That is overhyped marketing gibberish. Genetic algorithms in production are not all that complicated math wise. Nor is it rare to use this approach for parameter optimization. That website makes it sound esoteric to make their products appear more special.
As the previous poster pointed out the risk of overfitting is the highest risk in this area and one should really understand what he is doing. Just in order to apply ML is not enough justification to implement it.
As the previous poster pointed out the risk of overfitting is the highest risk in this area and one should really understand what he is doing. Just in order to apply ML is not enough justification to implement it.
Thanks for all the replies.
Is anyone familiar with BioComp Dakota 3? This comes close to what I've described above. Here's a brief description from their website:
Why is Dakota Different?
BioComp Dakota uses "Swarm Technology"(tm) to adapt the parameters of programmed trading systems to shifting market conditions in an attempt to create and maintain profitable market timing signals, that is, when to buy, sell or exit from the markets in a profitable manner. Dakota uses Swarm adaptation technology, not optimization. You don't want Swarm Optimization which "jumps" from one set of trading system parameters to another, but adaptation, where the swarm tracks performance smoothly. Systems with Swarm Adaptation algorithms are rare as most Swarm Technologies are focused on ill-fated optimization.
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