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Adaptive Group Lasso Neural Network Models for Functions of Few Variables and Time-Dependent Data

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In this paper, we propose an adaptive group Lasso deep neural network for high-dimensional function approximation where input data are generated from a dynamical system and the target function depends on few active variables or few linear combinations of variables. We approximate the target function by a deep neural network and enforce an adaptive group Lasso constraint to the weights of a suitable hidden layer in order to represent the constraint on the target function. We utilize the proximal algorithm to optimize the penalized loss function. Using the non-negative property of the Bregman distance, we prove that the proposed optimization procedure achieves loss decay. Our empirical studies show that the proposed method outperforms recent state-of-the-art methods including the sparse dictionary matrix method, neural networks with or without group Lasso penalty.

Lam Si Tung Ho, Nicholas Richardson, Giang Tran• 2021

Related benchmarks

TaskDatasetResultRank
ClassificationHE
Accuracy38.6
66
ClassificationGE
Accuracy59.4
65
ClassificationHI
Accuracy0.81
59
ClassificationOT
Accuracy80.6
57
ClassificationJA
Accuracy71.8
48
ClassificationAL
Accuracy96.1
43
ClassificationAL
Accuracy95.8
43
ClassificationEY
Accuracy57.8
43
ClassificationEY
Accuracy63.7
18
ClassificationEY corrupted features
Accuracy58.8
14
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