Publication | Open Access
Sparse single-index model
54
Citations
32
References
2011
Year
Mathematical ProgrammingRandom PairDimension Reduction SchemeSparse Single-index ModelEngineeringInformation RetrievalHigh-dimensional MethodIndexing TechniqueSparse RepresentationStatistical InferenceDimensionality ReductionEstimation TheoryStatisticsSharp Oracle InequalityLow-rank ApproximationData Indexing
Let $(\bX, Y)$ be a random pair taking values in $\mathbb R^p \times \mathbb R$. In the so-called single-index model, one has $Y=f^{\star}(θ^{\star T}\bX)+\bW$, where $f^{\star}$ is an unknown univariate measurable function, $θ^{\star}$ is an unknown vector in $\mathbb R^d$, and $W$ denotes a random noise satisfying $\mathbb E[\bW|\bX]=0$. The single-index model is known to offer a flexible way to model a variety of high-dimensional real-world phenomena. However, despite its relative simplicity, this dimension reduction scheme is faced with severe complications as soon as the underlying dimension becomes larger than the number of observations ("$p$ larger than $n$" paradigm). To circumvent this difficulty, we consider the single-index model estimation problem from a sparsity perspective using a PAC-Bayesian approach. On the theoretical side, we offer a sharp oracle inequality, which is more powerful than the best known oracle inequalities for other common procedures of single-index recovery. The proposed method is implemented by means of the reversible jump Markov chain Monte Carlo technique and its performance is compared with that of standard procedures.
| Year | Citations | |
|---|---|---|
Page 1
Page 1