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I am new to scala so not sure how to approach this problem ? Basically I am trying to find moving average crossovers for a stream of quotes. I am not sure how to get to the previous values to compare them with the current values ?

if ( fastMovingAverage(n-1) > slowMovingAverage(n-1) && fastMovingAverage(n) < slowMovingAverage(n) )
then do some action



package com.example.csv

import scala.io.Source


object FileParser {
  val TIMESTAMP_LOCATION = 3
  val BID_LOCATION = 4
  val OFFER_LOCATION = 5
  val FAST_WINDOW_SIZE = 5
  val SLOW_WINDOW_SIZE = 10

  def main(args: Array[String]) = {
    val records = Source.fromFile("Sample.csv")
    .getLines()
    .drop(1)
    .map(_.split(","))
    .takeWhile( _ != null)
    .sliding(SLOW_WINDOW_SIZE , 1)
    .foreach(x => movingAverage(x))
  }

  def movingAverage(numbers: Seq[Array[String]]) = {
    val listOfBids = numbers.map(x => x(BID_LOCATION).toDouble)
    val slowAverage = listOfBids.reduceLeft(_ + _)/numbers.length
    val fastListOfBids = listOfBids.takeRight(FAST_WINDOW_SIZE)
    val fastAverage = fastListOfBids.reduceLeft(_ + _)/fastListOfBids.length
    println("Slow Average " + slowAverage + " Fast Average " + fastAverage)
  }

}
share|improve this question
up vote 5 down vote accepted

The short answer is to use the zip operation on slowAverage and fastAverage to combine the lists and then find the difference of the zipped elements. When the difference changes from a negative value to a positive value this indicates that the fast average has crossed above(greater) the slow average.

Here's the data I used and a longer example:

Price      Fast Average(2)  Slow Average(4) Diff
9           
8           8.5     
7           7.5     
6           6.5             7.5              -1
5           5.5             6.5              -1
5           5               5.75             -0.75
6           5.5             5.5               0
7           6.5             5.75              0.75
8           7.5             6.5               1
9           8.5             7.5               1

Moving Average Crossover Example

Google Docs Link: https://docs.google.com/spreadsheet/ccc?key=0Alfb-wgy-zTddHdwU2stS0U5ZUxtN2cwdWFoeWNPZFE&usp=sharing

Most recent price is last.

Let's see it in Scala:

scala> val prices = List(9,8,7,6,5,5,6,7,8,9)
prices: List[Int] = List(9, 8, 7, 6, 5, 5, 6, 7, 8, 9)

scala> val fastAverage = prices.sliding(2).toList.map(xs => xs.sum / 2.0)
fastAverage: List[Double] = List(8.5, 7.5, 6.5, 5.5, 5.0, 5.5, 6.5, 7.5, 8.5)

scala> val slowAverage = prices.sliding(4).toList.map(xs => xs.sum / 4.0)
slowAverage: List[Double] = List(7.5, 6.5, 5.75, 5.5, 5.75, 6.5, 7.5)

Zip together fastAverage and slowAverage but since they are different sizes we take the last seven of fastAverage with takeRight.

scala> val zipped = fastAverage.takeRight(7) zip slowAverage
zipped: List[(Double, Double)] = List((6.5,7.5), (5.5,6.5), (5.0,5.75), (5.5,5.5), (6.5,5.75), (7.5,6.5), (8.5,7.5))

Take the difference of the zipped averages. A change from negative to positive(>=0) indicates that the fast average is greater than the slow average aka bullish moving average crossover.

scala> zipped.map(x => x._1 - x._2)
res44: List[Double] = List(-1.0, -1.0, -0.75, 0.0, 0.75, 1.0, 1.0)
share|improve this answer
    
Don't use takeRight for streams, as it may result in infinite or very long evaluation. drop of sliding window size seems more appropriate. Maybe replacing List with Stream in the example would be better to answer the question. – Leo Apr 20 '13 at 15:16

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