Adaptive Group Lasso Neural Network Models for Functions of Few Variables and Time-Dependent Data
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Classification | HE | Accuracy38.6 | 66 | |
| Classification | GE | Accuracy59.4 | 65 | |
| Classification | HI | Accuracy0.81 | 59 | |
| Classification | OT | Accuracy80.6 | 57 | |
| Classification | JA | Accuracy71.8 | 48 | |
| Classification | AL | Accuracy96.1 | 43 | |
| Classification | AL | Accuracy95.8 | 43 | |
| Classification | EY | Accuracy57.8 | 43 | |
| Classification | EY | Accuracy63.7 | 18 | |
| Classification | EY corrupted features | Accuracy58.8 | 14 |