Feb. 5, 2024, 6:42 a.m. | Yichuan Deng Zhao Song Chiwun Yang

cs.LG updates on arXiv.org arxiv.org

Based on SGD, previous works have proposed many algorithms that have improved convergence speed and generalization in stochastic optimization, such as SGDm, AdaGrad, Adam, etc. However, their convergence analysis under non-convex conditions is challenging. In this work, we propose a unified framework to address this issue. For any first-order methods, we interpret the updated direction $g_t$ as the sum of the stochastic subgradient $\nabla f_t(x_t)$ and an additional acceleration term $\frac{2|\langle v_t, \nabla f_t(x_t) \rangle|}{\|v_t\|_2^2} v_t$, thus we can discuss …

adam algorithms analysis convergence cs.ai cs.lg etc faster framework gradient issue math.oc novel optimization speed stochastic work

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