Publication | Open Access
Parallel Coordinate Descent for L1-Regularized Loss Minimization
216
Citations
3
References
2011
Year
Mathematical ProgrammingParallel Coordinate DescentMachine LearningCoordinate DescentEngineeringSparse Logistic RegressionData ScienceParallel ComputingRegularization (Mathematics)Approximation TheoryConvergence BoundsLarge Scale OptimizationInverse ProblemsComputer ScienceDeep LearningSparse RepresentationHigh-dimensional MethodParallel LearningParallel Programming
We propose Shotgun, a parallel coordinate descent algorithm for minimizing L1-regularized losses. Though coordinate descent seems inherently sequential, we prove convergence bounds for Shotgun which predict linear speedups, up to a problem-dependent limit. We present a comprehensive empirical study of Shotgun for Lasso and sparse logistic regression. Our theoretical predictions on the potential for parallelism closely match behavior on real data. Shotgun outperforms other published solvers on a range of large problems, proving to be one of the most scalable algorithms for L1.
| Year | Citations | |
|---|---|---|
Page 1
Page 1