Title of article :
Transductive versions of the LASSO and the Dantzig Selector
Author/Authors :
Alquier، نويسنده , , Pierre and Hebiri، نويسنده , , Mohamed، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
16
From page :
2485
To page :
2500
Abstract :
Transductive methods are useful in prediction problems when the training dataset is composed of a large number of unlabeled observations and a smaller number of labeled observations. In this paper, we propose an approach for developing transductive prediction procedures that are able to take advantage of the sparsity in the high dimensional linear regression. More precisely, we define transductive versions of the LASSO (Tibshirani, 1996) and the Dantzig Selector (Candès and Tao, 2007). These procedures combine labeled and unlabeled observations of the training dataset to produce a prediction for the unlabeled observations. We propose an experimental study of the transductive estimators that shows that they improve the LASSO and Dantzig Selector in many situations, and particularly in high dimensional problems when the predictors are correlated. We then provide non-asymptotic theoretical guarantees for these estimation methods. Interestingly, our theoretical results show that the Transductive LASSO and Dantzig Selector satisfy sparsity inequalities under weaker assumptions than those required for the “original” LASSO.
Keywords :
Lasso , High-dimensional data , High-dimensional regression estimation , sparsity , variable selection , Transduction
Journal title :
Journal of Statistical Planning and Inference
Serial Year :
2012
Journal title :
Journal of Statistical Planning and Inference
Record number :
2222059
Link To Document :
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