Deep learning is increasingly moving towards a transfer learning paradigm whereby large foundation models are fine-tuned on downstream tasks, starting from an initialization learned on the source task. But an initialization contains relatively little information about the source task. Instead, we show that we can learn highly informative posteriors from the source task, through supervised or self-supervised approaches, which then serve as the basis for priors that modify the whole loss surface on the downstream task. This simple modular approach enables significant performance gains and more data-efficient learning on a variety of downstream classification and segmentation tasks, serving as a drop-in replacement for standard pre-training strategies. These highly informative priors also can be saved for future use, similar to pre-trained weights, and stand in contrast to the zero-mean isotropic uninformative priors that are typically used in Bayesian deep learning.
翻译:深层学习正在逐渐走向一种转移学习模式,即大型基础模型从来源任务初始化开始,对下游任务进行微调,从启动开始开始。但是初始化对源任务的信息相对较少。相反,我们表明,我们可以通过监督或自我监督的方法,从源任务中学习高度信息化的后遗症,然后作为改变下游任务整体损失表面的前科的基础。这种简单的模块化方法可以使下游分类和分层任务取得显著的业绩收益和数据效率更高的学习,成为标准培训前战略的中继替代。这些高度信息化的前遗症也可以保存下来供今后使用,类似于预先培训的重量,并与贝耶斯深层学习通常使用的零平均值非信息化前奏形成对照。