Hat values are another name for which regression diagnostic concept?

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Multiple Choice

Hat values are another name for which regression diagnostic concept?

Explanation:
Leverage is the regression diagnostic concept represented by hat values. Hat values are the diagonal elements of the hat matrix H = X(X'X)^{-1}X', and they quantify how much an observation’s predictor values influence its fitted value ŷ. Each h_ii shows how strongly observation i can affect the regression line: observations with large hat values have predictor values that are far from the center of the data, giving them more potential to sway the estimates. High leverage is about the potential to influence, and it doesn’t by itself guarantee influence unless accompanied by a large residual. Hat values typically range from 0 to 1, with larger values signaling greater leverage. In practice, recognizing high-leverage points helps assess their possible impact on the model’s fit and coefficients. Standardized residuals relate to residual size, not how far the X-values lie from the typical pattern; influential observations depend on both leverage and residuals; confidence intervals pertain to precision of estimates rather than the influence of individual points.

Leverage is the regression diagnostic concept represented by hat values. Hat values are the diagonal elements of the hat matrix H = X(X'X)^{-1}X', and they quantify how much an observation’s predictor values influence its fitted value ŷ. Each h_ii shows how strongly observation i can affect the regression line: observations with large hat values have predictor values that are far from the center of the data, giving them more potential to sway the estimates. High leverage is about the potential to influence, and it doesn’t by itself guarantee influence unless accompanied by a large residual. Hat values typically range from 0 to 1, with larger values signaling greater leverage. In practice, recognizing high-leverage points helps assess their possible impact on the model’s fit and coefficients.

Standardized residuals relate to residual size, not how far the X-values lie from the typical pattern; influential observations depend on both leverage and residuals; confidence intervals pertain to precision of estimates rather than the influence of individual points.

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