Union, Intersection, Independence, Disjoint, Complement: Superior Chance for Information Science Collection (1)
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Should you’ve been following my earlier articles within the likelihood collection, you’ll have seen that I briefly touched on ideas like likelihood notations earlier than diving into Bayes’ theorem.
I took a while to look again at my articles and realized that I didn’t go deeply into the foundational notations that set the idea for all likelihood calculations such because the Union, Intersection, Independence, Disjoint, and so forth.
These notations aren’t simply one thing that must be brushed over as a result of they’re tremendous vital in all issues associated to information. Particularly in fields like information evaluation, machine studying, and statistical modeling.
This realization led me to suppose: earlier than leaping headfirst into superior matters like Conditional Chance, Conditional Independence, Bayes’ Theorem, Markov Chains, or Monte Carlo strategies, it’s essential to have a stable understanding of the fundamentals.
With out this basis, superior likelihood…