Catching Image Retrieval Generalization
Zhdanov, Maksim, Karpukhin, Ivan
–arXiv.org Artificial Intelligence
The concepts of overfitting and generalization are vital for evaluating machine learning models. In this work, we show that the popular Recall@K metric depends on the number of classes in the dataset, which limits its ability to estimate generalization. To fix this issue, we propose a new metric, which measures retrieval performance, and, unlike Recall@K, estimates generalization. We apply the proposed metric to popular image retrieval methods and provide new insights about deep metric learning generalization.
arXiv.org Artificial Intelligence
Jun-23-2023
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