In this work we introduce group-equivariant self-attention models to address the problem of explainable radio galaxy classification in astronomy. We evaluate various orders of both cyclic and dihedral equivariance, and show that including equivariance as a prior both reduces the number of epochs required to fit the data and results in improved performance. We highlight the benefits of equivariance when using self-attention as an explainable model and illustrate how equivariant models statistically attend the same features in their classifications as human astronomers.
翻译:在这项工作中,我们引入了群体等同自我注意模型,以解决天文学中可解释的射电星系分类问题。我们评估了循环和偏差等同性的各种顺序,并表明将均匀性作为前两种方法,可以减少适应数据和提高性能所需的时代数目。我们强调在使用自相注意作为可解释模型时,均匀性的好处,并说明了在统计上,等同性模型如何在分类中与人类天文学家具有相同的特征。