SOTAVerified

Metric Learning

The goal of Metric Learning is to learn a representation function that maps objects into an embedded space. The distance in the embedded space should preserve the objects’ similarity — similar objects get close and dissimilar objects get far away. Various loss functions have been developed for Metric Learning. For example, the contrastive loss guides the objects from the same class to be mapped to the same point and those from different classes to be mapped to different points whose distances are larger than a margin. Triplet loss is also popular, which requires the distance between the anchor sample and the positive sample to be smaller than the distance between the anchor sample and the negative sample.

Source: Road Network Metric Learning for Estimated Time of Arrival

Papers

Showing 110 of 1648 papers

TitleStatusHype
Unsupervised Ground Metric Learning0
Are encoders able to learn landmarkers for warm-starting of Hyperparameter Optimization?0
Droid: A Resource Suite for AI-Generated Code Detection0
Grid-Reg: Grid-Based SAR and Optical Image Registration Across Platforms0
Dare to Plagiarize? Plagiarized Painting Recognition and Retrieval0
Multimodal Information Retrieval for Open World with Edit Distance Weak Supervision0
Offline Goal-Conditioned Reinforcement Learning with Projective Quasimetric Planning0
AbRank: A Benchmark Dataset and Metric-Learning Framework for Antibody-Antigen Affinity RankingCode1
Global Ground Metric Learning with Applications to scRNA dataCode0
Few-Shot Learning for Industrial Time Series: A Comparative Analysis Using the Example of Screw-Fastening Process Monitoring0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HAPPIERAverage-mAP43.8Unverified
2CSLAverage-mAP31Unverified