Debugging and Explaining Metric Learning Approaches: An Influence Function Based Perspective

Neural Information Processing Systems 

Deep metric learning (DML) learns a generalizable embedding space where the representations of semantically similar samples are closer. Despite achieving good performance, the state-of-the-art models still suffer from the generalization errors such as farther similar samples and closer dissimilar samples in the space.