Deep structured energy based models for anomaly detection
Shuangfei Zhai, Yu Cheng, et al.
ICML 2016
We propose an algorithm-independent framework to equip existing optimization methods with primal-dual certificates. Such certificates and corresponding rate of convergence guarantees are important for practitioners to diagnose progress, in particular in machine learning applications. We obtain new primal-dual convergence rates, e.g., for the Lasso as well as many L, Elastic Net, group Lasso and TV-regularized problems. The theory applies to any norm-regularized generalized linear model. Our approach provides efficiently computable duality gaps which are globally defined, without modifying the original problems in the region of interest.
Shuangfei Zhai, Yu Cheng, et al.
ICML 2016
Kubilay Atasu, Thomas Parnell, et al.
ICPP 2017
Lam Nguyen, Katya Scheinberg, et al.
Optimization Methods and Software
Kubilay Atasu, Thomas Parnell, et al.
Big Data 2017