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March 3, 2026
Stochastic conjugate gradient algorithm with an inertial extrapolation step for nonconvex optimization in machine learning
YW
Yijia Wang
CO
Chen Ouyang
BH
Beisai Hu
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Puntos clave
The study reveals improvements in convergence rates of stochastic gradient methods for nonconvex optimization.
Key metrics show a notable reduction in computation time by up to 30%.
The approach employs an inertial extrapolation step to enhance traditional stochastic gradient algorithms.
These findings highlight the effectiveness of combining inertial methods with machine learning applications.
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Cite This Study
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Wang et al. (Tue,) studied this question.
synapsesocial.com/papers/69a75ffbc6e9836116a2c5db
https://doi.org/https://doi.org/10.1007/s12190-026-02767-2
Stochastic conjugate gradient algorithm with an inertial extrapolation step for nonconvex optimization in machine learning | Synapse