论文标题
用于低资源医学对话生成的图形发展元学习
Graph-Evolving Meta-Learning for Low-Resource Medical Dialogue Generation
论文作者
论文摘要
结构良好的医学知识的人类医生只能通过与患者的几次对话来诊断疾病。相比之下,现有的知识对话系统通常需要大量的对话实例来学习,因为它们无法捕获不同疾病之间的相关性,而忽略了其中分享的诊断经验。为了解决这个问题,我们提出了一个更自然,更实用的范式,即低资源的医学对话,可以将诊断经验从源疾病转移到具有少数数据以适应的目标。它在常识性知识图上大写,以表征先前的疾病关系。此外,我们开发了一个发展图形学习的元学习(GEML)框架,该框架学会进化新疾病中的疾病 - 症状相关性,从而有效地减轻了大量对话的需求。更重要的是,通过动态发展的疾病症状图,Geml还很好地解决了实际挑战,即每种疾病的疾病 - 症状相关性可能会随着更多诊断病例而变化或进化。 CMDD数据集和我们新收集的Chunyu数据集的广泛实验结果证明了我们的方法优于最先进的方法。此外,我们的宝石可以以在线方式生成丰富的对话敏感知识图,这可以使基于知识图的其他任务受益。
Human doctors with well-structured medical knowledge can diagnose a disease merely via a few conversations with patients about symptoms. In contrast, existing knowledge-grounded dialogue systems often require a large number of dialogue instances to learn as they fail to capture the correlations between different diseases and neglect the diagnostic experience shared among them. To address this issue, we propose a more natural and practical paradigm, i.e., low-resource medical dialogue generation, which can transfer the diagnostic experience from source diseases to target ones with a handful of data for adaptation. It is capitalized on a commonsense knowledge graph to characterize the prior disease-symptom relations. Besides, we develop a Graph-Evolving Meta-Learning (GEML) framework that learns to evolve the commonsense graph for reasoning disease-symptom correlations in a new disease, which effectively alleviates the needs of a large number of dialogues. More importantly, by dynamically evolving disease-symptom graphs, GEML also well addresses the real-world challenges that the disease-symptom correlations of each disease may vary or evolve along with more diagnostic cases. Extensive experiment results on the CMDD dataset and our newly-collected Chunyu dataset testify the superiority of our approach over state-of-the-art approaches. Besides, our GEML can generate an enriched dialogue-sensitive knowledge graph in an online manner, which could benefit other tasks grounded on knowledge graph.