Ivan Sidorov


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2024

pdf bib
Efficient Answer Retrieval System (EARS): Combining Local DB Search and Web Search for Generative QA
Nikita Krayko | Ivan Sidorov | Fedor Laputin | Daria Galimzianova | Vasily Konovalov
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing: Industry Track

In this work, we propose an efficient answer retrieval system **EARS**: a production-ready, factual question answering (QA) system that combines local knowledge base search with generative, context-based QA. To assess the quality of the generated content, we devise comprehensive metrics for both manual and automatic evaluation of the answers to questions. A distinctive feature of our system is the Ranker component, which ranks answer candidates based on their relevance. This feature enhances the effectiveness of local knowledge base retrieval by 23%. Another crucial aspect of our system is the LLM, which utilizes contextual information from a web search API to generate responses. This results in substantial 92.8% boost in the usefulness of voice-based responses. **EARS** is language-agnostic and can be applied to any data domain.