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Linear Regression Bias Parameter
In a linear regression model, the bias (also referred to as an offset or intercept) is a parameter that determines the baseline value of the model's estimate when all input features are exactly zero. The addition of the bias term is mathematically necessary because it permits the model to express general linear functions as an affine transformation, rather than restricting predictions to lines that must pass directly through the origin.
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