We present the design and baseline results for a new challenge in the ChaLearn meta-learning series, accepted at NeurIPS'22, focusing on "cross-domain" meta-learning. Meta-learning aims to leverage experience gained from previous tasks to solve new tasks efficiently (i.e., with better performance, little training data, and/or modest computational resources). While previous challenges in the series focused on within-domain few-shot learning problems, with the aim of learning efficiently N-way k-shot tasks (i.e., N class classification problems with k training examples), this competition challenges the participants to solve "any-way" and "any-shot" problems drawn from various domains (healthcare, ecology, biology, manufacturing, and others), chosen for their humanitarian and societal impact. To that end, we created Meta-Album, a meta-dataset of 40 image classification datasets from 10 domains, from which we carve out tasks with any number of "ways" (within the range 2-20) and any number of "shots" (within the range 1-20). The competition is with code submission, fully blind-tested on the CodaLab challenge platform. The code of the winners will be open-sourced, enabling the deployment of automated machine learning solutions for few-shot image classification across several domains.
翻译:我们展示了ChaLearn Men-learning系列的设计和基线结果,这是NeurIPS'22所接受的新挑战,重点是“跨领域”的元学习。元学习的目的是利用从以往任务中获得的经验,高效率地解决新任务(即业绩更好、培训数据少和(或)计算资源不多 ) 。 虽然以前系列中的挑战侧重于内部少见的学习问题,目的是有效地学习Nway k-shot任务(即N类分类问题,使用K培训实例 ),但这种竞争挑战要求参与者解决从各个领域(保健、生态、生物、制造业等)中挑选的“任何途径”和“任何镜头”问题,以便有效地解决其人道主义和社会影响。为此,我们创建了Meta-Album的元数据集,由10个领域的40个图像分类数据集组成,我们从中分离出任何数量的“路径”(范围为2-20)和任何数目的“图片”(范围为K-120), 竞争是代码的提交,在数个自动版本中,将充分测试数个自动版本。