# How do I use Holt-Winters Seasonal Dampened Method to compute a two-month sales projection in PHP?

Holt-Winters is introduced here:

http://en.wikipedia.org/wiki/Holt-Winters

The Seasonal Dampened version of it is discussed here (scroll down the page):

http://otexts.com/fpp/7/5/

In a nutshell, it basically looks at 3 things:

• long-term trend
• short-term trend
• seasonal trend

It also doesn't average those together, because really what you need is weighted averaging, where seasonal and short-term are more significant than long-term trend, naturally, with financial data trends.

Given \$anYear1 and \$anYear2, how do I apply the Holt-Winters Seasonal Dampened Method to forecast 2 more months past the end of \$anYear2? Assume \$anYear1 is an array of 12 numbers. Assume \$anYear2 is an array of a range of 0 to 12 numbers.

So, I can fill it with random data like so:

``````<?php

\$anYear1 = array();
\$anYear2 = array();
\$nStop = 10; // so we need 11 and 12 of the year
for (\$i = 1; \$i <= 12; \$i++) {
\$anYear1[\$i] = rand(200,500);
if (\$i <= \$nStop) {
// give it a natural lift like real financial data
\$anYear2[\$i] = rand(400,700);
}
}
\$nSeasonRange = 4; // 4 months in a business quarter

Therefore, I want to create a function like so:

function forecastHoltWinters(\$anYear1, \$anYear2, \$nSeasonRange = 4) {
///////////////////
// DO MAGIC HERE //
///////////////////

// an array with 2 numbers, indicating 2 months forward from end of \$anYear2
return \$anForecast;
}

\$anForecast = forecastHoltWinters(\$anYear1, \$anYear2, \$nSeasonRange);
echo "YEAR 1\n";
print_r(\$anYear1);
echo "\n\nYEAR 2\n"
print_r(\$anYear2);
echo "\n\nTWO MONTHS FORECAST\n";
print_r(\$anForecast);
``````

Note: I have found a Github example here, but it doesn't show how to do a projection. It is also discussed here.

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Kicking myself that I didn't take Calculus in college! – Volomike Oct 31 '12 at 22:53

I found a way to adapt Ian Barber's function to do what I needed.

``````<?php

error_reporting(E_ALL);
ini_set('display_errors','On');

\$anYear1 = array();
\$anYear2 = array();
\$nStop = 10;
for(\$i = 1; \$i <= 12; \$i++) {
\$anYear1[\$i] = rand(100,400);
if (\$i <= \$nStop) {
\$anYear2[\$i+12] = rand(200,600);
}
}

print_r(\$anYear1);
print_r(\$anYear2);
\$anData = array_merge(\$anYear1,\$anYear2);
print_r(forecastHoltWinters(\$anData));

function forecastHoltWinters(\$anData, \$nForecast = 2, \$nSeasonLength = 4, \$nAlpha = 0.2, \$nBeta = 0.01, \$nGamma = 0.01, \$nDevGamma = 0.1) {

// Calculate an initial trend level
\$nTrend1 = 0;
for(\$i = 0; \$i < \$nSeasonLength; \$i++) {
\$nTrend1 += \$anData[\$i];
}
\$nTrend1 /= \$nSeasonLength;

\$nTrend2 = 0;
for(\$i = \$nSeasonLength; \$i < 2*\$nSeasonLength; \$i++) {
\$nTrend2 += \$anData[\$i];
}
\$nTrend2 /= \$nSeasonLength;

\$nInitialTrend = (\$nTrend2 - \$nTrend1) / \$nSeasonLength;

// Take the first value as the initial level
\$nInitialLevel = \$anData[0];

// Build index
\$anIndex = array();
foreach(\$anData as \$nKey => \$nVal) {
\$anIndex[\$nKey] = \$nVal / (\$nInitialLevel + (\$nKey + 1) * \$nInitialTrend);
}

// Build season buffer
\$anSeason = array_fill(0, count(\$anData), 0);
for(\$i = 0; \$i < \$nSeasonLength; \$i++) {
\$anSeason[\$i] = (\$anIndex[\$i] + \$anIndex[\$i+\$nSeasonLength]) / 2;
}

// Normalise season
\$nSeasonFactor = \$nSeasonLength / array_sum(\$anSeason);
foreach(\$anSeason as \$nKey => \$nVal) {
\$anSeason[\$nKey] *= \$nSeasonFactor;
}

\$anHoltWinters = array();
\$anDeviations = array();
\$nAlphaLevel = \$nInitialLevel;
\$nBetaTrend = \$nInitialTrend;
foreach(\$anData as \$nKey => \$nVal) {
\$nTempLevel = \$nAlphaLevel;
\$nTempTrend = \$nBetaTrend;

\$nAlphaLevel = \$nAlpha * \$nVal / \$anSeason[\$nKey] + (1.0 - \$nAlpha) * (\$nTempLevel + \$nTempTrend);
\$nBetaTrend = \$nBeta * (\$nAlphaLevel - \$nTempLevel) + ( 1.0 - \$nBeta ) * \$nTempTrend;

\$anSeason[\$nKey + \$nSeasonLength] = \$nGamma * \$nVal / \$nAlphaLevel + (1.0 - \$nGamma) * \$anSeason[\$nKey];

\$anHoltWinters[\$nKey] = (\$nAlphaLevel + \$nBetaTrend * (\$nKey + 1)) * \$anSeason[\$nKey];
\$anDeviations[\$nKey] = \$nDevGamma * abs(\$nVal - \$anHoltWinters[\$nKey]) + (1-\$nDevGamma)
* (isset(\$anDeviations[\$nKey - \$nSeasonLength]) ? \$anDeviations[\$nKey - \$nSeasonLength] : 0);
}

\$anForecast = array();
\$nLast = end(\$anData);
for(\$i = 1; \$i <= \$nForecast; \$i++) {
\$nComputed = round(\$nAlphaLevel + \$nBetaTrend * \$anSeason[\$nKey + \$i]);
if (\$nComputed < 0) { // wildly off due to outliers
\$nComputed = \$nLast;
}
\$anForecast[] = \$nComputed;
}

return \$anForecast;
}
``````
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