There can be purely price-based factors, e.g. a slightly surprising fact is that "momentum" names move together, i.e. stocks that have gone up in the last year often move together, and inversely to stocks that went down in the last year.
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known to behave *really* badly (recommending nonsense portfolios) when there is noise in the covariance matrix. You get noise when you try to estimate too many parameters from too little data, so using a factor model to reduce the number of parameters to estimate
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is a critical step to take before you even consider using a portfolio optimizer (or some other method of reducing noise, but a factor model is the most common).
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Lots of directions to take this but I think that's enough for now. There are many others who know a lot about this -- let me know if I missed anything important
@choffstein@alphaarchitect@CliffordAsness?Show this thread -
I answered some follow-up questions herehttps://twitter.com/macrocephalopod/status/1356915582050979841?s=20 …
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And more on how this might be used at a big multi-manager "pod shop" hedge fund here --https://twitter.com/macrocephalopod/status/1357089641548111872?s=20 …
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End of conversation
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