Federated Retrieval Augmented Generation for Multi-Product Question Answering (2501.14998v1)
Abstract: Recent advancements in LLMs and Retrieval-Augmented Generation have boosted interest in domain-specific question-answering for enterprise products. However, AI Assistants often face challenges in multi-product QA settings, requiring accurate responses across diverse domains. Existing multi-domain RAG-QA approaches either query all domains indiscriminately, increasing computational costs and LLM hallucinations, or rely on rigid resource selection, which can limit search results. We introduce MKP-QA, a novel multi-product knowledge-augmented QA framework with probabilistic federated search across domains and relevant knowledge. This method enhances multi-domain search quality by aggregating query-domain and query-passage probabilistic relevance. To address the lack of suitable benchmarks for multi-product QAs, we also present new datasets focused on three Adobe products: Adobe Experience Platform, Target, and Customer Journey Analytics. Our experiments show that MKP-QA significantly boosts multi-product RAG-QA performance in terms of both retrieval accuracy and response quality.
- Parshin Shojaee (12 papers)
- Sai Sree Harsha (6 papers)
- Dan Luo (25 papers)
- Akash Maharaj (5 papers)
- Tong Yu (119 papers)
- Yunyao Li (43 papers)