01-06【陈 尧】管楼1418 国家数学与交叉科学中心合肥分中心报告会

发布者:万宏艳发布时间:2020-01-06浏览次数:647

报告题目: Nonlinear Variable Selection via Deep Neural Networks   

报告人:陈尧 普度大学

报告时间:1月69:00-10:00

报告地点:1418

摘要:

This paper presents a general framework for high-dimensional nonlinear variable selection using deep neural networks under the framework of supervised learning. The network architecture includes both a selection layer and approximation layers. The problem can be cast as a sparsity-constrained optimization with a sparse parameter in the selection layer and other parameters in the approximation layers. This problem is challenging due to the sparse constraint and the nonconvex optimization. We propose a novel algorithm, called Deep Feature Selection, to estimate both the sparse parameter and the other parameters. Theoretically, we establish the algorithm convergence and the selection consistency when the objective function has a Generalized Stable Restricted Hessian. This result provides theoretical justifications of our method and generalizes known results for high-dimensional linear variable selection. Simulations and real data analysis are conducted to demonstrate the superior performance of our method.