If you have installed a ERM system with a MC2.0 compatible docking station it will be up and running after a restart of the ERM mainframe. You just have to be online while you plug the Monte Carlo module into the dock. Remember to remove the transport screw. Monte Carlo vibrates a lot due to the high iteration-rpm, and the screw will destroy the module.
Could you tell me how long a rubber band is by the way? Just wondering…
I have an IOS Monte Carlo app too. This simulation provides estimates as correct as long as inputs are valid. Otherwise, you have a GIGO Monte Carlo estimations.
maybe i’m Just misremembering but I think this is a place where study materials have some inconsistencies. I think they generally say it’s expensive/hard to do MCS but not exclusively so. If a question comes up on the exam where this is important you have to guess a little bit about what CFAI wants or turn your real world brain off temporarily.
I would think CFAI could be justified in the ‘Monte Carlo being expensive’ because a company would need a whole bunch of overpaid statisticians and macro-economists to somewhat reliably create a Monte Carlo model. Probably the company would need to keep the extra manpower to run the model check its validity, input factor weights… depending on the complexity of the scenario, a simple Monte Carlo app may not bring a comprehensive result.
It depends on the asset. Var-Cov assumes a normal distribution. If the asset has a non-linear return structure (like options) then you can’t use it. You would have to use historical VaR.
I don’t believe that’s a “top software.” A statistical package would likely be better suited; SAS, and R come first to mind. There’s a lot of problems with using excel for statistical analysis, so it’s definitely worth looking into real stats programs.
I think the key point that hasn’t been mentioned is accuracy of Monte Carlo simulations. Monte Carlo is VERY noisy as an estimation process, and as a result, getting accurate results via Monte Carlo simulation can take a LOT of paths. That’s what I think people usually mean when they say Monte Carlo is expensive, and I think that’s a fairly accurate statement. If you need 100,000,000 simulations considering all the risk exposures on the firm to determine a VaR, you can see how that would become expensive.
That said, there are tricks to make estimates more accurate and thus less expensive, but there’s really no way around Monte Carlo being noisy.