Extracting spatial relations from texts is a fundamental task for natural language understanding and previous studies only regard it as a classification task, ignoring those spatial relations with null roles due to their poor information. To address the above issue, we first view spatial relation extraction as a generation task and propose a novel hybrid model HMCGR for this task. HMCGR contains a generation and a classification model, while the former can generate those null-role relations and the latter can extract those non-null-role relations to complement each other. Moreover, a reflexivity evaluation mechanism is applied to further improve the accuracy based on the reflexivity principle of spatial relation. Experimental results on SpaceEval show that HMCGR outperforms the SOTA baselines significantly.
翻译:从文本中提取空间关系是自然语言理解的一项基本任务,以往的研究仅将空间关系视为一项分类任务,忽视这些空间关系,因其信息差而无任何作用。为了解决上述问题,我们首先将空间关系提取视为一代人的任务,并为这项任务提出一个新的混合型HMCGR模型。HMCGR包含一代人和一种分类模式,而前者可以产生这些无效作用关系,后者可以提取这些非中值关系,以相互补充。此外,还运用反射性评价机制,进一步提高基于空间关系反射原则的准确性。空间地球实验室的实验结果表明,HMCGR明显超越了SOTA基线。