Learning Symmetrization for Equivariance with Orbit Distance Minimization

Nguyen, Tien Dat, Kim, Jinwoo, Yang, Hongseok, Hong, Seunghoon
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Abstract

We present a general framework for symmetrizing an arbitrary neural-network architecture and making it equivariant with respect to a given group. We build upon the proposals of Kim et al. (2023); Kaba et al. (2023) for symmetrization, and improve them by replacing their conversion of neural features into group representations, with an optimization whose loss intuitively measures the distance between group orbits. This change makes our approach applicable to a broader range of matrix groups, such as the Lorentz group O(1, 3), than these two proposals. We experimentally show our method's competitiveness on the SO(2) image classification task, and also its increased generality on the task with O(1, 3). Our implementation will be made accessible at https://github.com/tiendatnguyen-vision/Orbit-symmetrize.
基于轨道距离最小化的等距对称学习
我们提出了对称任意神经网络结构并使其对给定群等价的一般框架。我们以Kim等人(2023)的建议为基础;Kaba等人(2023)的对称性,并通过将神经特征转换为组表示来改进它们,优化的损失直观地测量了组轨道之间的距离。这一变化使我们的方法适用于更广泛的矩阵群,如洛伦兹群O(1,3),而不是这两个建议。我们通过实验证明了我们的方法在SO(2)图像分类任务上的竞争力,以及它在O(1,3)任务上的通用性。我们的实现将在https://github.com/tiendatnguyen-vision/Orbit-symmetrize上提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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