int, Array[Rating])] objects, where every tuple contains a productID and an array of rating objects which contains the recommended userId, same productID and a "score" in the rating field. Semantics of score is same as recommendUsers API
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 - @Since( "1.4.0" )
 
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        def
      
      
        save(sc: SparkContext, path: String): Unit
      
      
      
Save this model to the given path.
Save this model to the given path.
This saves:
- human-readable (JSON) model metadata to path/metadata/
 - Parquet formatted data to path/data/
 
The model may be loaded using
Loader.load.- sc
 Spark context used to save model data.
- path
 Path specifying the directory in which to save this model. If the directory already exists, this method throws an exception.
- Definition Classes
 - MatrixFactorizationModel → Saveable
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 - @Since( "1.3.0" )
 
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        val
      
      
        userFeatures: RDD[(Int, Array[Double])]
      
      
      
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