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Linear Regression Conditional Mean Assumption

A fundamental assumption of linear regression is that the relationship between the features x\mathbf{x} and the target yy is approximately linear. This means the expected value of the target, defined as the conditional mean E[YX=x]E[Y \mid X=\mathbf{x}], can be mathematically expressed as a weighted sum of the input features x\mathbf{x}. This framework allows the actual target values to deviate from their expected conditional mean due to observation noise.

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Updated 2026-05-02

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