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Understanding Multicollinearity in Regression Analysis

Multicollinearity in regression analysis can be assessed using various tests such as Variable Inflation Factors (VIF) and R^2 value. VIF measures the strength of correlation between independent variables, while an R^2 value close to 1 indicates high multicollinearity. The Farrar Glauber test and con

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Understanding Multicollinearity in Regression Analysis

Multicollinearity is a crucial issue in regression analysis, affecting the accuracy of estimators and hypothesis testing. Detecting multicollinearity involves examining factors like high R-squared values, low t-statistics, and correlations among independent variables. Ways to identify multicollinear

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