CLAPNQ: Cohesive Long-form Answers From Passages In Natural Questions For RAG Systems · The Large Language Model Bible Contribute to LLM-Bible

CLAPNQ: Cohesive Long-form Answers From Passages In Natural Questions For RAG Systems

Rosenthal Sara, Sil Avirup, Florian Radu, Roukos Salim. Arxiv 2024

[Paper] [Code]    
Applications Has Code RAG Reinforcement Learning

Retrieval Augmented Generation (RAG) has become a popular application for large language models. It is preferable that successful RAG systems provide accurate answers that are supported by being grounded in a passage without any hallucinations. While considerable work is required for building a full RAG pipeline, being able to benchmark performance is also necessary. We present ClapNQ, a benchmark Long-form Question Answering dataset for the full RAG pipeline. ClapNQ includes long answers with grounded gold passages from Natural Questions (NQ) and a corpus to perform either retrieval, generation, or the full RAG pipeline. The ClapNQ answers are concise, 3x smaller than the full passage, and cohesive, with multiple pieces of the passage that are not contiguous. RAG models must adapt to these properties to be successful at ClapNQ. We present baseline experiments and analysis for ClapNQ that highlight areas where there is still significant room for improvement in grounded RAG. CLAPNQ is publicly available at https://github.com/primeqa/clapnq

Similar Work