Random effects model

In statistics, a random effects model, also called a variance components model, is a statistical model where the model parameters are random variables. It is a kind of hierarchical linear model, which assumes that the data being analysed are drawn from a hierarchy of different populations whose differences relate to that hierarchy. In econometrics, random effects models are used in the analysis of hierarchical or panel data when one assumes no fixed effects (it allows for individual effects). The random effects model is a special case of the fixed effects model.

Contrast this to the biostatistics definitions[1][2][3][4], as biostatisticians use "fixed" and "random" effects to respectively refer to the population-average and subject-specific effects (and where the latter are generally assumed to be unknown, latent variables).

Qualitative description

Random effect models assist in controlling for unobserved heterogeneity when the heterogeneity is constant over time and not correlated with independent variables. This constant can be removed from the data through differencing, for example by taking a first difference which will remove any time invariant components of the model.

Two common assumptions are made about the individual specific effect: the random effects assumption and the fixed effects assumption. The random effects assumption is that the individual specific effects are uncorrelated with the independent variables. The fixed effect assumption is that the individual specific effect is correlated with the independent variables. If the random effects assumption holds, the random effects model is more efficient than the fixed effects model. However, if this assumption does not hold, the random effects model is not consistent.

Simple example

Suppose m large elementary schools are chosen randomly from among thousands in a large country. Suppose also that n pupils of the same age are chosen randomly at each selected school. Their scores on a standard aptitude test are ascertained. Let Yij be the score of the jth pupil at the ith school. A simple way to model the relationships of these quantities is

where μ is the average test score for the entire population. In this model Ui is the school-specific random effect: it measures the difference between the average score at school i and the average score in the entire country. The term Wij is the individual-specific random effect, i.e., it's the deviation of the j-th pupil’s score from the average for the i-th school.

The model can be augmented by including additional explanatory variables, which would capture differences in scores among different groups. For example:

where Sexij is the dummy variable for boys/girls, Raceij is the dummy variable for white/black pupils, and ParentsEducij records, say, the average education level of a child’s parents. This is a mixed model, not a purely random effects model, as it introduces fixed-effects terms for Sex, Race, and Parents' Education.

Variance components

The variance of Yij is the sum of the variances τ2 and σ2 of Ui and Wij respectively.

Let

be the average, not of all scores at the ith school, but of those at the ith school that are included in the random sample. Let

be the grand average.

Let

be respectively the sum of squares due to differences within groups and the sum of squares due to difference between groups. Then it can be shown that

and

These "expected mean squares" can be used as the basis for estimation of the "variance components" σ2 and τ2.

Unbiasedness

In general, random effects are efficient, and should be used (over fixed effects) if the assumptions underlying them are believed to be satisfied. For random effects to work in the school example it is necessary that the school-specific effects be uncorrelated to the other covariates of the model. This can be tested by running fixed effects, then random effects, and doing a Hausman specification test. If the test rejects, then random effects is biased and fixed effects is the correct estimation procedure.

See also

Notes

  1. Diggle, Peter J.; Heagerty, Patrick; Liang, Kung-Yee; Zeger, Scott L. (2002). Analysis of Longitudinal Data (2nd ed.). Oxford University Press. pp. 169–171. ISBN 0-19-852484-6.
  2. Fitzmaurice, Garrett M.; Laird, Nan M.; Ware, James H. (2004). Applied Longitudinal Analysis. Hoboken: John Wiley & Sons. pp. 326–328. ISBN 0-471-21487-6.
  3. Laird, Nan M.; Ware, James H. (1982). "Random-Effects Models for Longitudinal Data". Biometrics. 38 (4): 963–974. JSTOR 2529876.
  4. Gardiner, Joseph C.; Luo, Zhehui; Roman, Lee Anne (2009). "Fixed effects, random effects and GEE: What are the differences?". Statistics in Medicine. 28: 221–239. doi:10.1002/sim.3478.

Further reading

  • Christensen, Ronald (2002). Plane Answers to Complex Questions: The Theory of Linear Models (Third ed.). New York: Springer. ISBN 0-387-95361-2.
  • Gujarati, Damodar N.; Porter, Dawn C. (2009). "Panel Data Regression Models". Basic Econometrics (Fifth international ed.). Boston: McGraw-Hill. pp. 591–616. ISBN 978-007-127625-2.
  • Hsiao, Cheng (2003). Analysis of Panel Data (Second ed.). New York: Cambridge University Press. pp. 73–92. ISBN 0-521-52271-4.
  • Wooldridge, Jeffrey M. (2013). "Random Effects Estimation". Introductory Econometrics: A Modern Approach (Fifth international ed.). Mason, OH: South-Western. pp. 474–478. ISBN 978-1-111-53439-4.
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