Scalable Nonlinear Learning with Adaptive Polynomial Expansions
- Alekh Agarwal ,
- Alina Beygelzimer ,
- John Langford ,
- Daniel Hsu ,
- Matus Telgarsky
Advances in Neural Information Processing Systems 27 (NIPS 2014) |
Can we effectively learn a nonlinear representation in time comparable to linear learning? We describe a new algorithm that explicitly and adaptively expands higher-order interaction features over base linear representations. The algorithm is designed for extreme computational efficiency, and an extensive experimental study shows that its computation/prediction tradeoff ability compares very favorably against strong baselines.