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Assumptions #6

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MarkusEvo opened this issue Jan 19, 2021 · 0 comments
Closed

Assumptions #6

MarkusEvo opened this issue Jan 19, 2021 · 0 comments

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@MarkusEvo
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I want to use your library to check for causal relationships between stocks (as a feature selection process for grammatical evolution because I want to evolve trading Systems).
My question is: What are the underlying assumptions that you are using?
Like causal sufficiency etc.
Did I understand it correctly that since you make it possible to detect hidden confounders I can ignore causal sufficiency?

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