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Linear Regression Conditional Mean Assumption
A fundamental assumption of linear regression is that the relationship between the features and the target is approximately linear. This means the expected value of the target, defined as the conditional mean , can be mathematically expressed as a weighted sum of the input features . This framework allows the actual target values to deviate from their expected conditional mean due to observation noise.
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