Yes No Question
Research on question answering (QA) focuses on enabling computer systems to accurately and comprehensively respond to diverse question types, moving beyond simple keyword matching to nuanced understanding of context and intent. Current efforts concentrate on improving the robustness of large language models (LLMs) and retrieval-augmented generation (RAG) systems, particularly addressing challenges like ambiguity, hallucination, and the handling of complex, multi-hop reasoning across various data sources (text, tables, knowledge graphs, and even audio). This work is significant for advancing natural language processing and holds substantial implications for applications ranging from improved search engines and chatbots to automated report generation in specialized domains like healthcare and finance.
Papers
OpenCQA: Open-ended Question Answering with Charts
Shankar Kantharaj, Xuan Long Do, Rixie Tiffany Ko Leong, Jia Qing Tan, Enamul Hoque, Shafiq Joty
TwiRGCN: Temporally Weighted Graph Convolution for Question Answering over Temporal Knowledge Graphs
Aditya Sharma, Apoorv Saxena, Chitrank Gupta, Seyed Mehran Kazemi, Partha Talukdar, Soumen Chakrabarti
Question Answering Over Biological Knowledge Graph via Amazon Alexa
Md. Rezaul Karim, Hussain Ali, Prinon Das, Mohamed Abdelwaheb, Stefan Decker