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Sparse Additive Models

About

We present a new class of methods for high-dimensional nonparametric regression and classification called sparse additive models (SpAM). Our methods combine ideas from sparse linear modeling and additive nonparametric regression. We derive an algorithm for fitting the models that is practical and effective even when the number of covariates is larger than the sample size. SpAM is closely related to the COSSO model of Lin and Zhang (2006), but decouples smoothing and sparsity, enabling the use of arbitrary nonparametric smoothers. An analysis of the theoretical properties of SpAM is given. We also study a greedy estimator that is a nonparametric version of forward stepwise regression. Empirical results on synthetic and real data are presented, showing that SpAM can be effective in fitting sparse nonparametric models in high dimensional data.

Pradeep Ravikumar, John Lafferty, Han Liu, Larry Wasserman• 2007

Related benchmarks

TaskDatasetResultRank
RegressionCA Housing
RMSE0.821
54
RegressionWine
RMSE0.771
21
RegressionDiabetes dataset--
17
RegressionSynthetic Simulation Case 6
RMSE0.6
16
RegressionSynthetic Simulation Case 5
RMSE3.45
16
RegressionSimulation Case 1
RMSE5.84
14
RegressionBike Sharing
RMSE1.484
13
RegressionChip
RMSE0.753
9
RegressionSynthetic Simulation Case 3
RMSE3.55
8
RegressionSynthetic Simulation Case 2
RMSE3.22
8
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