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EXAMPLE - Linear Regression, Done Properly
Linear regression is the first model everyone uses and the first model most people misunderstand. This is a full technical article that treats linear regression as a bounded system - invariants first, paper execution before code, failure modes before confidence, and a mastery gate at the end.
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