CLAIIRLGJan 18, 2024

ChatQA: Surpassing GPT-4 on Conversational QA and RAG

arXiv:2401.10225v5105 citationsHas CodeNIPS
Originality Highly original
AI Analysis

This work addresses the problem of enhancing conversational AI and RAG performance for researchers and developers, offering an open-source alternative to proprietary models like GPT-4.

The authors tackled improving conversational question answering and retrieval-augmented generation by introducing ChatQA, a suite of models that outperform GPT-4 on benchmarks, with their Llama3-based model achieving a 4.4% accuracy improvement over GPT-4-Turbo.

In this work, we introduce ChatQA, a suite of models that outperform GPT-4 on retrieval-augmented generation (RAG) and conversational question answering (QA). To enhance generation, we propose a two-stage instruction tuning method that significantly boosts the performance of RAG. For effective retrieval, we introduce a dense retriever optimized for conversational QA, which yields results comparable to the alternative state-of-the-art query rewriting models, while substantially reducing deployment costs. We also present the ChatRAG Bench, which encompasses ten datasets covering comprehensive evaluations on RAG, table-related QA, arithmetic calculations, and scenarios involving unanswerable questions. Our ChatQA-1.0-70B (score: 54.14), built on Llama2, a weaker foundation model than GPT-4, can slightly outperform GPT-4-0613 (score: 53.90) and GPT-4-Turbo-2024-04-09 (score: 54.03) on the ChatRAG Bench, without relying on any synthetic data from OpenAI GPT models. Notably, the Llama3-ChatQA-1.5-70B model surpasses the accuracy of GPT-4-Turbo-2024-04-09, achieving a 4.4% improvement. To advance research in this field, we open-sourced the model weights, instruction tuning data, ChatRAG Bench, and retriever for the community: https://chatqa-project.github.io/.

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