1

I have a second question around CosineSimilarity / ColumnSimilarities in Spark 2.1. I'm kinda new to scala and all the Spark environment and this is not really clear to me:

How can I get back the ColumnSimilarities for each combination of columns from the rowMatrix in spark. Here is what I tried:

Data:

import org.apache.spark.sql.{SQLContext, Row, DataFrame}
import org.apache.spark.sql.types.{StructType, StructField, StringType, IntegerType, DoubleType}
import org.apache.spark.sql.functions._

// rdd
    val rowsRdd: RDD[Row] = sc.parallelize(
      Seq(
        Row(2.0, 7.0, 1.0),
        Row(3.5, 2.5, 0.0),
        Row(7.0, 5.9, 0.0)
      )
    )

// Schema  
    val schema = new StructType()
      .add(StructField("item_1", DoubleType, true))
      .add(StructField("item_2", DoubleType, true))
      .add(StructField("item_3", DoubleType, true))

// Data frame  
    val df = spark.createDataFrame(rowsRdd, schema) 

Code:

import org.apache.spark.ml.feature.VectorAssembler
import org.apache.spark.mllib.linalg.distributed.{MatrixEntry, CoordinateMatrix, RowMatrix}

val rows = new VectorAssembler().setInputCols(df.columns).setOutputCol("vs")
  .transform(df)
  .select("vs")
  .rdd

val items_mllib_vector = rows.map(_.getAs[org.apache.spark.ml.linalg.Vector](0))
                             .map(org.apache.spark.mllib.linalg.Vectors.fromML)
val mat = new RowMatrix(items_mllib_vector)
val simsPerfect = mat.columnSimilarities()


println("Pairwise similarities are: " +   simsPerfect.entries.collect.mkString(", "))

Output:

Pairwise similarities are: MatrixEntry(0,2,0.24759378423606918), MatrixEntry(1,2,0.7376189553526812), MatrixEntry(0,1,0.8355316482961213)

So What I get is simsPerfect org.apache.spark.mllib.linalg.distributed.CoordinateMatrix of my Columns and similarities. How would I transform this back to a dataframe and get the right columns names with it?

My preferred output:

    item_from | item_to | similarity
            1 |       2 |      0.83 |             
            1 |       3 |      0.24 |
            2 |       3 |      0.73 | 

Thanks in advance

3

This approach also works without converting the row to String:

val transformedRDD = simsPerfect.entries.map{case MatrixEntry(row: Long, col:Long, sim:Double) => (row,col,sim)}
val dff = sqlContext.createDataFrame(transformedRDD).toDF("item_from", "item_to", "sim")

where, I assume val sqlContext = new org.apache.spark.sql.SQLContext(sc) is defined already and sc is the SparkContext.

0

I found a solution for my problem:

//Transform result to rdd
val transformedRDD = simsPerfect.entries.map{case MatrixEntry(row: Long, col:Long, sim:Double) => Array(row,col,sim).mkString(",")}

//Transform rdd[String] to rdd[Row]
val rdd2 = transformedRDD.map(a => Row(a))

// to DF
val dfschema = StructType(Array(StructField("value",StringType)))
val rddToDF = spark.createDataFrame(rdd2,dfschema) 

//create new DF with schema
val newdf = rddToDF.select(expr("(split(value, ','))[0]").cast("string").as("item_from")
              ,expr("(split(value, ','))[1]").cast("string").as("item_to")
              ,expr("(split(value, ','))[2]").cast("string").as("sim"))

I'm sure there is another easier way to do this, but I'm happy that it works.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.