Causal inference has become a powerful tool to handle the out-of-distribution (OOD) generalization problem, which aims to extract the invariant features. However, conventional methods apply causal learners from multiple data splits, which may incur biased representation learning from imbalanced data distributions and difficulty in invariant feature learning from heterogeneous sources. To address these issues, this paper presents a balanced meta-causal learner (BMCL), which includes a balanced task generation module (BTG) and a meta-causal feature learning module (MCFL). Specifically, the BTG module learns to generate balanced subsets by a self-learned partitioning algorithm with constraints on the proportions of sample classes and contexts. The MCFL module trains a meta-learner adapted to different distributions. Experiments conducted on NICO++ dataset verified that BMCL effectively identifies the class-invariant visual regions for classification and may serve as a general framework to improve the performance of the state-of-the-art methods.
翻译:为了解决这些问题,本文件提出了一个平衡的元视场学习者(BMCL),其中包括一个平衡的任务生成模块(BTG)和一个平衡的任务生成模块(MCFL),具体地说,BTG模块学会通过对样本类别和背景比例有限制的自学分配算法生成平衡子集。MCFL模块培训一个适应不同分布的元中继器。在NICO++数据集上进行的实验证实,BMCL有效地确定了分类的类别变量视觉区域,并可作为改进最新方法绩效的一般框架。