Domain Knowledge
Domain knowledge integration into large language models (LLMs) is a crucial area of research aiming to enhance the accuracy, reliability, and explainability of LLMs for domain-specific tasks. Current efforts focus on incorporating domain knowledge through various methods, including knowledge graphs, ontologies, and retrieval-augmented generation (RAG), often employing architectures like mixture-of-experts models and neurosymbolic agents. This research is significant because it addresses the limitations of general-purpose LLMs in specialized fields, leading to improved performance in applications ranging from medical diagnosis to scientific discovery and financial analysis.
Papers
KaPQA: Knowledge-Augmented Product Question-Answering
Swetha Eppalapally, Daksh Dangi, Chaithra Bhat, Ankita Gupta, Ruiyi Zhang, Shubham Agarwal, Karishma Bagga, Seunghyun Yoon, Nedim Lipka, Ryan A. Rossi, Franck Dernoncourt
The Ontoverse: Democratising Access to Knowledge Graph-based Data Through a Cartographic Interface
Johannes Zimmermann, Dariusz Wiktorek, Thomas Meusburger, Miquel Monge-Dalmau, Antonio Fabregat, Alexander Jarasch, Günter Schmidt, Jorge S. Reis-Filho, T. Ian Simpson
CP-Prompt: Composition-Based Cross-modal Prompting for Domain-Incremental Continual Learning
Yu Feng, Zhen Tian, Yifan Zhu, Zongfu Han, Haoran Luo, Guangwei Zhang, Meina Song
Methodology of Adapting Large English Language Models for Specific Cultural Contexts
Wenjing Zhang, Siqi Xiao, Xuejiao Lei, Ning Wang, Huazheng Zhang, Meijuan An, Bikun Yang, Zhaoxiang Liu, Kai Wang, Shiguo Lian
Automated Clinical Data Extraction with Knowledge Conditioned LLMs
Diya Li, Asim Kadav, Aijing Gao, Rui Li, Richard Bourgon