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Sparse Additive Gaussian Process with Soft Interactions 被引量:1

Sparse Additive Gaussian Process with Soft Interactions
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摘要 This paper presents a novel variable selection method in additive nonparametric regression model. This work is motivated by the need to select the number of nonparametric components and number of variables within each nonparametric component. The proposed method uses a combination of hard and soft shrinkages to separately control the number of additive components and the variables within each component. An efficient algorithm is developed to select the importance of variables and estimate the interaction network. Excellent performance is obtained in simulated and real data examples. This paper presents a novel variable selection method in additive nonparametric regression model. This work is motivated by the need to select the number of nonparametric components and number of variables within each nonparametric component. The proposed method uses a combination of hard and soft shrinkages to separately control the number of additive components and the variables within each component. An efficient algorithm is developed to select the importance of variables and estimate the interaction network. Excellent performance is obtained in simulated and real data examples.
出处 《Open Journal of Statistics》 2017年第4期567-588,共22页 统计学期刊(英文)
关键词 ADDITIVE GAUSSIAN Process Interaction Lasso SPARSITY Variable Selection Additive Gaussian Process Interaction Lasso Sparsity Variable Selection
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