Github user Yunni commented on a diff in the pull request:

    https://github.com/apache/spark/pull/15148#discussion_r82722189
  
    --- Diff: mllib/src/main/scala/org/apache/spark/ml/feature/MinHash.scala ---
    @@ -0,0 +1,143 @@
    +/*
    + * Licensed to the Apache Software Foundation (ASF) under one or more
    + * contributor license agreements.  See the NOTICE file distributed with
    + * this work for additional information regarding copyright ownership.
    + * The ASF licenses this file to You under the Apache License, Version 2.0
    + * (the "License"); you may not use this file except in compliance with
    + * the License.  You may obtain a copy of the License at
    + *
    + *    http://www.apache.org/licenses/LICENSE-2.0
    + *
    + * Unless required by applicable law or agreed to in writing, software
    + * distributed under the License is distributed on an "AS IS" BASIS,
    + * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
    + * See the License for the specific language governing permissions and
    + * limitations under the License.
    + */
    +
    +package org.apache.spark.ml.feature
    +
    +import scala.util.Random
    +
    +import org.apache.spark.annotation.{Experimental, Since}
    +import org.apache.spark.ml.linalg.{Vector, Vectors, VectorUDT}
    +import org.apache.spark.ml.param.{BooleanParam, Params}
    +import org.apache.spark.ml.util.{Identifiable, SchemaUtils}
    +import org.apache.spark.sql.types.StructType
    +
    +/**
    + * :: Experimental ::
    + * Params for [[MinHash]].
    + */
    +@Since("2.1.0")
    +private[ml] trait MinHashParams extends Params {
    +
    +  /**
    +   * If true, set the random seed to 0. Otherwise, use default setting in 
scala.util.Random
    +   * @group param
    +   */
    +  @Since("2.1.0")
    +  val hasSeed: BooleanParam = new BooleanParam(this, "hasSeed",
    +    "If true, set the random seed to 0.")
    +
    +  /** @group getParam */
    +  @Since("2.1.0")
    +  final def getHasSeed: Boolean = $(hasSeed)
    +}
    +
    +/**
    + * :: Experimental ::
    + * Model produced by [[MinHash]]
    + * @param hashFunctions A seq of hash functions, mapping elements to their 
hash values.
    + */
    +@Experimental
    +@Since("2.1.0")
    +class MinHashModel private[ml] (override val uid: String, hashFunctions: 
Seq[Int => Long])
    +  extends LSHModel[MinHashModel] {
    +
    +  @Since("2.1.0")
    +  override protected[this] val hashFunction: Vector => Vector = {
    +    elems: Vector =>
    +      require(elems.numNonzeros > 0, "Must have at least 1 non zero 
entry.")
    +      val elemsList = elems.toSparse.indices.toList
    +      Vectors.dense(hashFunctions.map(
    +        func => elemsList.map(func).min.toDouble
    +      ).toArray)
    +  }
    +
    +  @Since("2.1.0")
    +  override protected[ml] def keyDistance(x: Vector, y: Vector): Double = {
    +    val xSet = x.toSparse.indices.toSet
    +    val ySet = y.toSparse.indices.toSet
    +    val intersectionSize = xSet.intersect(ySet).size.toDouble
    +    val unionSize = xSet.size + ySet.size - intersectionSize
    +    assert(unionSize > 0, "The union of two input sets must have at least 
1 elements")
    +    1 - intersectionSize / unionSize
    +  }
    +
    +  @Since("2.1.0")
    +  override protected[ml] def hashDistance(x: Vector, y: Vector): Double = {
    +    // Since it's generated by hashing, it will be a pair of dense vectors.
    +    x.toDense.values.zip(y.toDense.values).map(x => math.abs(x._1 - 
x._2)).min
    +  }
    +}
    +
    +/**
    + * :: Experimental ::
    + * LSH class for Jaccard distance.
    + *
    + * The input can be dense or sparse vectors, but it is more efficient if 
it is sparse. For example,
    + *    `Vectors.sparse(10, Array[(2, 1.0), (3, 1.0), (5, 1.0)])`
    + * means there are 10 elements in the space. This set contains elem 2, 
elem 3 and elem 5.
    + * Also, any input vector must have at least 1 non-zero indices, and all 
non-zero values are treated
    + * as binary "1" values.
    + */
    +@Experimental
    +@Since("2.1.0")
    +class MinHash(override val uid: String) extends LSH[MinHashModel] with 
MinHashParams {
    +
    +  // A large prime smaller than sqrt(2^63 − 1)
    +  private[this] val prime = 2038074743
    +
    +  @Since("2.1.0")
    +  override def setInputCol(value: String): this.type = 
super.setInputCol(value)
    +
    +  @Since("2.1.0")
    +  override def setOutputCol(value: String): this.type = 
super.setOutputCol(value)
    +
    +  @Since("2.1.0")
    +  override def setOutputDim(value: Int): this.type = 
super.setOutputDim(value)
    +
    +  @Since("2.1.0")
    +  def this() = {
    +    this(Identifiable.randomUID("min hash"))
    +  }
    +
    +  setDefault(outputDim -> 1, outputCol -> "lshFeatures", hasSeed -> false)
    +
    +  @Since("2.1.0")
    +  def setHasSeed(value: Boolean): this.type = set(hasSeed, value)
    +
    +  @Since("2.1.0")
    +  override protected[this] def createRawLSHModel(inputDim: Int): 
MinHashModel = {
    +    require(inputDim <= prime / 2, "The input vector dimension is too 
large for MinHash to handle.")
    +    if ($(hasSeed)) Random.setSeed(0)
    --- End diff --
    
    Done.


---
If your project is set up for it, you can reply to this email and have your
reply appear on GitHub as well. If your project does not have this feature
enabled and wishes so, or if the feature is enabled but not working, please
contact infrastructure at infrastruct...@apache.org or file a JIRA ticket
with INFRA.
---

---------------------------------------------------------------------
To unsubscribe, e-mail: reviews-unsubscr...@spark.apache.org
For additional commands, e-mail: reviews-h...@spark.apache.org

Reply via email to