Qualitative causal relationships compactly express the direction, dependency, temporal constraints, and monotonicity constraints of discrete or continuous interactions in the world. In everyday or academic language, we may express interactions between quantities (e.g., sleep decreases stress), between discrete events or entities (e.g., a protein inhibits another protein's transcription), or between intentional or functional factors (e.g., hospital patients pray to relieve their pain). Extracting and representing these diverse causal relations are critical for cognitive systems that operate in domains spanning from scientific discovery to social science. This paper presents a transformer-based NLP architecture that jointly extracts knowledge graphs including (1) variables or factors described in language, (2) qualitative causal relationships over these variables, (3) qualifiers and magnitudes that constrain these causal relationships, and (4) word senses to localize each extracted node within a large ontology. We do not claim that our transformer-based architecture is itself a cognitive system; however, we provide evidence of its accurate knowledge graph extraction in real-world domains and the practicality of its resulting knowledge graphs for cognitive systems that perform graph-based reasoning. We demonstrate this approach and include promising results in two use cases, processing textual inputs from academic publications, news articles, and social media.
翻译:在日常语言或学术语言中,我们可以表达数量(例如睡眠下降压力)、离散事件或实体(例如蛋白质抑制另一个蛋白质转录)之间,或有意或功能因素(例如医院病人祈祷减轻痛苦)之间的相互作用。摘取和代表这些不同的因果关系对于从科学发现到社会科学等领域运作的认知系统至关重要。本文展示了一个基于变压器的NLP结构,共同提取知识图表,包括:(1)语言描述的变量或因素,(2)这些变量的定性因果关系,(3)制约这些因果关系的定性因果关系,(4)文字感将每个节点在大型肿瘤中本地化。我们并不声称我们的变压器结构本身就是一个认知系统;然而,我们提供了在现实世界领域准确提取知识图表的证据,以及由此得出的两个知识图表的实用性,用于进行图表处理的认知系统、以图表为基础的文章以及社会推理。