Feb. 5, 2024, 3:42 p.m. | Hilal AlQuabeh William de Vazelhes Bin Gu

cs.LG updates on arXiv.org arxiv.org

Pairwise learning, an important domain within machine learning, addresses loss functions defined on pairs of training examples, including those in metric learning and AUC maximization. Acknowledging the quadratic growth in computation complexity accompanying pairwise loss as the sample size grows, researchers have turned to online gradient descent (OGD) methods for enhanced scalability. Recently, an OGD algorithm emerged, employing gradient computation involving prior and most recent examples, a step that effectively reduces algorithmic complexity to $O(T)$, with $T$ being the number …

auc complexity computation cs.lg domain dynamic examples functions gradient growth loss machine machine learning memory researchers sample training

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