Efficient and Accurate Lp-norm Multiple Kernel Learning
Source:
NIPS (2009)
Abstract:
Learning linear combinations of multiple kernels is an appealing strategy when the right choice of features is unknown. Previous
approaches to multiple kernel learning (MKL) promote sparse kernel combinations to support interpretability. Unfortunately,
L1-norm MKL is hardly observed to outperform trivial baselines
in practical applications. To allow for robust kernel mixtures, we generalize MKL to arbitrary Lp-norms. We devise new insights on the connection between
several existing MKL formulations and develop two efficient interleaved optimization strategies for arbitrary
p>1. Empirically, we demonstrate that the interleaved optimization
strategies are much faster compared to the traditionally used wrapper
approaches. Finally, we apply Lp-norm MKL to real-world problems from computational
biology, showing that non-sparse MKL achieves accuracies that go beyond the state-of-the-art.