Learning SMaLL Predictors

Garg, Vikas, Dekel, Ofer, Xiao, Lin

Neural Information Processing Systems 

We introduce a new framework for learning in severely resource-constrained settings. Our technique delicately amalgamates the representational richness of multiple linear predictors with the sparsity of Boolean relaxations, and thereby yields classifiers that are compact, interpretable, and accurate. We provide a rigorous formalism of the learning problem, and establish fast convergence of the ensuing algorithm via relaxation to a minimax saddle point objective.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found