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arxiv: 2208.06961 · v1 · pith:V5EL57OMnew · submitted 2022-08-15 · 💻 cs.CL

A Hybrid Model of Classification and Generation for Spatial Relation Extraction

classification 💻 cs.CL
keywords spatialrelationstaskclassificationgenerationhmcgrmodelrelation
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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.

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