157 research outputs found
SelfieBoost: A Boosting Algorithm for Deep Learning
We describe and analyze a new boosting algorithm for deep learning called
SelfieBoost. Unlike other boosting algorithms, like AdaBoost, which construct
ensembles of classifiers, SelfieBoost boosts the accuracy of a single network.
We prove a convergence rate for SelfieBoost under some "SGD
success" assumption which seems to hold in practice
Accelerated Proximal Stochastic Dual Coordinate Ascent for Regularized Loss Minimization
We introduce a proximal version of the stochastic dual coordinate ascent
method and show how to accelerate the method using an inner-outer iteration
procedure. We analyze the runtime of the framework and obtain rates that
improve state-of-the-art results for various key machine learning optimization
problems including SVM, logistic regression, ridge regression, Lasso, and
multiclass SVM. Experiments validate our theoretical findings
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