Question Answering System
Question answering (QA) systems aim to provide accurate and relevant answers to natural language questions, leveraging advancements in natural language processing (NLP). Current research emphasizes improving accuracy and robustness, particularly by combining large language models (LLMs) with knowledge graphs (KGs) to mitigate issues like hallucinations and improve retrieval of relevant information using techniques like Retrieval Augmented Generation (RAG). This field is significant for enhancing information access across diverse domains, from scholarly research and customer service to specialized areas like biomedicine, and for developing more human-like interactions with digital systems.
Papers
Releasing the CRaQAn (Coreference Resolution in Question-Answering): An open-source dataset and dataset creation methodology using instruction-following models
Rob Grzywinski, Joshua D'Arcy, Rob Naidoff, Ashish Shukla, Alex Browne, Ren Gibbons, Brinnae Bent
A Comparative and Experimental Study on Automatic Question Answering Systems and its Robustness against Word Jumbling
Shashidhar Reddy Javaji, Haoran Hu, Sai Sameer Vennam, Vijaya Gajanan Buddhavarapu