Would you like to see your presentation here, made available to a global audience of researchers?
Add your own presentation or have us affordably record your next conference.
We introduce a novel Question Answering (QA) architecture that enhances the selection of answers by retrieving targeted supporting evidence. Unlike traditional systems that retrieve documents or passages relevant solely to a query q, our approach retrieves content relevant to the combination (q,a), focusing explicitly on the supporting relationship between the query and the answer a. By prioritizing this relational context, our method identifies paragraphs that directly substantiate the correctness of a for q, achieving higher accuracy compared to standard retrieval systems. Furthermore, we demonstrate that our neural retrieval approach efficiently scales to retrieve answer supports from hundreds of millions of paragraphs, setting a new benchmark in QA performance.