State of the Art Retrieval

State-of-the-art retrieval focuses on efficiently finding relevant information from massive datasets, improving upon traditional methods like BM25. Current research emphasizes developing learned similarity functions, often using neural network architectures like bi-encoders and cross-encoders, and incorporating techniques like contrastive learning and policy gradient training to optimize retrieval performance for various downstream tasks. This field is crucial for advancing applications ranging from search engines and recommendation systems to question answering and knowledge-intensive language tasks, driving improvements in both accuracy and efficiency.

Papers