Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

This class (https://github.com/scalanlp/nak/blob/20637cfd6f373792b7d2fb4d9c965c0a6dac89d9/src/main/scala/nak/cluster/Kmeans.scala) has as its constructor :

class Kmeans(
  points: IndexedSeq[Point],
  distance: DistanceFunction,
  minChangeInDispersion: Double = 0.0001,
  maxIterations: Int = 100,
  fixedSeedForRandom: Boolean = false
)

Distance function is an object with trait (https://github.com/scalanlp/nak/blob/ae8fc0c534ea0613300e8c53487afe099327977a/src/main/scala/nak/cluster/Points.scala) :

trait DistanceFunction extends ((Point, Point) => Double)

/**
 * A companion object to the DistanceFunction trait that helps select the
 * DistanceFunction corresponding to each string description.
 */
object DistanceFunction {
  def apply(description: String) = description match {
    case "c" | "cosine" => CosineDistance
    case "m" | "manhattan" => ManhattanDistance
    case "e" | "euclidean" => EuclideanDistance
    case _ => throw new MatchError("Invalid distance function: " + description)
  }
}

/**
 * Compute the cosine distance between two points. Note that it is a distance
 * because we subtract the cosine similarity from one.
 */
object CosineDistance extends DistanceFunction {
  def apply(x: Point, y: Point) = 1 - x.dotProduct(y) / (x.norm * y.norm)
}

/**
 * Compute the Manhattan (city-block) distance between two points.
 */
object ManhattanDistance extends DistanceFunction {
  def apply(x: Point, y: Point) = (x - y).abs.sum
}

/**
 * Compute the Euclidean distance between two points.
 */
object EuclideanDistance extends DistanceFunction {
  def apply(x: Point, y: Point) = (x - y).norm
}

This is my constructor implementation so far :

val p1 = new Point(IndexedSeq(0.0, 0.0 , 3.0));
val p2 = new Point(IndexedSeq(0.0, 0.0 , 3.0));
val p3 = new Point(IndexedSeq(0.0, 0.0 , 3.0));

val clusters1 =  IndexedSeq( p1 , p2 , p3 )

val k = new Kmeans(clusters1 , ??????

How do I create a DistanceFunction implementation so as to implement the Kmeans constructor ? Can I just use the existing object DistanceFunction ?

share|improve this question

1 Answer 1

up vote 1 down vote accepted

You can't use DistanceFunction companion object -- it is just a place where statics for corresponding trait/class are placed, but you can use provided object which extend the trait: CosineDistance, ManhattanDistance or EuclideanDistance:

val k = new Kmeans(clusters1 , CosineDistance, ... )

If you want to create your own implementation, you already have an example:

object ManhattanDistance extends DistanceFunction {
  def apply(x: Point, y: Point) = (x - y).abs.sum
}

or with class:

class ManhattanDistance extends DistanceFunction {
  def apply(x: Point, y: Point) = (x - y).abs.sum
}
val k = new Kmeans(clusters1 , new ManhattanDistance(), ... )
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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