On Learning High Dimensional Structured Single Index Models

Authors

  • Ravi Ganti Walmart Labs
  • Nikhil Rao Technicolor Research and Innovation
  • Laura Balzano University of Michigan-Ann Arbor
  • Rebecca Willett University of Wisconsin-Madison
  • Robert Nowak University of Wisconsin-Madison

DOI:

https://doi.org/10.1609/aaai.v31i1.10835

Keywords:

high dimensional statistics, single index models, prediction

Abstract

Single Index Models (SIMs) are simple yet flexible semi-parametric models for machine learning, where the response variable is modeled as a monotonic function of a linear combination of features. Estimation in this context requires learning both the feature weights and the nonlinear function that relates features to observations. While methods have been described to learn SIMs in the low dimensional regime, a method that can efficiently learn SIMs in high dimensions, and under general structural assumptions, has not been forthcoming. In this paper, we propose computationally efficient algorithms for SIM inference in high dimensions with structural constraints. Our general approach specializes to sparsity, group sparsity, and low-rank assumptions among others. Experiments show that the proposed method enjoys superior predictive performance when compared to generalized linear models, and achieves results comparable to or better than single layer feedforward neural networks with significantly less computational cost.

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Published

2017-02-13

How to Cite

Ganti, R., Rao, N., Balzano, L., Willett, R., & Nowak, R. (2017). On Learning High Dimensional Structured Single Index Models. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.10835