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BSWG Seminar, Raleigh, NC BSWG Seminar, Raleigh, NC Overview Prior Distributions for the Variable Selection Problem • The Variable Selection Problem(VSP) • A Bayesian Framework Sujit K Ghosh • Choice of Prior Distributions Department of Statistics North Carolina State University • Illustrative Examples • Conclusions http://www.stat.ncsu.edu/∼ghosh/ Email: [email protected] Bayesian Statistics Working Group, NCSU Disclaimer: This talk is not entirely based on my own research work Sujit Ghosh, October 3, 2006 1 BSWG Seminar, Raleigh, NC Sujit Ghosh, October 3, 2006 2 BSWG Seminar, Raleigh, NC Suppose the true data generating process (DGP) is given by The Variable Selection Problem y = X 0 β 0 + , Consider the following canonical linear model: y = Xβ + (1) where β 0 = (β10 , . . . , βp00 )T , X 0 is n × p0 and WLOG assume that X = (X 0 | X 1 )T and p ≥ p0 ≥ 1 (i.e., X 1 is n × (p − p0 )) The LSE of β and σ 2 are given by where ∼ Nn (0, σ 2 I) and β = (β1 , . . . , βp )T (X is an n × p matrix) β̂ ˆ σ2 • Under the above model, suppose also that only an unknown subset of the coefficients βj ’s are nonzero = = (X T X)− X T y (3) T y (I − P X )y/(n − r) • The problem of variable selection is to identify this unknown subset. where r =rank(X) ≤ min(n, p), P X = X T (X T X)− X T is the projection matrix and (X T X)− is a g-inverse of X T X. Then • Notice that the above canonical framework can be used to address many other problems of interest including multivariate polynomial regression and nonparametric function estimation Lemma: E[β̂] = ((X T0 X 0 )− X T0 X 0 β 0 , 0)T and E[X β̂] = X 0 β 0 . Further, E[σˆ2 ] = σ 2 for any g-inverse of X T X. Sujit Ghosh, October 3, 2006 (2) In particular, if rank(X 0 ) = p0 , then E[β̂] = (β 0 , 0)T . 3 Sujit Ghosh, October 3, 2006 4