5

I am working to calculate RSI (Relative Strength Index). I have data like this

**Date|Close|Change|Gain|Loss**

The formula for calculating this is

RSI = 100 - 100/(1+RS)
where RS = Average Gain / Average Loss

Source

So I want to calculate via some programming language either in JavaScript or C# but i don't know exactly how to convert that in programming language or what steps do I need.

If there is anything you want more to understand my problem i will try to explain.

10

Simple way to translate the RSI formula:

    public static double CalculateRsi(IEnumerable<double> closePrices)
    {
        var prices = closePrices as double[] ?? closePrices.ToArray();

        double sumGain = 0;
        double sumLoss = 0;
        for (int i = 1; i < prices.Length; i++)
        {
            var difference = prices[i] - prices[i - 1];
            if (difference >= 0)
            {
                sumGain += difference;
            }
            else
            {
                sumLoss -= difference;
            }
        }

        if (sumGain == 0) return 0;
        if (Math.Abs(sumLoss) < Tolerance) return 100;

        var relativeStrength = sumGain / sumLoss;

        return 100.0 - (100.0 / (1 + relativeStrength));
    }

There are plenty of projects implementing RSI in different ways. An incremental way can be found here

| improve this answer | |
  • @AmirFo In this code was using double Tolerance = 10e-20 just don't get an error in the division below. – Riga Apr 14 at 12:39
  • For RelativeStrength we need to divide it by average of sum gain and average of sum loss.. so i feel in above code we need to change var relativeStrength = (sumGain/Period) / (sumLoss/Period).. reference from investopedia. RSI ​ =100−[ 100/( 1+ (Average loss/Average gain)) ] investopedia.com/terms/r/rsi.asp – Mehul Talajia Jun 7 at 10:54
1

This should not be different to Riga's answer however it seems to never drop below 40, so be careful, maybe just stick with TA_LIB?

    //Relative Strength Index
    function rsi($ar, $period, $opt, $offset=0) //opt: 0=none, 1=exponential, 2=wilder, 3=average all
    {
        GLOBAL $smoothsteps;
        $pag = 0; //Previous Average Losses
        $pal = 0; //Previous Average Gains

        //Count average losses and gains
        $len = sizeof($ar)-1-$offset;
        $end = $len-$period-$offset;
        for($i = $len; $i > $end; $i--)
        {
            if($ar[$i] > $ar[$i-1]) //Gain
                $pag += $ar[$i] - $ar[$i-1]; 
            else //Loss
                $pal += $ar[$i-1] - $ar[$i];
        }
        $pag /= $period;
        $pal /= $period;

        //Smooth
        $ag = 0; //Average Losses
        $al = 0; //Average Gains
        for($i = $len; $i > 0; $i--)
        {
            if($ar[$i] > $ar[$i-1]) //Gain
                $ag += $ar[$i] - $ar[$i-1]; 
            else //Loss
                $al += $ar[$i-1] - $ar[$i];
        }

        if($opt == 3) //Average All Three
        {
            $a = 1 / $smoothsteps;
            $tag = $a * $ag + (1 - $a) * $pag;
            $tal = $a * $al + (1 - $a) * $pal;
            $wag = $pag * 13 + $ag;
            $wal = $pal * 13 + $al;
            $ag = ($wag+$tag+$pag)/3;
            $al = ($wal+$tal+$pal)/3;
        }
        else if($opt == 2) //Wilder Exp
        {
            $ag = $pag * 13 + $ag;
            $al = $pal * 13 + $al;
        }
        else if($opt == 1) //Exponential (Lame) [Closest to Trading View]
        {
            $sa = 1 / $smoothsteps;
            $ag = $sa * $ag + (1 - $sa) * $pag;
            $al = $sa * $al + (1 - $sa) * $pal;
        }
        else if($opt == 0) //None
        {
            $ag = $pag;
            $al = $pal;
        }

        //Relative Strength
        $rs = $ag / $al;

        //Relative Strength Index
        return 100 - (100 / (1+$rs));
    }
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0

I will write it in a pseudo code that you can easily write it in any languages. shortest way of coding it is:

v0 = 0 
v1 = 0 
v2 = 0 
v3 = 1/N                     
v4 = 0

if Step == 1: #initialisation
   v0 = (Price[t] - Price[t-N] ) / N
   v1 = mean( abs( diff(Price[(t-N):t] ) ) # average price change over previous N
else
   v2 = Price[t]  - Price[t-1] 
   v0 = vv[t-1] + v3 * ( v2 - v0[t-1] )
   v1 = v1[t-1] + v3 * ( abs( v2 ) - v1[t-1] )

if v1 != 0: 
   v4 = v0 / v1 
else
   v4 = 0

RSI = 50 * ( v4 + 1 )

This is probably the most efficient way of applying RSI in your simulation.

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