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Bayesian Factor Regression Models in the

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Title: Bayesian Factor Regression Models in the Large p, Small n Paradigm Mike West, Duke University Author: John Last modified by: John Created Date – PowerPoint PPT presentation

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Title: Bayesian Factor Regression Models in the


1
Bayesian Factor Regression Models in the Large
p, Small n ParadigmMike West, Duke University
  • Presented by John Paisley
  • Duke University

2
Outline
  • Empirical Factor Regression (SVD)
  • Latent Factor Regression
  • Sparse Factor Regression

3
Linear Regression Empirical Factor Regression
  • Linear Regression
  • SVD Regression

D is a diagonal matrix of singular values
4
Empirical Factor Regression
  • By definition,
  • Regression is now done in factor space using
    generalized shrinkage (ridge regression) priors
    on , e.g. RVM
  • Problem of inversion has many-to-one mapping
  • is canonical least-norm inverse

5
Example Biscuit Dough Data
  • NIR spectroscopy reflectance values are
    predictors
  • Response is fat content of dough samples
  • 39 training, 39 testing data are pooled and
    testing data responses treated as missing values
    to be imputed
  • Top 16 factors used, based on size of singular
    values

6
Example Biscuit Dough Data (2)
  • Left Fitted and predicted vs true values
  • Right Least-norm inverse of beta
  • 1700 nm range is absorbance region for fat
  • As can be seen, solution is not sparse

7
Latent Factor Regression
  • Loosen to
  • Under proper constraints on B, this finds common
    structure in X and isolates idiosyncrasies to
    noise
  • Now, variation in X has less effect on y
  • The implied prior is ?
  • When variance, Phi ? 0,
  • this reverts to empirical
  • linear regression

8
Sparse Latent Factor Regression
  • WRT gene expression profiling, multiple
    biological factors underlie patterns of gene
    expression variation, so latent factor approaches
    are natural we imagine that latent factors
    reflect individual biological functions This is
    a motivating context for sparse models.
  • Columns of B represents the genes involved in a
    particular biological factor.
  • Rows of B represent a particular genes
    involvement across biological factors.

9
Example Gene Expression Data
  • p 6128 genes measured using Affymetrix DNA
    microarrays
  • n 49 breast cancer tumor samples
  • k 25 factors
  • Factor 3 separates by
  • red estrogen receptor
  • positive tumors
  • blue ER negative

10
Example Gene Expression Data
  • Comparison with results obtained using empirical
    SVD factors

11
Conclusion
  • Sparse factor regression modeling is a promising
    framework for dimensionality reduction of
    predictors.
  • Only those factors that are relevant (e.g. factor
    3) are of interest. Therefore, only those genes
    with non-zero values in that column of B are
    meaningful.
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