RPDR: A Round-trip Prediction-Based Data Augmentation Framework for Long-Tail Question Answering
AI 摘要
RPDR通过回环预测选择易学数据,增强检索器在长尾问答中的表现。
主要贡献
- 提出RPDR框架,增强长尾问答检索能力
- 使用回环预测选择高质量训练数据
- 通过实验验证RPDR在PopQA和EntityQuestion数据集上的有效性
方法论
通过合成数据、回环预测选择易学样本,并用这些样本训练检索器。
原文摘要
Long-tail question answering presents significant challenges for large language models (LLMs) due to their limited ability to acquire and accurately recall less common knowledge. Retrieval-augmented generation (RAG) systems have shown great promise in mitigating this limitation by integrating external retrieval mechanisms. However, dense retrieval models often face the same difficulties when generalizing to rare or niche knowledge. In this study, we introduce RPDR, a novel data augmentation framework that selects high-quality easy-to-learn training data, to enhance dense retrievers. Our approach is built around three core components: synthetic data generation, data selection with Round-Trip prediction to identify easy-to-learn instances, and retriever training with these instances. We evaluate RPDR on two long-tail retrieval benchmarks, PopQA and EntityQuestion, demonstrating substantial improvements over existing retrievers like BM25 and Contriver, especially on extremely long-tail categories. We identify the strengths and limitations of RPDR through detailed human analysis and propose a dynamic routing mechanism to dynamically route queries to specialized retrieval modules to further improve retrieval performance.