A State-of-the-Art Generalist Embedding Model, Bridging the Gap Between Single and Multi-Vector Retrieval, and More!
Vol.54 for May 27 - Jun 02, 2024
Stay Ahead of the Curve with the Latest Advancements and Discoveries in Information Retrieval.
This week’s newsletter highlights the following research:
Graph Retrieval-Augmented Generation for Context-Aware Reasoning, from Emory University
Enabling Fine-Grained Ranking at Varying Granularities via Multi-Vector Embeddings, from Reddy et al.
Learning to Ask Clarification Questions for Ambiguous Retrieval Queries, from UC Berkeley
Principled and Practical Multi-Vector Retrieval with Approximation Guarantees, from Google Research
Towards User-Centric Recommendations via LLM-Based Simulation and Tool Learning, from USTC
Building Pseudo-Graph Databases from Raw Texts for Retrieval-Augmented Language Models, from Renmin University
Retrieval-Augmented Early Exiting for Efficient Large Language Model Inference, from Huang et al.
A State-of-the-Art Generalist Embedding Model, from NVIDIA
Enhancing Multilingual Language Model Training via Repeat Ranking, from Devine et al.
A Real-World Evaluation of HNSW for Vector Retrieval, from Marqo
Keep reading with a 7-day free trial
Subscribe to Top Information Retrieval Papers of the Week to keep reading this post and get 7 days of free access to the full post archives.