Supervised Metric

Supervised metric learning focuses on developing algorithms that learn effective distance metrics for data, improving the performance of downstream tasks like classification and retrieval. Current research emphasizes improving the robustness and efficiency of these metrics, particularly in high-dimensional spaces and under conditions of limited labeled data, exploring techniques like contrastive learning, generative models, and adaptation strategies for few-shot learning. These advancements are significant because improved metrics lead to more accurate and efficient machine learning models across diverse applications, including image analysis, natural language processing, and A/B testing.

Papers