I think everything is in the title of the question: What's the prediction algorithm behind farecast.com (bing travel) ?

The website : http://www.bing.com/travel/ originally named http://farecast.com before it was bought buy bing is a website that predicts AirFares to help you purchase tickets when they are the cheapest.

I know farecast algorithm is based on historical prices. They used a huge database of airfare observations to build the predictions.

But like options (in finance call/put), there are formulas to calculate the plane ticket prices, so there must be more than just simple datamining behind their algorithm. (for exemple getting historical datas to find the different parameters in a generic formula for pricing tickets - like finding the implied volatility from historical prices of options.)

Can someone tell me what is the theory behind these kind of prediction? I believe the theory is pretty new since the idea came up in 2003, only 8 years ago.

Hope my question is clear,

Thanks in advance

**EDIT**

A very quick edit to answer yi_H comment:

I'm looking for recent papers on forecasting algorithm based on hitorical prices and pricing calculation.

Such algorithm may exist in Financial engineering, and farecast might have used quantitative finance algorithm to predict price of options to help them predict airfares.

if by chance someone knows the algorithm farecast uses, it would be great.

Thanks again

tough.. you need a huge database of previous ticket prices and also have to harvest what they forecast and find correlation between the two data. I doubt anyone has the time or resources to do this – Karoly Horvath Jul 25 '11 at 9:35