
How should outliers be dealt with in linear regression analysis?
Often times a statistical analyst is handed a set dataset and asked to fit a model using a technique such as linear regression. Very frequently the dataset is accompanied with a disclaimer similar...
What happens when we introduce more variables to a linear …
Feb 22, 2020 · What happens when we introduce more variables to a linear regression model? Ask Question Asked 5 years, 8 months ago Modified 4 years, 6 months ago
Linear regression, conditional expectations and expected values
Jun 25, 2016 · In the probability model underlying linear regression, X and Y are random variables. if so, as an example, if Y = obesity and X = age, if we take the conditional …
Assumptions of linear models and what to do if the residuals are …
For your first question, I don't think that a linear regression model assumes that your dependent and independent variables have to be normal. However, there is an assumption about the …
regression - Interpreting the residuals vs. fitted values plot for ...
Therefore, the second and third plots, which seem to indicate dependency between the residuals and the fitted values, suggest a different model. But why does the second plot suggest, as …
regression - When is R squared negative? - Cross Validated
For simple OLS regression with one predictor, this is equivalent to the squared correlation between the predictor and the dependent variable -- again, this must be non-negative.
regression - Why does adding more terms into a linear model …
Jan 12, 2015 · Many statistics textbooks state that adding more terms into a linear model always reduces the sum of squares and in turn increases the r-squared value. This has led to the use …
regression - Why are "Linear" Models so Important? - Cross …
Sep 17, 2022 · GLMs are linear in parameters, that's why “linear”. See also Distinction between linear and nonlinear model and Why is polynomial regression considered a special case of …
In linear regression, when is it appropriate to use the log of an ...
Aug 24, 2021 · Taking logarithms allows these models to be estimated by linear regression. Good examples of this include the Cobb-Douglas production function in economics and the Mincer …
What is the effect of having correlated predictors in a multiple ...
68 I learned in my linear models class that if two predictors are correlated and both are included in a model, one will be insignificant. For example, assume the size of a house and the number of …