A Variance Controlled Stochastic Method with Biased Estimation for Faster Non-convex Optimization

MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2021: RESEARCH TRACK, PT III(2021)

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摘要
This paper proposed a new technique Variance Controlled Stochastic Gradient (VCSG) to improve the performance of the stochastic variance reduced gradient (SVRG) algorithm. To avoid over-reducing the variance of gradient by SVRG, a hyper-parameter lambda is introduced in VCSG that is able to control the reduced variance of SVRG. Theory shows that the optimization method can converge by using an unbiased gradient estimator, but in practice, biased gradient estimation can allow more efficient convergence to the vicinity since an unbiased approach is computationally more expensive. lambda also has the effect of balancing the trade-off between unbiased and biased estimations. Secondly, to minimize the number of full gradient calculations in SVRG, a variance-bounded batch is introduced to reduce the number of gradient calculations required in each iteration. For smooth non-convex functions, the proposed algorithm converges to an approximate first-order stationary point (i.e. E parallel to del f(x)parallel to(2) <= epsilon) within O(min{1/epsilon(3/2), n(1/4)/epsilon}) number of stochastic gradient evaluations, which improves the leading gradient complexity of stochastic gradient-based method SCSG (O(min{1/epsilon(5/3), n(2/3)/epsilon}) [19]. It is shown theoretically and experimentally that VCSG can be deployed to improve convergence.
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关键词
Non-convex optimization, Deep learning, Computational complexity
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