Natural language understanding's relation extraction makes innovative and encouraging novel business concepts possible and facilitates new digitilized decision-making processes. Current approaches allow the extraction of relations with a fixed number of entities as attributes. Extracting relations with an arbitrary amount of attributes requires complex systems and costly relation-trigger annotations to assist these systems. We introduce multi-attribute relation extraction (MARE) as an assumption-less problem formulation with two approaches, facilitating an explicit mapping from business use cases to the data annotations. Avoiding elaborated annotation constraints simplifies the application of relation extraction approaches. The evaluation compares our models to current state-of-the-art event extraction and binary relation extraction methods. Our approaches show improvement compared to these on the extraction of general multi-attribute relations.
翻译:自然语言理解的关系提取使创新和鼓励新的商业概念成为可能,并有利于新的数字化决策程序。目前的做法允许与固定数目的实体建立关系,作为属性。提取与任意性质的关系需要复杂的系统和昂贵的触发关系说明来协助这些系统。我们采用多种属性关系提取(MARE)作为无假设问题的表述,采用两种方法,便利从商业使用案例到数据说明的清晰映射。避免详细描述的限制简化了关系提取方法的应用。评估将我们的模式与目前最先进的事件提取和二元关系提取方法进行比较。我们的方法显示,与这些方法相比,在提取一般多属性关系方面有所改进。