heteroskedastia
Heteroskedasticity refers to a property of a regression model in which the variance of the error term, or the dependent variable, is not constant across observations. The term is most often used in econometrics and statistics; common spellings include heteroskedasticity and heteroscedasticity. Heteroskedastia is a less common variant and may represent a misspelling.
Causes of heteroskedasticity include nonlinearity, omitted variables, model misspecification, or data composition issues such as mixtures
Consequences are most significant for inference. Ordinary least squares estimates of coefficients can remain unbiased and
Detection involves both graphical and formal approaches. Residual plots can reveal patterns of increasing or decreasing
Remedies focus on robust inference and appropriate modeling. Using heteroskedasticity-robust standard errors (such as White’s or