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Derive the asymptotic bias, p lim[b * 1 - ��1], in terms of population covariances?

User Ali Bassam
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Final Answer

The asymptotic bias,
\( p \lim_(b \to \infty) (b \cdot 1 - \beta_1) \), in terms of population covariances is
\( \text{Cov}(X, Y)/\text{Var}(X) \), where \( X \) and \( Y \) are the explanatory and response variables, respectively.

Step-by-step explanation

The asymptotic bias can be expressed as the limit of the product
\( b \cdot 1 - \beta_1 \) as \( b \) approaches infinity. This is mathematically represented as
\( p \lim_(b \to \infty) (b \cdot 1 - \beta_1) \). In the context of regression analysis,
\( \beta_1 \)represents the slope of the regression line, and b is the sample slope. The asymptotic bias, in terms of population covariances, is given by
\( \text{Cov}(X, Y)/\text{Var}(X) \), where \( \text{Cov}(X, Y) \) is the covariance between the explanatory and response variables, and
\( \text{Var}(X) \)is the variance of the explanatory variable.

In simpler terms, the asymptotic bias is a measure of how the estimated slope in a regression analysis converges to the true population slope as the sample size becomes infinitely large. The expression
\( \text{Cov}(X, Y)/\text{Var}(X) \) captures the relationship between the covariance of the variables and the variance of the explanatory variable. As the sample size increases, the bias diminishes, and the estimate of the slope approaches the true population slope. This result is fundamental in understanding the behavior of regression estimates in the limit of large samples and provides insights into the reliability of regression analyses.

User Fermin
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