论文标题
各种成像网模型转移更好
Diverse Imagenet Models Transfer Better
论文作者
论文摘要
一个普遍接受的假设是,在其他下游任务上具有更高精度的模型在其他下游任务上的表现更好,从而导致大量研究致力于优化成像网的精度。最近,这一假设受到证据的挑战,表明自我监督模型的转移比其受监督的同行更好。这要求在成像网精度之上识别其他因素,以使模型可转移。在这项工作中,我们表明,模型学到的功能的高度多样性以成像网的准确性共同促进可传递性。在自我监督模型的最新可传递性结果的鼓励下,我们提出了一种结合了自我监管和监督预处理的方法,以生成具有高度多样性和高准确性的模型,并因此而产生高传递性。我们在几个架构和多个下游任务上展示了结果,包括单标签和多标签分类。
A commonly accepted hypothesis is that models with higher accuracy on Imagenet perform better on other downstream tasks, leading to much research dedicated to optimizing Imagenet accuracy. Recently this hypothesis has been challenged by evidence showing that self-supervised models transfer better than their supervised counterparts, despite their inferior Imagenet accuracy. This calls for identifying the additional factors, on top of Imagenet accuracy, that make models transferable. In this work we show that high diversity of the features learnt by the model promotes transferability jointly with Imagenet accuracy. Encouraged by the recent transferability results of self-supervised models, we propose a method that combines self-supervised and supervised pretraining to generate models with both high diversity and high accuracy, and as a result high transferability. We demonstrate our results on several architectures and multiple downstream tasks, including both single-label and multi-label classification.