February 9th, 2010, 7:33 pm
Sorry - I certainly didn't mean to imply that you thought Kirk was a "good" model - I was just noting that, to do significantly better, you have to work quite hard.It's not so much the number of factors but how you spend them that matters. I could have two GBM factors in a joint-price model (like Kirk) or I could have two factors in some stochastic volatility spread model (one for the spread, one for the stochastic variance). I could cook up a billion possible alternatives. I have written 1-factor spread models that do a better job than the 2-factor Kirk model - as you probably have, too.Just adding factors doesn't help unless you make them count. I used to work with 3-factor IR models - they were still terrible at pricing and risk-managing yield-curve spread options. The same is true of a lot of the credit correlation models which performed so badly in the last few years. Similarly, Kirk isn't a bad model because it has too few factors, but because it forces your distribution to be bivariate normal in a case where the only reason people are really interested in trading the product is _precisely_ because no one believes that it is!If your higher dimension model captures empirically relevant effects without introducing a whole feast of un-measurable and/or unhedgeable things then, yes, I would say it is better than your lower dimensional model. If not, I would say the lower dimension model is better by Occam's Razor. But, all too often, people assume that just because they are adding factors and making things more complex, that they are meaningfully and usefully capturing richer dynamics - that is just not true. Usually all they are doing is making their model mis-specification less obvious so that it will bite them in a more painful place later on when things really blow up.The thought process should be "what do I need to model to make this product safe for my children/traders?" and not "how many factors should I use?".