Learn Before
Concept
Perils of Multiple Regression
Below are some of the potential issues when adding variables to a regression model without a clear idea of the causal model -
- Multicollinearity
- Post-Treatment Bias
- Collider Bias
- How to recognize and prevent these confounding issues
0
1
Updated 2021-07-20
Tags
Bayesian Statistics
Multiple Linear Regression
Statistics
Data Science
Related
Statistical Golems
Plausibility
Posterior Distribution
Building a Bayesian Model
Correlation is not equal to causality
Gaussian Distribution
Linear Predictions
Perils of Multiple Regression
Sampling the Imaginary
Underfitting vs Overfitting
Entropy and Accuracy
Symmetry of Interactions
Continuous Interactions
Markov Chain Monte Carlo
Maximum Entropy Priors
GLM and Exponential Family
Rethink: Logit Link
Multiple Regression
Interaction Effect