Deep Learning Approaches for Improving Question Answering Systems in Hepatocellular Carcinoma Research (2402.16038v1)
Abstract: In recent years, advancements in NLP have been fueled by deep learning techniques, particularly through the utilization of powerful computing resources like GPUs and TPUs. Models such as BERT and GPT-3, trained on vast amounts of data, have revolutionized language understanding and generation. These pre-trained models serve as robust bases for various tasks including semantic understanding, intelligent writing, and reasoning, paving the way for a more generalized form of artificial intelligence. NLP, as a vital application of AI, aims to bridge the gap between humans and computers through natural language interaction. This paper delves into the current landscape and future prospects of large-scale model-based NLP, focusing on the question-answering systems within this domain. Practical cases and developments in artificial intelligence-driven question-answering systems are analyzed to foster further exploration and research in the realm of large-scale NLP.
- Shuning Huo (7 papers)
- Yafei Xiang (7 papers)
- Hanyi Yu (7 papers)
- Mengran Zhu (11 papers)
- Yulu Gong (21 papers)