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by noduerme
1381 days ago
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I view the Shannon algo going long dollar or long on a stock as a form of martingale, which is open for debate, but I was actually asking because I got slightly obsessed with disproving that it worked IRL, and started just messing with it, which got way past that and ended with me building my own model... and it seems to have interesting similarities to yours (superficially, at least). I've only recently put into practice. Purely because of my own risk tolerance, it's also long term, not intra-day, also not leveraged, and also only going long. One choice I made (for aesthetic reasons?) was to not use big data or anything beyond basic price histories, and to not use a neural net. I wanted something with simple, reproducible signal rules a human can understand, even at the expense of profit. I ran it through my own symbolic regression platform just to validate that I was onto something. I thought about posting it here and/or making it a paid service but it seemed to me (as someone said) that if anything like this makes enough money I wouldn't need to sell it, and would be better keeping it secret... plus I used to run a sports betting analysis site that was too much trouble and made me feel bad when predictions were off. As it is now, I'll only have to apologize to a couple of friends on a private email chain. Officially the target is 20% over S&P per year, but unofficially the results I'm seeing in the sim are 100% to 1500%. I saw something it doesn't appear is present in your models, and I extrapolated from it into a program that chases that thing. Nonetheless it definitely seems like we've worked in a similar direction, as one potential application of my model is a simple long stock vs dollar trigger. And you've probably gleaned other insights I haven't. Offhand, would you be open to getting in touch and swapping strategies / pitfalls? |
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How long have you been running it live, and how far back does your backtest data run? How closely are you seeing real returns match backtest? After running live for over 2 years, I've seen up to 6 month periods where the model outperformed the backtest, but overall the models have underperformed to varying degrees as expected. Though I have spent hundreds of hours dedicated to removing noise and overfit bias, I've come to the conclusion it isn't possible to 100% remove it, which combined with expected market regime changes where legitimate patterns become unprofitable means that in the long run every model is essentially guaranteed to underperform its backtest, the question becomes simply to what degree. However, with a strong enough model, even underperforming the backtest can lead to substantial alpha which is what I and our members have experienced so far this year.