Evaluating the quality of learned representations without relying on a downstream task remains one of the challenges in representation learning. In this work, we present Geometric Component Analysis (GeomCA) algorithm that evaluates representation spaces based on their geometric and topological properties. GeomCA can be applied to representations of any dimension, independently of the model that generated them. We demonstrate its applicability by analyzing representations obtained from a variety of scenarios, such as contrastive learning models, generative models and supervised learning models.
翻译:在这项工作中,我们提出几何组成部分分析算法,根据代表空间的几何和地貌特性来评价其代表空间。 GeomCA可以适用于任何层面的表述,独立于产生这些表达法的模型。我们通过分析从不同情景(例如对比式学习模式、基因模型和受监督的学习模式)获得的表述来证明其适用性。