Publication | Open Access
Lookahead Optimizer: k steps forward, 1 step back
381
Citations
36
References
2019
Year
Mathematical ProgrammingStructured PredictionLarge-scale Global OptimizationEngineeringMachine LearningLookahead OptimizerData ScienceSparse Neural NetworkPenn TreebankRobot LearningApproximation TheoryMachine TranslationDefault Hyperparameter SettingsMachine Learning ModelComputer ScienceDeep LearningNeural Architecture SearchAdaptive OptimizationModel OptimizationOptimization ProblemStochastic Gradient Descent
The vast majority of successful deep neural networks are trained using variants of stochastic gradient descent (SGD) algorithms. Recent attempts to improve SGD can be broadly categorized into two approaches: (1) adaptive learning rate schemes, such as AdaGrad and Adam, and (2) accelerated schemes, such as heavy-ball and Nesterov momentum. In this paper, we propose a new optimization algorithm, Lookahead, that is orthogonal to these previous approaches and iteratively updates two sets of weights. Intuitively, the algorithm chooses a search direction by looking ahead at the sequence of fast weights generated by another optimizer. We show that Lookahead improves the learning stability and lowers the variance of its inner optimizer with negligible computation and memory cost. We empirically demonstrate Lookahead can significantly improve the performance of SGD and Adam, even with their default hyperparameter settings on ImageNet, CIFAR-10/100, neural machine translation, and Penn Treebank.
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