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Reinforcement learning - grosso modo - is trying to apply these fields. So, where does the enthusiasm come from?
*Shrug* -- probably from Alpha Go and AlphaZero.
Reinforcement learning - grosso modo - is trying to apply these fields. So, where does the enthusiasm come from?
*Shrug* -- probably from Alpha Go and AlphaZero.
In contrast, DeepMind is "confident that this approach is generalisable to a large number of domains".[9]
This is the part I would be careful about. Programmers tend to start with the solution in mind?
just remember that whenever somebody shows talks about machine learning or AI or whatever these new buzz terms are, they are talking about statistics. that is all it is. applying statistics and mathematics to solve a problem used to be called applied statistics or applied mathematics, but for some reason it is now called machine learning. it is silly. it is like in physics when somebody mentions 'quantum mechanics' - rarely are they talking about a specific feature of quantum mechanics as opposed to classical mechanics or just physics in general.
I have to disagree with you. First Quants do use black scholes. I am not talking about the formula itself but most of these pricing models still go with the “black scholes framework”. Most of the time they use “calibration” technique to reverse engineer the vol and fit the market price. Essentially they are over fitting the pricing models by adding more parameters. Try testing them out of the sample and see what happened. Sure you can argue that caliberation cannot be used for prediction as only reflected current market view and market changes. To me this is just “blah blah blah”.
As in terms of machine learning, it is not just statistics but a robust ecosystem to apply existing AI toolkits to yield the optimization of a practical problem. deep learning are essentially layers of logistic sigmoids (for example) which can train a non-linear function, which essentially those pricing functions are, no matter it is Q or P. Well an argument is that computer is just binary mathematics. But it is very powerful with algorithms. I would say AI today is algorithms wrapping statistics.
I agreed nowadays AI is an over-abused terms and 90% (probably 99%) of existing AI projects are dogshit. But there are people who are applying it very well, like google brain, Amazon, etc. In my perspective it is inevitable that AI will one day take over. It is not happening yet because banks are too cheap ( and stupid) to fund these projects.
1)Is it likely that the job of a quant could be completely(or partially) performed by an Artificial Intelligence system in the near future(the next 5-30 years)?
2)Would the happening of the event described in 1) lead to banks and other financial institutions replacing 'human-quants' with 'machine-quants'?
3)What skill could an aspiring quant learn now in order to guard against such an event described in 3) ?
4)Given the possible events above, is it risky to position oneself (in terms of extra reading, university courses etc) to become a quantitative analyst?
5) What additional tasks might a quant of the future(e.g in 20 years time) have to be able to perform in order be superior to a machine-quant?
6)What additional abilities might a quant of the future have to possess in order to be superior to a machine quant?
Many Thanks,
-Porimasu
https://www.enterpriseinnovation.net/article/explaining-shortage-it-professionals-929579599And there is a IT skills shortage. A lot of quant work is IT? Some say > 70%.
Explaining the shortage of IT professionals
It's much deeper and longer than that. And it is not just a USA phenomenon.Each time I hear "shortage of IT professionals", I reach for my revolver. It's usually employed as a feeble excuse by US multinationals, working in tandem with Indian consultancies, to up the H1B quota.
i highlighted the relevant part in bold. my view and most practitioners' view is that the calibration cannot be used for prediction and that all of these pricing models are used merely to reflect current market views and to generate robust hedges - usually first order greeks and perhaps a couple of second order hedges (gamma). i am happy to provide references from this - not from academia but people who actually work in banks.
believing that a stochastic differential equation for an asset can actually 'predict' option prices or moves for that asset is... ridiculous. people stopped taking this approach seriously a long time ago. it is not what quants do. if the pricing model function is your base, then this is how you will think. if the market is your base, then the pricing model solely exists to match the market and to generate hedges. i am in the latter category.
this is a fundamental difference in probability to statistics. crudely speaking, your perspective is that of a statistician. but this is not a problem where regression, cross-validation, over-fitting, etc, are helpful and/or relevant. there is nothing to predict. nearly everything is encoded onto the market already and we just need to make sure E[f(S)] behaves suitably, so we use probability theory... girsanov theorem, monte carlo methods, optimal stopping time, etc.
In a market where these assets are traded with lots of liquidity and your client comes to you for taking a position, do you give them the market price or your risk neutral price? Yes you can argue that pricing models are still useful for revaluation for hedging purposes. As a matter of fact, I have been seeing how traders are bleeding out on a daily basis as the model prices “converge” into marke prices (of course when near maturity it is just linear). The most money they make is the first day when they collect the premiums and hope they can cover their hedging cost but lmao good luck with that.
As you claim about the risk neutral pricing, how Quants shifted from physical measure into risk neutral with Girsanov theorem/replicating portfolio/martingale pricing etc... The theory is indeed beautiful. But reality seems to disagree. All the undelying assumptions are violated. Even equity itself doesn’t seems to be lognormal distributed.
You are restricting yourself into a framework where you can always perfectly explain yourself. Have you ever considered that the framework itself is a false system?